

BEGIN:VCALENDAR
VERSION:2.0
PRODID:-//Computational Optimisation Group - ECPv6.15.11//NONSGML v1.0//EN
CALSCALE:GREGORIAN
METHOD:PUBLISH
X-WR-CALNAME:Computational Optimisation Group
X-ORIGINAL-URL:https://optimisation.doc.ic.ac.uk
X-WR-CALDESC:Events for Computational Optimisation Group
REFRESH-INTERVAL;VALUE=DURATION:PT1H
X-Robots-Tag:noindex
X-PUBLISHED-TTL:PT1H
BEGIN:VTIMEZONE
TZID:UTC
BEGIN:STANDARD
TZOFFSETFROM:+0000
TZOFFSETTO:+0000
TZNAME:UTC
DTSTART:20110101T000000
END:STANDARD
END:VTIMEZONE
BEGIN:VEVENT
DTSTART;TZID=UTC:20150113T140000
DTEND;TZID=UTC:20150113T140000
DTSTAMP:20260417T132718
CREATED:20170124T102138Z
LAST-MODIFIED:20170124T102138Z
UID:564-1421157600-1421157600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Markov Random Field Optimization in Medical Image Analysis
DESCRIPTION:Title: Markov Random Field Optimization in Medical Image AnalysisSpeaker: Dr. Ben GlockerAffiliation: Department of Computing – Imperial College LondonLocation: Room 140 HuxleyTime: 2:00pm \nAbstract. Markov Random Fields (MRFs) are widely used for modelling image analysis problems\, such as segmentation\, denoising\, and motion estimation. In this presentation\, I will provide a brief overview of different applications of MRFs and some of the commonly used energy models and optimization methods. In particular\, recent advances in higher-order MRF optimization seem a promising direction for modelling more complex and sophisticated energies. However\, computational performance could be a limiting factor when scaling those models to large image databases. A potential solution could be to employ efficient discrete-continuous optimization methods. \nAbout the speaker. Ben Glocker is a Lecturer in Medical Image Computing at the Department of Computing\, Imperial College London. Before joining Imperial in October 2013\, he has been working as a post-doctoral researcher in the Machine Learning & Perception Group at Microsoft Research Cambridge. He has been appointed as Researcher Fellow of Darwin College\, University of Cambridge\, from 2010-2012. Ben received his doctoral degree from the Technical University of Munich\, in 2011.  Ben is a member of the Biomedical Image Analysis group. His research focus is on advanced methods and tools for biomedical image computing and computer vision. In particular\, he is interested in semantic understanding and automatic analysis of images using machine learning techniques.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-markov-random-field-optimization-in-medical-image-analysis/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20141211T140000
DTEND;TZID=UTC:20141211T140000
DTSTAMP:20260417T132718
CREATED:20170124T102139Z
LAST-MODIFIED:20170124T102139Z
UID:565-1418306400-1418306400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Static and Dynamic Assortment Optimization
DESCRIPTION:Title: Static and Dynamic Assortment OptimizationSpeaker: Prof. Kalyan TalluriAffiliation: Imperial College London Business SchoolLocation: LT 311 Huxley BuildingTime: 2:00pm \nAbstract. Assortment Optimization is the problem of offering an optimal assortment from a ground set. Customers choose one of the offered products or decide not to purchase any. The dynamic version of this problem with finite inventories and time is a model for revenue management. Both problems are difficult when the customer population is heterogeneous (multiple segments). In this talk we present our research on  the computational approaches for static and dynamic optimization under the choice as well as a matching model. \nAbout the speaker. Kalyan Talluri is Professor of Operations Management at Imperial College London Business School\, London. Previously he was an ICREA Research Professor in the Department of Economics and Business at the Universitat Pompeu Fabra in Barcelona. He got his Masters from Purdue University and a Ph.D in Operations Research from MIT.  He has taught at the Kellogg School of Management\, Northwestern University\, Indian School of Business\, Tuck School of Management\, Dartmouth\, IESE and  INSEAD.    His research interests are in pricing of consumer goods and services and the operational implementation of pricing tactics. He has published in OR and Management journals and is the co-winner of the INFORMS Lanchester Prize for the year 2005. He is the co-author of the book “Theory and Practice of Revenue Management”.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-static-and-dynamic-assortment-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20141030T140000
DTEND;TZID=UTC:20141030T140000
DTSTAMP:20260417T132718
CREATED:20170124T102139Z
LAST-MODIFIED:20170124T102139Z
UID:566-1414677600-1414677600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Visual-Inertial Odometry (VIO) Using Nonlinear Optimization
DESCRIPTION:Title: Visual-Inertial Odometry (VIO) Using Nonlinear OptimizationSpeaker: Dr. Stefan LeuteneggerAffiliation: Dyson Robotics Lab – Imperial College LondonLocation: Room 217 Huxley BuildingTime: 2:00pm \nAbstract. Visual-inertial fusion for state estimation and mapping has recently drawn increased attention. The sensing modalities offer compelling complementary characteristics\, since inertial measurements provide strong short-term temporal correlations\, while visual correspondences in images form spatial (relative pose) correlations. Furthermore\, inertial MEMS sensors have become increasingly small\, cheap\, and accurate. Traditionally\, the visual-inertial odometry problem has been rather addressed with filtering formulations; in this seminar\, however\, an approach using nonlinear optimization is presented — inspired by recent work of the computer vision community solving large reconstruction problems using optimization. The full batch VIO problem becomes untractable quite quickly; mobile robotics\, however\, needs to comply with real-time constraints. To this end\, a framework using partial linearization of error terms along with marginalization (variable elimination) is suggested that allows for a bounded optimization window using the notion of keyframes without compromising the inherent sparsity of the problem. We will go through the necessary mathematical machinery and present a quantitative evaluation as well as qualitative results from on-board Unmanned Aerial Systems (UAS). \nAbout the speaker. Stefan Leutenegger has obtained his PhD from ETH Zurich (Autonomous Systems Lab\, ASL) in 2014\, where he has has worked on solar airplane design from concepts to realization and flight testing\, as well as related algorithms for navigation close to the terrain. His activities covered a broad range from structural\, electrical and software engineering to the development of highly efficient\, robust\, and accurate algorithms for multi-sensor state estimation and mapping.  As part of his PhD work\, Stefan spent three months at the robotics company Willow Garage in Menlo Park\, California\, in 2012 under the supervision of Dr. Kurt Konolige and Dr. Vincent Rabaud. Besides his involvement in engineering and science activities\, Stefan had the ASL-internal lead in the European FP7 Projects “ICARUS” and “SHERPA” since the proposal writing phase. He has furthermore been involved in BSc and MSc student project supervision as well as for teaching a part of ASL’s Master course on Unmanned Aerial Systems. In October 2014\, Stefan started as a lecturer of robotics at Imperial College London\, working in Andy Davison’s Dyson Robotics Laboratory.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-visual-inertial-odometry-vio-using-nonlinear-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20141017T150000
DTEND;TZID=UTC:20141017T150000
DTSTAMP:20260417T132718
CREATED:20170124T102139Z
LAST-MODIFIED:20170124T102139Z
UID:567-1413558000-1413558000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Bayesian Optimization for Learning Robot Control
DESCRIPTION:Title: Bayesian Optimization for Learning Robot ControlSpeaker: Dr. Marc DeisenrothAffiliation: Department of Computing – Imperial College LondonLocation: Room 217 Huxley BuildingTime: 3:00pm \nAbstract. Statistical machine learning has been a promising direction in control and robotics for more than a decade since data-driven learning allows us to reduce the amount of engineering knowledge that is otherwise required. In real systems\, such as robots\, many experiments can be impractical and time consuming.  I will discuss Bayesian optimization\, an approach to controller learning that is based on efficient global optimization of black-box (utility) functions\, in the context of robot learning. I will demonstrate that this kind of learning is (a) practical and (b) very fast\, i.e.\, it requires only a few experiments\, to learn good controller parameterizations for a bipedal robot. \nAbout the speaker. Marc is PI of the SML group and an Imperial College Junior Research Fellow (tenure-track) with interests in statistical machine learning\, robotics\, control\, time-series analysis\, and signal processing. Marc joined the Department of Computing as a Research Fellow in September 2013. From December 2011 to August 2013 he was a Senior Research Scientist & Group Leader (Learning for Control) at TU Darmstadt (Germany). Marc is still adjunct researcher at TU Darmstadt. From February 2010 to December 2011\, he was a full-time Research Associate at the University of Washington (Seattle). Marc completed his PhD at the Karlsruhe Institute for Technology (Germany) in 2009. He conducted his PhD research at the Max Planck Institute for Biological Cybernetics (2006–2007) and at the University of Cambridge (2007–2009).  Marc’s research interests center around methodologies from modern Bayesian machine learning and their application  autonomous control and robotic systems. Marc’s goal is to increase the level of autonomy in robotic and control systems by modeling and accounting for uncertainty in a principled way. Potential applications include intelligent prostheses\, autonomous robots\, and healthcare assistants.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-bayesian-optimization-for-learning-robot-control/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20140709T150000
