Information relaxations and duality in stochastic dynamic programs

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2010-07-01

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Abstract

We describe a general technique for determining upper bounds on maximal values (or lower bounds on minimal costs) in stochastic dynamic programs. In this approach, we relax the nonanticipativity constraints that require decisions to depend only on the information available at the time a decision is made and impose a "penalty" that punishes violations of nonanticipativity. In applications, the hope is that this relaxed version of the problem will be simpler to solve than the original dynamic program. The upper bounds provided by this dual approach complement lower bounds on values that may be found by simulating with heuristic policies. We describe the theory underlying this dual approach and establish weak duality, strong duality, and complementary slackness results that are analogous to the duality results of linear programming. We also study properties of good penalties. Finally, we demonstrate the use of this dual approach in an adaptive inventory control problem with an unknown and changing demand distribution and in valuing options with stochastic volatilities and interest rates. These are complex problems of significant practical interest that are quite difficult to solve to optimality. In these examples, our dual approach requires relatively little additional computation and leads to tight bounds on the optimal values. © 2010 INFORMS.

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10.1287/opre.1090.0796

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Brown, DB, JE Smith and P Sun (2010). Information relaxations and duality in stochastic dynamic programs. Operations Research, 58(4 PART 1). pp. 785–801. 10.1287/opre.1090.0796 Retrieved from https://hdl.handle.net/10161/4435.

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Brown

David B. Brown

Snow Family Business Distinguished Professor

David B. Brown is the Snow Family Business Professor in Decision Sciences and the Faculty Director for the Center for Energy, Development and Global Environment (EDGE) at Duke University's Fuqua School of Business.

Professor Brown's research focuses on designing and analyzing algorithms for decision problems involving uncertainty and complex tradeoffs. This work is methodological in nature and cuts across various application areas. Part of the GRACE project funded by the US Department of Energy's Advanced Research Projects Agency, Professor Brown is actively working with researchers at Duke and several other institutions on improving the efficiency and reliability of electricity grid operations in the face of uncertainty in renewable energy sources.

His recent research also includes developing and analyzing solution techniques for problems such as network revenue management, dynamic pricing in shared vehicle systems, stochastic scheduling problems, and sequential search problems. Professor Brown's research has appeared in publications such as Management Science and Operations Research, and the Institute for Operations Research and the Management Sciences (INFORMS) has recognized his research with several awards. At Fuqua, he has taught Decision Models, Data Analytics and Applications, Probability and Statistics, and Convex Optimization, and he has won teaching awards in multiple programs.

Professor Brown received a Bachelor's and Master's of Science in Electrical Engineering from Stanford University and has been on the faculty at Fuqua since receiving his Ph.D. in Electrical Engineering and Computer Science from MIT.

Sun

Peng Sun

J.B. Fuqua Distinguished Professor of Business Administration

Peng Sun is a JB Fuqua Professor in the Decision Sciences area at the Fuqua School of Business, Duke University. He researches mathematical theories and models for resource allocation decisions under uncertainty, and incentive issues in dynamic environments. His work spans a range of applications areas, from operations management, economics, finance, marketing, to health care and sustainability. He serves a Department Editor at Management Science and an Associate Editor at Operations Research, two leading academic journals of the profession of Operations Research and Management Science. At the Fuqua School, Professor Sun has taught MBA core course Decision Models and elective course Strategic Modeling and Business Dynamics, and