DTEND;TZID=UTC:20140709T150000
DTSTAMP:20260417T132718
CREATED:20170124T102139Z
LAST-MODIFIED:20170124T102139Z
UID:568-1404918000-1404918000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: High-precision solutions for linear programs over the rational numbers
DESCRIPTION:Title: High-precision solutions for linear programs over the rational numbersSpeaker: Ambros GleixnerAffiliation: Zuse Institute BerlinLocation: CPSE seminar room (C615 Roderic Hill)Time: 3:00pm \nAbstract.  \nAbout the speaker.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-high-precision-solutions-for-linear-programs-over-the-rational-numbers/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20140703T140000
DTEND;TZID=UTC:20140703T140000
DTSTAMP:20260417T132718
CREATED:20170124T102139Z
LAST-MODIFIED:20170124T102139Z
UID:569-1404396000-1404396000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Medium-term planning for thermal electricity production
DESCRIPTION:Title: Medium-term planning for thermal electricity productionSpeaker: Dr. Florentina ParaschivAffiliation: Institute for Operations Research and Computational Finance – University of St. GallenLocation: Room 218 Huxley BuildingTime: 2:00pm \nAbstract. In the present paper\, we present a mid-term planning model for thermal power generation which is based on multistage stochastic optimization and involves stochastic electricity spot prices\, a mixture of fuels with stochastic prices\, the effect of CO2 emission prices and various types of further operating costs. Going from data to decisions\, the first goal was to estimate simulation models for various commodity prices. We apply Geometric Brownian motions with jumps to model gas\, coal\, oil and emission allowance spot prices. Electricity spot prices are modeled by a regime switching approach which takes into account seasonal effects and spikes. Given the estimated models\, we simulate scenario paths and then use a multiperiod generalization of the Wasserstein distance for constructing the stochastic trees used in the optimization model. Finally\, we solve a 1-year planning problem for a fictitious configuration of thermal units\, producing against the markets. We use the implemented model to demonstrate the effect of CO2 prices on cumulated emissions and to apply the indifference pricing principle to simple electricity delivery contracts. \nAbout the speaker. Dr. Florentina Paraschiv is an Assistant Professor at the University of St. Gallen and she works inside the Institute for Operations Research and Computational Finance ior/cf-HSG. Her interest fields include: econometrics of electricity\, oil\, and gas markets\, quantification of risk in the electricity business\, optimization of power production\, renewable energy.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-medium-term-planning-for-thermal-electricity-production/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20140321T140000
DTEND;TZID=UTC:20140321T140000
DTSTAMP:20260417T132718
CREATED:20170124T102140Z
LAST-MODIFIED:20170124T102140Z
UID:570-1395410400-1395410400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Multi-stage Decision Optimization under Uncertainty
DESCRIPTION:Title: Multi-stage Decision Optimization under Uncertainty Speaker: Dr. Ronald HochreiterAffiliation: WU Vienna University of Economics and BusinessLocation: Room 218 Huxley BuildingTime: 2:00pm \nAbstract. In this talk we will review and discuss various aspects of multi-stage decision optimization problems under uncertainty – from problem formulation to modeling language support as well as the numerical solution of optimization problems. A stylized example is used to provide a complete walk-through using open-source software. In this presentation\, the numerical solution is based on techniques from the field of multi-stage stochastic programming. A crucial issue is the proposed simplification of current modeling language approaches to annotate multi-stage optimization programs in order to e.g. allow for creating multi-stage optimization model libraries\, which are independent of the underlying solution method. Selected multi-stage models from the area of Finance and Energy will be presented.  \nAbout the speaker. Ronald Hochreiter is Docent at the Department of Finance\, Accounting and Statistics at the WU Vienna University of Economics and Business. He loves optimization under uncertainty and enjoys to think about how to simplify the modeling process of complex decision problems as well as how to implement optimization modeling tools for specific application areas. Lately\, he also likes to conduct classical Business Analytics tasks for data-related problems from areas as diverse as Finance\, Public Policy\, and Health Care.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-multi-stage-decision-optimization-under-uncertainty/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20140128T140000
DTEND;TZID=UTC:20140128T140000
DTSTAMP:20260417T132718
CREATED:20170124T102140Z
LAST-MODIFIED:20170124T102140Z
UID:571-1390917600-1390917600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Revolutionizing Airline Planning & Scheduling with the Invention of Unified Optimization
DESCRIPTION:Title: Revolutionizing Airline Planning & Scheduling with the Invention of Unified OptimizationSpeaker: Dr. Nikolaos PapadakosAffiliation: Decisal LtdLocation: Room 345 Huxley BuildingTime: 2:00pm \nAbstract. Airline planning and scheduling are complex mixed integer problems. To reduce complexity each of them has traditionally been split into stages. For example\, scheduling is split into fleet assignment\, aircraft scheduling\, and crew scheduling\, which are solved sequentially one after the other. These stages are\, however\, interdependent and airlines have to deal with under-optimal results and constraint violations. Decisal is the company that invented algorithms for Unified Optimization of these stages\, greatly improving profit optimization and constraint satisfaction. The methodology for Unified Optimization includes several advancements of Benders Decomposition. Finally\, in some cases\, both the Benders master problem and the Benders subproblem are made of improved column generation algorithms. \nAbout the speaker. Dr Nikos (Nikolaos) Papadakos is the research and development director of Decisal. Prior to that he worked as a research associate at Imperial College London where he also received a PhD in operations research and an MSc in advanced computing. He also holds a BSc in mathematics from the University of Athens. Finally\, his work experience includes the Bank of Attica and Biomex Epe\, in software development\, sales\, and customer support.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-revolutionizing-airline-planning-scheduling-with-the-invention-of-unified-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20140115T151500
DTEND;TZID=UTC:20140115T151500
DTSTAMP:20260417T132718
CREATED:20170124T102140Z
LAST-MODIFIED:20170124T102140Z
UID:572-1389798900-1389798900@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Numerical Aggregation of Trust Evidence: Its Analysis and Optimisation
DESCRIPTION:Title: Numerical Aggregation of Trust Evidence: Its Analysis and OptimisationSpeaker: Prof. Michael Huth and Dr. Jim Huan-Pu KuoAffiliation: Department of Computing – Imperial College LondonLocation: Room 217 Huxley BuildingTime: 3:15pm \nAbstract. We have designed a language in which modellers can specify trust and distrust signals that\, in their presence\, generate a numerical score\, and where such scores can be combined with aggregation operators to express risk postures for trust-mediated interactions in IT systems. Signals may stem from heterogenous sources such as geographical information\, reputation\, and threat levels. Aggregated scores then inform decisions by generating conditions that compare scores to threshold values of trustworthiness. We developed a generic approach to analysing such conditions by automatically converting them into code for the Satisfiability Modulo Theory solver Z3 from Microsoft Research. This allows us to automatically analyse\, e.g.\, whether a condition is sensitive to the increase of a trustworthiness threshold by a specified amount. We would now like to understand better whether such analysis questions can be expressed in known models as used in optimisation. For example\, let a condition say that the aggregated trust score has to be above 0.5. Solvers such as Z3 seem to be unable to compute the largest interval containing 0.5 such that all values of that interval could be chosen as trustworthiness threshold without changing the behaviour of the condition. On the other hand\, Z3 is perfect for reflecting logical dependencies or inconsistencies between (dis)trust signals that occur in such conditions and are quantifier-free formulas of first-order logic. A prototype implementation of the tool is available at http://delight.doc.ic.ac.uk:55555 \nAbout the speaker.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-numerical-aggregation-of-trust-evidence-its-analysis-and-optimisation/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130926T140000
DTEND;TZID=UTC:20130926T140000
DTSTAMP:20260417T132718
CREATED:20170124T102140Z
LAST-MODIFIED:20170124T102140Z
UID:573-1380204000-1380204000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Risk measures and time consistency
DESCRIPTION:Title: Risk measures and time consistencySpeaker: Prof. Alexander ShapiroAffiliation: School of Industrial and Systems Engineering – Georgia Institute of TechnologyLocation: Room 145 Huxley BuildingTime: 2:00pm \nAbstract. In this talk we discuss basic theory of risk measures and risk averse optimization. Starting with the pioneering paper by Artzner et al\, “Coherent measures of risk” (1999)\, this theory went through rapid development in recent years. We pay a special attention to a multistage setting\, and\, in particular\, discuss the involved concepts of time consistency. \nAbout the speaker. Alexander Shapiro is a Professor in the School of Industrial and Systems Engineering at Georgia Institute of Technology. He has published more than 120 research articles in peer reviewed journals and is a coauthor of several books (see below).  His research is widely cited and he was listed as an ISI Highly Cited Researcher in 2004 (ISI = Institute for Scientic Information)\, links to his research ID: http://www2.isye.gatech.edu/~ashapiro/research.html. He is on the editorial board of several professional journals\, such as Mathematics of Operations Research\, ESAIM: Control\, Optimization and Calculus of Variations\, Computational Management Science. He was an area editor (Optimization) of Operations Research\, currently he is the Editor-in Chief of the Mathematical Programming journal. He gave numerous invited keynote and plenary talks\, including invited section talk (section Control Theory & Optimization) at the International Congress of Mathematicians 2010\, Hyderabad\, India http://www.icm2010.in/scientific-program/invited-speakers.  Published Books:  1. Rubinstein\, R.Y. and Shapiro\, A.\, Discrete Event Systems: Sensitivity Analysis and Stochastic Optimization by the Score Function Method\, John Wiley and Sons\, New York\, 1993.  2. Bonnans\, J. F. and Shapiro\, A.\, Perturbation Analysis of Optimization Problems\, Springer\, New York\, 2000.  3. Handbook on Stochastic Programming\, edited by: A. Ruszczynski and A. Shapiro\, North-Holland Publishing Company\, Amsterdam\, 2003.  4. Shapiro\, A.\, Dentcheva\, D. and Ruszczynski\, A.\, Lectures on Stochastic Programming: Modeling and Theory \, SIAM\, Philadelphia\, 2009.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-risk-measures-and-time-consistency/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130822T110000
DTEND;TZID=UTC:20130822T110000
DTSTAMP:20260417T132718
CREATED:20170124T102140Z
LAST-MODIFIED:20170124T102140Z
UID:574-1377169200-1377169200@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Added value of scenario tree based stochastic optimization in long and medium term planning of hydro power systems
DESCRIPTION:Title: Added value of scenario tree based stochastic optimization in long and medium term planning of hydro power systemsSpeaker: Dr. Georg OstermaierAffiliation: Location: Room 217 Huxley BuildingTime: 11:00am \nAbstract. The changes in the dynamics of power prices in Germany within the last few years have implied significant decreases of revenues of pumped storage hydro systems. The earnings from daily peak/offpeak price spreads have declined whereby at the same time long term management of large reservoirs has become even more difficult due hardly predictable power price and inflow evolutions. Stochastic Optimization has been applied for hydro system management for a long time already\, but only recently operators expect additional benefits given the changed and even more uncertain power market situation. Besides stochastic dual dynamic programming\, scenario tree based methods are meanwhile applied\, which so far have hardly been used for complex hydro systems due to the curse of dimensionality in stochastic programming. We apply efficient discretization methods for the generation of multi-dimensional scenario trees of power prices and inflows\, based on moment matching and multinomial distributions. Furthermore\, by using increased hardware efficiency it is meanwhile possible to set up and solve scenario tree based stochastic optimization models for even complex pumped storage systems. Ex post analyses have shown that outperformance over deterministic optimization in the range of 1-5 percent is achievable. \nAbout the speaker. Georg Ostermaier is founder\, owner and managing director of Decision Trees GmbH\, a Munich based firm focussing on the practical application of mathematical and stochastic programming in the European Energy industry. Georg received his graduate degree in Electrical Engineering from the Technical University of Munich and his PhD in Operations Research from the University of St.Gallen\, Switerland. Since 2006 he and his team have been developing stochastic optimization software systems for thermal power generation portfolios\, hydro power generation systems\, gas storage and gas contract valuation and gas procurment portfolio optimisation. Decision Trees GmbH has today a solid customer base in Germany\, Austria\, Switzerland\, Norway and the United Kingdom and has proven to contribute to enhanced profits for energy producers in practice through stochastic optimization.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-added-value-of-scenario-tree-based-stochastic-optimization-in-long-and-medium-term-planning-of-hydro-power-systems/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130812T140000
DTEND;TZID=UTC:20130812T140000
DTSTAMP:20260417T132718
CREATED:20170124T102141Z
LAST-MODIFIED:20170124T102141Z
UID:575-1376316000-1376316000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Managing with Incomplete Inventory Information
DESCRIPTION:Title: Managing with Incomplete Inventory Information Speaker: Prof. Suresh P. SethiAffiliation: Center for Intelligent Supply Networks – University of Texas at DallasLocation: Room 217-218 Huxley BuildingTime: 2:00pm \nAbstract. A critical assumption in the vast literature on inventory management has been that the current level of inventory is known to the decision maker. Some of the most celebrated results such as the optimality of base-stock policies have been obtained under this assumption. Yet it is often the case in practice that the decision makers have incomplete or partial information about their inventory levels. The reasons for this are many: Inventory records or cash register information differ from actual inventory because of a variety of factors including transaction errors\, theft\, spoilage\, misplacement\, unobserved lost demands\, and information delays. As a result\, what are usually observed are some events or surrogate measures\, called signals\, related to the inventory level. These relationships can provide the distribution of current inventory levels. Therefore\, the system state in the inventory control problems is not the current inventory level\, but rather its distribution given the observed signals. Thus\, the analysis for finding optimal production or ordering policies takes place generally in the space of probability distributions. The purpose of this talk is to review recent developments in the analysis of inventory management problems with incomplete information. \nAbout the speaker. Suresh P. Sethi is Eugene McDermott Professor of Operations Management and Director of the Center for Intelligent Supply Networks at The University of Texas at Dallas. He has written 7 books and published nearly 400 research papers in the fields of manufacturing and operations management\, finance and economics\, marketing\, and optimization theory. He teaches a course on optimal control theory/applications and organizes a seminar series on operations management topics. He initiated and developed the doctoral programs in operations management at both University of Texas at Dallas and University of Toronto. He serves on the editorial boards of several journals including Production and Operations Management and SIAM Journal on Control and Optimization. He was named a Fellow of The Royal Society of Canada in 1994. Two conferences were organized and two books edited in his honor in 2005-6. Other honors include: IEEE Fellow (2001)\, INFORMS Fellow (2003)\, AAAS Fellow (2003)\, POMS Fellow (2005)\, IITB Distinguished Alum (2008)\, SIAM Fellow (2009)\, POMS President (2012).
URL:https://optimisation.doc.ic.ac.uk/event/seminar-managing-with-incomplete-inventory-information/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130808T140000
DTEND;TZID=UTC:20130808T140000
DTSTAMP:20260417T132718
CREATED:20170124T102141Z
LAST-MODIFIED:20170124T102141Z
UID:576-1375970400-1375970400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Risk neutral and risk averse approaches to multistage stochastic programming with applications to hydrothermal operation planning problems
DESCRIPTION:Title: Risk neutral and risk averse approaches to multistage stochastic programming with applications to hydrothermal operation planning problemsSpeaker: Dr. Wajdi TekayaAffiliation: Decision Trees GmbHLocation: Room 217 Huxley BuildingTime: 2:00pm \nAbstract. This talk gives an overview of risk neutral and risk averse approaches to multistage stochastic programming with applications to hydrothermal operation planning problems. In the first part of this talk\, we discuss risk neutral and risk averse approaches using coherent risk measures to multistage (linear) stochastic programming problems based on the Stochastic Dual Dynamic Programming (SDDP) method. We give a general description of the algorithm and present computational studies related to planning of the Brazilian interconnected power system.In the second part of this talk\, we discuss multistage programming with the data process subject to uncertainty. We consider a situation where the data process can be naturally separated into two components\, one can be modeled as a random process\, with a specified probability distribution\, and the other one can be treated from a robust (worst-case) point of view. We formulate this in a time consistent way and derive the corresponding dynamic programming equations. In order to solve the obtained multistage problem we develop a variant of the (SDDP) method. We give a general description of the algorithm and present computational studies related to planning of the Brazilian interconnected power system. \nAbout the speaker. Wajdi Tekaya is currently an HPCfinance postdoctoral fellow at Cambridge Systems Associates. He obtained his B.S. in industrial engineering from Tunisia Polytechnic School\, M.S. in Operations Research from Paris IX University\, Georgia Institute of Technology and Ph.D. in Operations Research from Georgia Institute of technology. His research interests are in computational approaches to stochastic programming with applications in energy and finance.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-risk-neutral-and-risk-averse-approaches-to-multistage-stochastic-programming-with-applications-to-hydrothermal-operation-planning-problems/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130703T150000
DTEND;TZID=UTC:20130703T150000
DTSTAMP:20260417T132718
CREATED:20170124T102141Z
LAST-MODIFIED:20170124T102141Z
UID:577-1372863600-1372863600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Interdiction Games on Markovian PERT Networks
DESCRIPTION:Title: Interdiction Games on Markovian PERT NetworksSpeaker: Eli GutinAffiliation: School of Industrial and Systems Engineering – Georgia Institute of TechnologyLocation: Room 218 Huxley BuildingTime: 3:00pm \nAbstract. In a stochastic interdiction game a proliferator aims to minimize the expected duration of a nuclear weapons development project\, while an interdictor endeavors to maximize the project duration by delaying some of the project tasks. We formulate static and dynamic versions of the interdictor’s decision problem where the interdiction plan is either pre-committed or adapts to new information revealed over time\, respectively. The static model gives rise to a stochastic program\, while the dynamic model is formalized as a multiple optimal stopping problem in continuous time and with decision-d ependent information. Under a Markov assumption\, we prove that the static model reduces to a mixed-integer linear program\, while the dynamic model reduces to a finite Markov decision process in discrete time that can be solved via efficient value iteration. We then generalize the dynamic model to account for uncertainty in the outcomes of the interdiction actions. We also discuss a crashing game where the proliferator can use limited resources to expedite tasks so as to counterbalance the interdictor’s efforts. The resulting problem can be formulated as a robust Markov decision process. \nAbout the speaker. Eli Gutin completed his MEng in Computing at Imperial College in 2012. His prize-winning final year project on “Interdiction Games on Markovian PERT networks” was supervised by Daniel Kuhn & Wolfram Wiesemann. A year later\, it was submitted for publication and is the subject of today’s talk.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-interdiction-games-on-markovian-pert-networks/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130620T160000
DTEND;TZID=UTC:20130620T160000
DTSTAMP:20260417T132718
CREATED:20170124T102141Z
LAST-MODIFIED:20170124T102141Z
UID:578-1371744000-1371744000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Robust Data-Driven Approach in Decision Making Under Uncertainty
DESCRIPTION:Title: Robust Data-Driven Approach in Decision Making Under UncertaintySpeaker: Grani Adiwena HanasusantoAffiliation: Department of Computing – Imperial College LondonLocation: Room 301 William PenneyTime: 4:00pm \nAbstract. We investigate robust data-driven approach in stochastic optimization problems where partial knowledge on the exogenous uncertainties is available to the decision maker. In contrast to the traditional model-based approach\, a data-driven approach requires no assumptions on the underlying distribution of exogenous uncertainties. Estimation of conditional expectation is achieved using kernel regression scheme which evaluates the cost function solely at historical observations. If sparse historical observations are available\, however\, the estimation is inaccurate and the resulting decision performs poorly in out-of-sample tests. To alleviate this unfavourable outcome\, we ‘robustify’ the decision against estimation errors by utilizing techniques from robust optimization. We show that the arising min-max problem can be reformulated as a tractable conic program. We further extend the proposed approach to multi-period settings and introduce an approximate dynamic programming framework that retains the tractability of the formulation and that is amenable to efficient parallel implementation. The proposed approach is tested across several application domains and is shown to outperform various non-robust schemes in terms of standard statistical benchmarks. \nAbout the speaker. Grani Hanasusanto is a PhD student at the Department of Computing\, Imperial College London\, under the supervision of Dr. Daniel Kuhn. He obtained the BEng (Hons) degree in Electrical and Electronic Engineering from Nanyang Technological University\, Singapore\, and the MSc degree in Financial Engineering from National University of Singapore. His research interests are in numerical and computational methods and their applications.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-robust-data-driven-approach-in-decision-making-under-uncertainty/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130620T140000
DTEND;TZID=UTC:20130620T140000
DTSTAMP:20260417T132718
CREATED:20170124T102142Z
LAST-MODIFIED:20170124T102142Z
UID:579-1371736800-1371736800@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Parallel block coordinate descent methods for huge-scale partially separable problems
DESCRIPTION:Title: Parallel block coordinate descent methods for huge-scale partially separable problemsSpeaker: Martin TakacAffiliation: School of Mathematics –  University of EdinburghLocation: CPSE Seminar roomTime: 2:00pm \nAbstract. In this work we show that randomized block coordinate descent methods can be accelerated by parallelization when applied to the problem of minimizing the sum of a partially block separable smooth convex function and a simple block separable convex function. We give a generic algorithm and several variants thereof based on the way parallelization is performed. In all cases we prove iteration complexity results\, i.e.\, we give bounds on the number of iterations sufficient to approximately solve the problem with high probability. Our results generalize the intuitive observation that in the separable case the theoretical speedup caused by parallelization must be equal to the number of processors. We show that the speedup increases with the number of processors and with the degree of partial separability of the smooth component of the objective function. Our analysis also works in the mode when the number of blocks being updated at each iteration is random\, which allows for modelling situations with variable (busy or unreliable) number of processors. We conclude with some encouraging computational results applied to huge-scale LASSO and sparse SVM instances.  This is a joint work with Dr. Peter Richtarik\, University of Edinburgh. \nAbout the speaker.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-parallel-block-coordinate-descent-methods-for-huge-scale-partially-separable-problems/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130619T140000
DTEND;TZID=UTC:20130619T140000
DTSTAMP:20260417T132718
CREATED:20170124T102142Z
LAST-MODIFIED:20170124T102142Z
UID:580-1371650400-1371650400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Performance-based regularization in mean-CVaR portfolio optimization
DESCRIPTION:Title: Performance-based regularization in mean-CVaR portfolio optimizationSpeaker: Prof. Gah-Yi VahnAffiliation: Management Science and Operations – London Business SchoolLocation: Room 145 HuxleyTime: 2:00pm \nAbstract. Regularization is a technique widely used to improve the stability of solutions to statistical problems. We propose a new regularization concept\, performance-based regularization (PBR)\, for data-driven stochastic optimization. The goal is to improve upon Sample Average Approximation (SAA) in finite-sample performance while maintaining minimal assumptions about the data. We apply PBR to mean-CVaR portfolio optimization\, where we penalize portfolios with large variability in the constraint and objective estimations\, which effectively constrains the probabilities that the estimations deviate from the respective true values. This results in a combinatorial optimization problem\, but we prove its convex relaxation is tight. We show via simulations that PBR substantially improves upon SAA in finite-sample performance for three different population models of stock returns. We also prove that PBR is asymptotically optimal\, and further derive its first-order behavior by extending asymptotic analysis of M-estimators. This is joint work with Noureddine El Karoui (UC Berkeley Statistics) and Andrew EB Lim (NUS Business School) \nAbout the speaker. Gah-Yi Vahn is an Assistant Professor of Management Science and Operations at London Business School. She has a BSc (1st Class Hons. with Univ. Medal) from the University of Sydney (2007)\, an MA in Statistics (2011) and a PhD in Operations Research (2012) from the University of California\, Berkeley. Gah-Yi’s research interest is data-driven decision-making\, in particular optimization with complex\, high dimensional\, and/or highly uncertain data\, with applications to finance and operations management.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-performance-based-regularization-in-mean-cvar-portfolio-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130614T140000
DTEND;TZID=UTC:20130614T140000
DTSTAMP:20260417T132718
CREATED:20170124T102142Z
LAST-MODIFIED:20170124T102142Z
UID:581-1371218400-1371218400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Distributionally robust control of constrained stochastic systems
DESCRIPTION:Title: Distributionally robust control of constrained stochastic systemsSpeaker: Bart Van ParysAffiliation: Automatic Control Laboratory at Swiss Federal Institute of TechnologyLocation: Room 217-218 Huxley BuildingTime: 2:00pm \nAbstract. We investigate the control of constrained stochastic linear systems when faced with limited information regarding the disturbance process\, that is\, when only the first and second-order moments of the disturbance distribution are known.  We employ two types of soft constraints to prevent the state from falling outside a prescribed target domain: distributionally robust chance constraints require the state to remain within the target domain with a given high probability\, while distributionally robust conditional value-at-risk constraints impose an upper bound on the state’s expected distance to the target domain conditional on that distance being positive.  The attribute 'distributionally robust' reflects the requirement that the constraints must hold for all disturbance distributions sharing the known moments. We argue that the design of controllers for systems accommodating these types of constraints is both computationally tractable and practically meaningful for both finite and infinite horizon problems.  The proposed methods are illustrated in the context of a wind turbine blade control design case study where flexibility issues play an important role and for which the distributionally robust constraints make sensible design objectives. \nAbout the speaker. Bart holds a BA degree in electrical engineering\, and a MA degree in applied/engineering mathematics\, both from the University of Leuven. Since September 2011 he has been a PhD student in the Swiss Federal Institute of Technology (ETH Zürich) under the supervision of Prof. Manfred Morari and Dr. Paul Goulart.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-distributionally-robust-control-of-constrained-stochastic-systems/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130528T140000
DTEND;TZID=UTC:20130528T140000
DTSTAMP:20260417T132718
CREATED:20170124T102142Z
LAST-MODIFIED:20170124T102142Z
UID:582-1369749600-1369749600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: CVaR Approximations for Minimax and Robust Convex Optimization
DESCRIPTION:Title: CVaR Approximations for Minimax and Robust Convex OptimizationSpeaker: Prof. Huifu XuAffiliation: School of Engineering and Mathematical Sciences at City University of LondonLocation: Room 218 Huxley BuildingTime: 2:00pm \nAbstract. Conditional value at risk (CVaR) has been widely used as a risk measure in finance. In this work\, we propose to randomize decision variables of a deterministic parametric maximization problem and approximate the optimal (maximum) value by the CVaR of the randomized function. One of the main advantages of this approach is that computing CVaR is down to solving a one dimensional convex optimization problem even when the original problem is multi-dimensional and nonconvex. We apply the approximation scheme to a minimax (robust) optimization problem and a convex optimization problem with semi-infinite constraints indexed by uncertain parameters. In the latter application we use CVaR to approximate the semi-infinite constraint and then apply the Monte Carlo sampling method to discretize the CVaR approximated constraint. This approach is closely related to a popular randomization approach proposed by Calafiore and Campi where the continuum of uncertainty parameters is discretized through sampling. Error bounds for the optimal solutions of the approximate problems are derived under some moderate conditions and some numerical test results are reported. The proposed methods can be applied to distributional optimization where the distribution set is constructed through moments. \nAbout the speaker. Huifu Xu is a Professor of Operational Research in the School of Engineering and Mathematical Sciences at City University of London. Before joining City University\, he was a Senior Lecturer of  Operational Research in the School of Mathematics at the  University of Southampton. His expertise is in continuous optimization and operational research\, including  developing numerical methods and underlying theory for continuous optimization problems\, particularly those involving uncertain data and/or equilibrium constraints.  Over the past ten years\, he has been actively working on stochastic mathematical programs with equilibrium problems and is recently developing interest in robust approaches for stochastic optimization and equilibrium problems. Huifu has published about 60 papers most of which are in the international journals of  optimization and operational research.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-cvar-approximations-for-minimax-and-robust-convex-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130522T140000
DTEND;TZID=UTC:20130522T140000
DTSTAMP:20260417T132718
CREATED:20170124T102142Z
LAST-MODIFIED:20170124T102142Z
UID:583-1369231200-1369231200@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Hard-to-Solve Bimatrix Games
DESCRIPTION:Title: Hard-to-Solve Bimatrix GamesSpeaker: Prof. Bernhard von StengelAffiliation: Depatment of Mathematics – London School of Economics and Political ScienceLocation: CPSE seminar room (C615 Roderic Hill)Time: 2:00pm \nAbstract. A bimatrix game is a two-player game in strategic form\, a 	basic model in game theory. A Nash equilibrium is a pair of 	(possibly randomized) strategies\, one for each player\, so 	that no player can do better by unilaterally changing his or 	her strategy. In this talk\, which will introduce the main 	concepts and geometric tools\, we show that the commonly used 	Lemke-Howson algorithm for finding one equilibrium of a 	bimatrix game is exponential. The algorithm is a pivoting 	method similar to the simplex algorithm for linear 	programming. We present a class of square bimatrix games for 	which the shortest Lemke-Howson path grows exponentially in 	the dimension d of the game. We construct the games using 	pairs of dual cyclic polytopes with 2d facets in d-space. 	The paths are recursively composed so that their lengths 	grow like Fibonacci numbers.  We also mention subsequent 	results and open problems in the area. \nAbout the speaker. Diploma in Mathematics from Aachen\, MSc in Computer Sciences 	at Austin/Texas (student of Edsger W. Dijkstra)\, PhD in 	Passau\, Habilitation in Munich\, Postdoc at Berkeley\, Tilburg 	and ETH Zurich (with a Heisenberg grant)\, at LSE Mathematics 	since 1998. Interested in algorithmic game theory longer 	than the research area has that name.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-hard-to-solve-bimatrix-games/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130516T140000
DTEND;TZID=UTC:20130516T140000
DTSTAMP:20260417T132718
CREATED:20170124T102143Z
LAST-MODIFIED:20170124T102143Z
UID:584-1368712800-1368712800@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Alternating Maximization: Unifying Framework for 8 Sparse PCA Formulations
DESCRIPTION:Title: Alternating Maximization: Unifying Framework for 8 Sparse PCA FormulationsSpeaker: Dr. Selin AhipasaogluAffiliation: Singapore University of Technology and DesignLocation: CPSE seminar room (C615 Roderic Hill)Time: 2:00pm \nAbstract. Given a multivariate data set\, sparse principal component analysis (SPCA) aims to extract several linear combinations of the variables that together explain the variance in the data as much as possible\, while controlling the number of nonzero loadings in these combinations. In this paper we consider 8 different optimization formulations for computing a single sparse  loading vector; these are obtained by combining the following factors: we employ two norms for measuring variance (L2\, L1) and two sparsity-inducing norms (L0\, L1)\, which are used in two different ways (constraint\, penalty). Three of our formulations\, notably the one with L0 constraint and L1 variance\, have not been considered in the literature. We give a unifying reformulation which we propose to solve via a natural alternating maximization (AM) method. Besides this\, we provide a package which contains implementations for various parallel architectures and briefly discuss how these algorithms can be used to achieve better object recognition in challenging data sets. \nAbout the speaker. Selin Damla Ahipasaoglu is an Assistant Professor at the Singapore University of Technology and Design. She received her PhD in 2009 from Cornell University and specialises in developing algorithms  for large scale optimization problems\, in particular first-order methods for convex problems and applications in image processing. She held research positions at Princeton University and London School of Economics before joining SUTD. She is also a very keen teacher and an advocate of active and innovative classroom teaching for undergraduates.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-alternating-maximization-unifying-framework-for-8-sparse-pca-formulations/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130417T170000
DTEND;TZID=UTC:20130417T170000
DTSTAMP:20260417T132718
CREATED:20170124T102143Z
LAST-MODIFIED:20170124T102143Z
UID:585-1366218000-1366218000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: On the Relation between Forecast Precision and Trading Profitability of Financial Analysts
DESCRIPTION:Title: On the Relation between Forecast Precision and Trading Profitability of Financial AnalystsSpeaker: Prof. Alex WeissensteinerAffiliation: DTU Management EngineeringLocation: Room 217 Huxley BuildingTime: 5:00pm \nAbstract. We analyze the relation between earning forecast accuracy and expected profitability of financial analysts. Modeling forecast errors with a multivariate Gaussian distribution\, a complete characterization of the payoff of each analyst is provided. In particular\, closed-form expressions for the probability density function\, for the expectation\, and\, more generally\, for moments of all orders are obtained. Our analysis shows that the relationship between forecast precision and trading profitability need not to be monotonic\, and that\, for any analyst\, the impact on his expected payoff of the correlation between his forecasts and those of the other market participants depends on the accuracy of his signals. Furthermore\, our model accommodates a unique full-communication equilibrium in the sense of Radner (1979). \nAbout the speaker. Alex finished his PhD in 2003 and received his “Habilitation” from the Leopold-Franzens University Innsbruck (Austria) in 2010\, where he worked as Assistant Professor. From 2010-2013 he worked atthe Free University of Bozen-Bolzano(Italy)\, School of Economics and Management.Hisfields of research are in the intersection of finance\, optimization and mathematical modeling. Themain topics covered by his scientific publications are: asset allocation\, asset-liability management\, stochastic (linear-) programming(SLP)\, and neural networks. Since February 2013 he is working as Professor for Financial Engineering at the Technical University of Denmark (DTU).
URL:https://optimisation.doc.ic.ac.uk/event/seminar-on-the-relation-between-forecast-precision-and-trading-profitability-of-financial-analysts/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130411T140000
DTEND;TZID=UTC:20130411T140000
DTSTAMP:20260417T132718
CREATED:20170124T102143Z
LAST-MODIFIED:20170124T102143Z
UID:586-1365688800-1365688800@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Practical Portfolio Optimization
DESCRIPTION:Title: Practical Portfolio OptimizationSpeaker: Prof. Victor DeMiguelAffiliation: London Business SchoolLocation: CPSE seminar room (C615 Roderic Hill)Time: 2:00pm \nAbstract. The Nobel laureate Harry Markowitz showed that an investor who cares only about the mean and variance of portfolio returns should hold a portfolio on the efficient frontier. To implement these portfolios in practice\, one needs to estimate the means and covariances of asset returns. Traditionally\, the sample means and covariances have been used for this purpose. But due to estimation error\, the portfolios that rely on the sample estimates typically perform poorly out of sample. In this talk\, we will first illustrate the difficulties inherent in estimating mean-variance portfolios\, and then we will discuss several approaches that can be used to overcome these difficulties in practice. \nAbout the speaker. Victor DeMiguel is Professor of Management Science and Operations at London Business School. He holds a PhD in Management Science and Engineering from Stanford University\, and an MS in Industrial Engineering from Universidad Politecnica de Madrid. Victor's research  focuses on the design\, analysis\, and application of optimization models for managerial decision making. Applications include financial portfolio selection and competition modelling. His papers have been published in journals such as Management Science\, Operations Research\, and Mathematics of Operations Research. One of his most popular papers is “Optimal Versus Naive Diversification: How Inefficient is the 1/N Portfolio Strategy”\, which received the Best Paper Award from the Institute for Quantitative Investment Research and was published in The Review of Financial Studies. Victor teaches the MBA courses Decision and Risk Analysis and Financial Modelling with Spreadsheets\, and the Strategic Decision Making module for Executive Education. He is the recipient of the Junior Faculty Teaching Award and the Outstanding Core Course Teaching Award at London Business School. More information about Victor DeMiguel can be found here:
URL:https://optimisation.doc.ic.ac.uk/event/seminar-practical-portfolio-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130306T150000
DTEND;TZID=UTC:20130306T150000
DTSTAMP:20260417T132718
CREATED:20170124T102144Z
LAST-MODIFIED:20170124T102144Z
UID:587-1362582000-1362582000@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: OR and Optimization under Uncertainty using R
DESCRIPTION:Title: OR and Optimization under Uncertainty using RSpeaker: Dr. Ronald Hochreiter Affiliation: WU Vienna University of Economics and Business Location: Room 218 Huxley BuildingTime: 3:00pm \nAbstract. The statistical computing package R is well-known in the Statistics community as well as in the Data Science and Business Analytics community\, however Operations Researchers usually use MatLab and Python to solve their problems or are even using C++/Java directly to interfere with optimization solvers. In this talk\, we will outline the convenience of using R for dealing with OR tasks by solving Optimization under Uncertainty problems\, especially problems arising in the area of Stochastic Programming applied to Finance. \nAbout the speaker. Ronald Hochreiter is Assistant Professor at the WU Vienna University of Economics and Business and Visiting Professor at the University of Bergamo. His research interests includes Operations Research (Optimization under Uncertainty) as well as Data Science and Business Analytics. Furthermore he is consultant for various companies in Austria.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-or-and-optimization-under-uncertainty-using-r/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130220T150000
DTEND;TZID=UTC:20130220T150000
DTSTAMP:20260417T132718
CREATED:20170124T102144Z
LAST-MODIFIED:20170124T102144Z
UID:588-1361372400-1361372400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar:  Applications and Beyond
DESCRIPTION:Title:  Applications and BeyondSpeaker: Amit M. ManthanwarAffiliation: On Industrial Process Automation and Control TheoryLocation: CPSE seminar room (C615 Roderic Hill)Time: 3:00pm \nAbstract. At the end of second millennia advent of the technology of Model Predictive Control (MPC) has revolutionized the way process industry is controlled and operated. This technological breakthrough for industrial process automation asks the much sought-after control objective question\, how to attain desired profit margins while satisfying all the conditions of feasibility\, stability\, operability\, performance and safety from plants operating under the influence of uncertainty? Towards answering this question\, first generation of MPC development was focused on the various regulation types of issues. Next\, we focused on the development of MPC tuning engine that drives the dynamic economics of process control–delivering true economic value of control strategy. Now in the second generation of its evolution questions are raised on how MPC could be administered to the applications having fast dynamics (e.g.\, fuel cells\, automobile and biomedical applications) or systems to which on-line implementation of MPC is expensive or not possible. This has lead to the development of off-line (explicit) implementation of MPC via –you-solve-only-once– multi-parametric optimisation techniques. In this new role of MPC-on-a-chip\, we aim to develop robust control algorithms and tools for nonlinear systems operating under uncertainty. Using these tools and underlined computer-aided technologies of process automation we can minimise use of energy\, minimise exploitation of environment and maximise the economic profit incentives that are consistently demanded from modern industrial plants while operating at their optimal performance and safety conditions.  In this seminar we will present historical developments and major milestones in modern control theory. Furthermore\, a theoretical perspective and computational challenges to account for uncertainty in process operation for various classes of nonlinear systems will be outlined. From the practical application standpoint\, we will present a generic control automation framework for fuel cell system and its integrated subsystems. To achieve this objective a fully integrated state-of-the-art process automation laboratory for fuel cell system is developed. This testing and validation facility will be used for characterising various designs as well as benchmarking control policies of the polymer electrolyte membrane fuel cell system. Finally\, we will present how the proposed control platform will be able to communicate with the integrated subsystems at the different length-time scales while improving operational performance of fuel cell system by guaranteeing efficiency\, material stability and longevity. As a concluding remark we will highlight our vision and goal of this research program so as to contribute significantly to the knowledge while fostering new technological discoveries in the area of process systems engineering by symbiotic\, synergetic and sustainable development of industrial process automation technology. \nAbout the speaker. Amit received his Master's Degree in Chemical Engineering from Illinois Institute of Technology\, Chicago. He worked as a senior distributed control systems engineer and automation consultant with RasGas in Qatar before joining Invensys as a Software Technology Developer for Advanced Process Performance Suit and Model Predictive Control product 'Connoisseur™'. He was Lecturer and Assistant Professor at the College of Engineering\, Pune. Currently he is working with Professor Efstratios N. Pistikopoulos at the Centre for Process Systems Engineering at Imperial College London. His research is focused on the development of economically and environmentally conscious process design\, global optimisation and robust control theory. His research work carried out in collaboration with Professor Donald J. Chmielewski has been incorporated in the book titled: 'Smart Process Plants: Software and Hardware Solutions for Accurate Data and Profitable Operations'. He has published 7 scientific papers with G-index 3 and H-index 2. He is a recipient of Hamid Arastoopour Excellence in Teaching Award at Illinois Institute of Technology\, Chicago and is listed in 2006 Marquis Who's who in Science and Engineering. He is a recipient of IChemE Journals' 2011 Best Reviewers Award.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-applications-and-beyond/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20130214T110000
DTEND;TZID=UTC:20130214T110000
DTSTAMP:20260417T132718
CREATED:20170124T102145Z
LAST-MODIFIED:20170124T102145Z
UID:589-1360839600-1360839600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Time Consistency in Multistage Stochastic Optimization
DESCRIPTION:Title: Time Consistency in Multistage Stochastic OptimizationSpeaker: Prof. Georg PflugAffiliation:  Department of Statistics and Operations Research – University of Vienna Location: CPSE seminar room (C615 Roderic Hill)Time: 11:00am \nAbstract. A fundamental principle for dynamic optimization is Bellman’s priciple\, stating that at any initially optimal decision sequence is also optimal at later stages.  This time-consistency principle is still valid for stochastic programs if the criterion is to minimze expected costs or to maximize expeted profits. However\, as simple examples show\, it is not longer valid\, if risk-sensitive criteria are chosen such as the optimization of the average value at risk.    It turns out that most risk functionals  are time inconsistent\, e.g.\, it may happen that today some loss distribution appears to be less risky than another\, but looking at the conditional distribution at a later time\, the opposite relation holds. We  demonstrate that this time inconsistency disappears if the conditional functionals are defined in an extended manner\, i.e.\, are evaluated under a specific change of measure. It follows from our results that\, for consistency reasons\, the revelation of partial information in time must dramatically change a decision maker's preferences among the remaining courses of action to keep time consistency.  We extend conditional risk functionals to  allow a temporal decomposition of the initial risk functional in time consistent way. With this extension\, a Bellmann priciple may be proved. Counterexamples show that without change of measures the only time consistent risk functionals are the expectation and the essential supremum. \nAbout the speaker.  \nBorn on June 10th\, 1951 in Vienna. Study of Law\, Mathematics and Statistics at the University of Vienna\, Magister iuris (1974)\, Ph.D in Mathematics (1976). Assistant Professor University of Vienna (1976-81). Professor\, University of Giessen\, Germany (1981-1989). Full Professor\, University of Vienna (1989 – ).  \n \n<!–  \n Visting Professor at the University of Bayreuth (1979)\, Michigan State   University (1985)\, University of California at Davis (1993)\, Universite de Rennes   (1994)\, Technion Haifa\, Israel (1996)\, Princeton University (2001).  \n –>Visting Professor at the University of Bayreuth (1979)\, Michigan State University (1985)\, University of California Davis (1993)\, Universite de Rennes (1994)\, Technion Haifa\, Israel (1996)\, Princeton University (2001)\, University of California Davis (2006).  \n \n<!–  \nDean\, Department of Mathematics\, University of Giessen\, Germany (1987-88);   Head\, Department of Statistics and Decision Support Systems\, University   of Vienna (2000-2003); Member of Senate\,  Universityof Vienna (200-2003);   Research scholar\, Risk\, Modeling and Society Project (RMS) International   Institute of Applied Systems Analysis\, IIASA (1990 – )  \n –>Dean\, Department of Mathematics\, University of Giessen\, Germany (1987-88); Dean\, Faculty of Business\, Economics and Statistics\, University of Vienna\, Austria (2008-2010); Head\, Department of Statistics and Decision Support Systems\, University of Vienna (2000-2003); Member of Senate\, University of Vienna (200-2003); Research scholar\, International Institute of Applied Systems Analysis\, IIASA (1990 – ) – Risk\, Modelling and Society (RMS)\, Risk and Vulnerability Project (RAV)\, .  \n \n<!–  \nAssociate editor : Statistics and Probability Letters\, Stochastic Programming   Electronic Publication Series\, Central European Journal of Operations Research\,   Austrian Journal of Statistics\, Mathematics of Operations Research (1994 – 1997)\,   Mathematical Methods of OR\, Computational Optimization and Applications\, Computational   Management Science\, Energy Systems: Optimization\, Modeling\, Simulation and Economic Aspects; Vestnik of the   Finance Academy\, Moscow.  \n –>Editor in chief: Statistics and Decisions\, Central European Journal of Operations Research \n \nAssociate editor: Statistics and Probability Letters (1994-2007)\, Stochastic Programming Electronic Publication Series\, Austrian Journal of Statistics\, Mathematics of Operations Research (1994 – 1997)\, Mathematical Methods of OR\, Computational Optimization and Applications\, Computational Management Science\, Energy Systems: Optimization\, Modeling\, Simulation and Economic Aspects; Vestnik of the Finance Academy\, Moscow.  \n \n<!–  \nMember\, Council of Scientists\, INTAS\, Bruessel (1999 – 2002). Fellow\,   International Statistical Institute\, Member\, executive board of the international   committee on stochastic programming\, Member\, scientific advisory board\, University of Bolzano/Bozen.  \n –>Member\, Council of Scientists\, INTAS\, Bruessel (1999 – 2002); Fellow\, International Statistical Institute; Member\, executive board of the international committee on stochastic programming; Member\, central research council\, University of Bolzano/Bozen.  \n \n<!–  \nAuthor of 3 books\, editor of 5 books\, and more than 70 publications   in refereed journals\, such as: Annals of Statistics\, Annals of OR\, Probability   Theory\, J Statist. Planning and Inference\, J. ACM\, Parallel Computing\, The Computer   Journal\, Math. Programming\, Mathematics of Optimization\, SIAM J. on Optimization\,   Computational Optimization and Applications\, J. Applied Probability\, Stoch.   Processes and Applications\, Graphs and Combinatorics\, J. Theoretical Computer   Science\, etc. etc.  \n –>Author Author of 4books\, editor of 5 books\, and more than 70 publications in refereed journals\, such as: Annals of Statistics\, Annals of OR\, Probability Theory\, J Statist. Planning and Inference\, J. ACM\, Parallel Computing\, The Computer Journal\, Math. Programming\, Mathematics of Optimization\, SIAM J. on Optimization\, Computational Optimization and Applications\, J. Applied Probability\, Stoch. Processes and Applications\, Graphs and Combinatorics\, J. Theoretical Computer Science\, Quantitative Finance etc.  \n \n<!–  \nOrganizer of COMETT II Workshop “Simulation and Optimization”\, Raach   (1992); Workshop”Computer Intensive Methods in Simulation and Optimization”\,   IIASA (1994); EURO Winter School “Stochastic Optimization”\, Semmering (1996);   Fourth World Congress of the Bernoulli Society\, Vienna (1996); Workshop Stochastic   Dynamic Optimization\, IIASA (2002); Workshop series “Mathematical Optimization   for Financial Models”\, Semmering (2003)\, Cyprus (2003)\, Bergamo (2004); 1th International  Conference on Stochastic Programming\, Vienna (2007); APMOD08\, Vienna and Bratislava (2008). \n –>Organizer of COMETT II Workshop "Simulation and Optimization"\, Raach (1992); Workshop"Computer Intensive Methods in Simulation and Optimization"\, IIASA (1994); EURO Winter School "Stochastic Optimization"\, Semmering (1996); Fourth World Congress of the Bernoulli Society\, Vienna (1996); Workshop Stochastic Dynamic Optimization\, IIASA (2002); Workshop series "Mathematical Optimization for Financial Models"\, Semmering (2003)\, Cyprus (2003)\, Bergamo (2004); 11th International Conference on Stochastic Programming\, Vienna (2007); APMOD\, Vienna and Bratislava (2008). \n \n<!–  \nProject leader of past and present projects: Statistical pattern recognition (Austrian National Bank);   Pension fund management   (BVP pension fund); Data dependency in financial optimization (FWF- Austrian   Science Fund); Optimal network design  and marketing strategies (Telekom Austria);   AURORA-Advanced parallel and distributed algorithms for Computational Finance   (FWF); Unit life insurance with guarantee (Austrian National Bank); Optimal   design of insurance contracts (PGA-Rome); WEBOPT (European Commission-subproject   leader)\, Risk management in liberalized electricity markets (WWTF); Seeds in Finance (Austrian National Bank)\, RISKPLAN (Asia-link)\, Long-term risk management (FWF) \n  \n –>Project leader of past and present projects: Project leader of past and present projects: Statistical pattern recognition (Austrian National Bank); Pension fund management (BVP pension fund); Data dependency in financial optimization (FWF- Austrian Science Fund); Optimal network design and marketing strategies (Telekom Austria); AURORA-Advanced parallel and distributed algorithms for Computational Finance (FWF); Unit life insurance with guarantee (Austrian National Bank); WEBOPT (European Commission-subproject leader)\, Risk management in liberalized electricity markets (WWTF); Seeds in Finance (Austrian National Bank)\, RISKPLAN (Asia-Link)\, Long-term risk management (FWF)\, Pension fund management (Bridge Program).
URL:https://optimisation.doc.ic.ac.uk/event/seminar-time-consistency-in-multistage-stochastic-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20121211T160000
DTEND;TZID=UTC:20121211T160000
DTSTAMP:20260417T132718
CREATED:20170124T102145Z
LAST-MODIFIED:20170124T102145Z
UID:590-1355241600-1355241600@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Optimal control of Weakly Connected Markov Decision Processes
DESCRIPTION:Title: Optimal control of Weakly Connected Markov Decision ProcessesSpeaker: Dr. Panos ParpasAffiliation: Department of Computing – Imperial College LondonLocation: Room 140 HuxleyTime: 4:00pm \nAbstract. Weakly connected Markov processes are used to model stochastic dynamics across different scales. They are widely used in electrical engineering\, finance and molecular dynamics simulations. In many of these applications it is becoming increasingly important to both efficiently simulate these processes as well as to control them. Classical algorithms for the control of Markov Processes cannot be directly applied to weakly connected Markov processes. The problem with existing approaches is that they exhibit an extremely slow convergence rate due to the existence of multiscale effects. We show why existing algorithms are slow\, and propose a new class of algorithms with more favourable convergence properties and computational complexity. In our approach we use spectral graph theory to derive a hierarchy of models that are valid at different resolutions. We then propose a polynomial time algorithm that uses the finest resolution model only when required. The rate of convergence of the algorithm is discussed as well as its complexity. \nAbout the speaker. Panos Parpas is a Lecturer in the Quantitative Analysis and Decision Science (QUADS) section of the Department of Computing at Imperial College London. Before joining Imperial College he was a postdoctoral fellow at the MIT Energy Initiative (2009-2011). Before that he was a quantitative associate at Credit-Suisse (2007-2009). He completed his PhD in computational optimization at Imperial College in 2006.  Panos Parpas is interested in the development and analysis of quantitative optimization models under uncertainty. Stochastic optimization models are used in many areas such as economics\, finance\, engineering\, and energy systems. Realistic models have a large number of variables\, and multiple interactions across time and space. Advanced computational methods\, and analytical approximations that take advantage of problem structure are needed in order to analyze realistic models. I am interested in both the development of computational methods and applications.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-optimal-control-of-weakly-connected-markov-decision-processes/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20121129T150000
DTEND;TZID=UTC:20121129T150000
DTSTAMP:20260417T132718
CREATED:20170124T102145Z
LAST-MODIFIED:20170124T102145Z
UID:591-1354201200-1354201200@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: The Branch-and-Sandwich Algorithm for Mixed-Integer Nonlinear Bilevel Programming Problems
DESCRIPTION:Title: The Branch-and-Sandwich Algorithm for Mixed-Integer Nonlinear Bilevel Programming ProblemsSpeaker: Dr. Polyxeni-Margarita KleniatiAffiliation: Centre for Process Systems Engineering at Imperial College LondonLocation: Room 144 HuxleyTime: 3:00pm \nAbstract. We extend our recently introduced algorithm for general bilevel programming problems\, Branch-and-Sandwich (Kleniati and Adjiman\, J. Global Optim.\, 2012)\, to the class of mixed-integer nonlinear bilevel problems.  As in the original algorithm\, auxiliary inner lower and upper bounding problems are constructed in order to bound the inner value function and provide constant bound cuts for the outer upper and outer lower bounding problems. The KKT-based relaxations\, originally proposed for the inner upper bounding and the outer lower bounding problems\, are applicable with respect to the lower-level continuous variables based on appropriate constraint qualifications\, but are no longer required. In the extension that we present here\, a robust counterpart approach is employed to formulate the inner upper bounding problem and the resulting bound cut may be the only constraint added to the proposed outer lower bounding problem. The branching framework with auxiliary lists of nodes\, as developed for the original Branch-and-Sandwich\, is also applied to the discrete case. The algorithm is used to solve successfully ten literature problems. \nAbout the speaker. Dr. Kleniati is undertaking her second postdoctoral research position with Prof. Adjiman at the Chemical Engineering department of Imperial College London. She received her PhD in Computing and Optimisation research in 2010 under the supervision of Prof. Rustem at the department of Computing in Imperial College London.  The research of Polyxeni Kleniati is currently focused on the global optimisation of bilevel programming problems with applications to chemical engineering.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-the-branch-and-sandwich-algorithm-for-mixed-integer-nonlinear-bilevel-programming-problems/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20121127T140000
DTEND;TZID=UTC:20121127T140000
DTSTAMP:20260417T132718
CREATED:20170124T102145Z
LAST-MODIFIED:20170124T102145Z
UID:592-1354024800-1354024800@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Matrix Learning Problems and First-Order Optimization
DESCRIPTION:Title: Matrix Learning Problems and First-Order OptimizationSpeaker: Dr. Andreas Argyriou Affiliation: Toyota Technological Institute at ChicagoLocation: Room 217 Huxley BuildingTime: 2:00pm \nAbstract. In the past few years\, there has been significant interest in nonsmooth convex optimization problems involving matrices\, especially in the areas of machine learning\, statistics and control. Instances of such problems are multitask learning and matrix completion\, robust PCA\, sparse inverse covariance selection etc. I will present PRISMA\, a new optimization algorithm for minimizing a convex objective which decomposes into three parts: a smooth part\, a simple non-smooth Lipschitz part\, and a simple nonsmooth non-Lipschitz part. Our algorithm combines the methodologies of smoothing and accelerated proximal methods. Moreover\, our convergence result removes the assumption of bounded domain required by Nesterov's smoothing methods. I will show how PRISMA can be applied to the problems of max-norm regularized matrix completion and clustering\, robust PCA and sparse inverse covariance selection\, and compare to state of the art methods.  \nAbout the speaker. Andreas Argyriou has received degrees in Computer Science from MIT and a PhD in Computer Science from UCL. The topic of his PhD work has been on machine learning methodologies integrating different tasks and data sources. He has held postdoctoral and research faculty positions at UCL\, TTI Chicago\, KU Leuven and is currently in Ecole Centrale Paris with an RBUCE-UP fellowship. His current interests are in the areas of machine learning with big and complex data\, compressed sensing and convex optimization methods.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-matrix-learning-problems-and-first-order-optimization/
END:VEVENT
BEGIN:VEVENT
DTSTART;TZID=UTC:20121121T140000
DTEND;TZID=UTC:20121121T140000
DTSTAMP:20260417T132718
CREATED:20170124T102145Z
LAST-MODIFIED:20170124T102145Z
UID:593-1353506400-1353506400@optimisation.doc.ic.ac.uk
SUMMARY:Seminar: Algorithms and computer architectures for efficient real-time optimization and linear algebra solvers
DESCRIPTION:Title: Algorithms and computer architectures for efficient real-time optimization and linear algebra solversSpeaker: Eric C KerriganAffiliation: Department of Aeronautics and Department of Electrical and Electronic Engineering – Imperial College LondonLocation: Room 408 Electrical & Electronic Engineering DepartmentTime: 2:00pm \nAbstract. In many engineering applications where one would like to implement control and signal processing algorithms\, one needs to use the latest measurements to update and solve a sequence of numerical optimization or linear algebra problems. Solving these problems in a computationally efficient and numerically reliable fashion on an embedded computing system is a challenging task.  One of the key choices that an engineer has to make in order to determine the speed\, cost and power consumption of a microprocessor is the number representation that will be used in the arithmetic units. CPUs within modern desktop or laptop PCs provide hardware support for double precision floating-point arithmetic. However\, most microprocessors in embedded systems do not support double precision floating-point arithmetic; they often only support single-precision floating-point and/or fixed-point arithmetic. It is therefore possible that\, because of a significant decrease in precision or dynamic range\, a numerical algorithm that gives reliable results on the office PC or laptop might give completely different results when implemented on an embedded computing system.  We will present novel mathematical formulations\, computer architectures\, optimization solvers and linear algebra solvers to show that computational resources can be reduced significantly using very low precision arithmetic\, without sacrificing accuracy. We will also present new mathematical results that allow one to use fixed-point arithmetic to make impressive computational savings in iterative linear algebra solvers. Our theoretical results will be supported by implementations on a Field Programmable Gate Array (FPGA) and we will show that it is possible to exceed the peak theoretical performance of a 1TFLOP/s general-purpose GPU. \nAbout the speaker. Dr Kerrigan’s research includes the optimal and robust control of nonlinear\, constrained and distributed parameter systems. His research is focused on the development of efficient numerical methods and computational hardware architectures for solving the resulting problems and is applied to a variety of problems in aerospace and fluid dynamics.
URL:https://optimisation.doc.ic.ac.uk/event/seminar-algorithms-and-computer-architectures-for-efficient-real-time-optimization-and-linear-algebra-solvers/
END:VEVENT
END:VCALENDAR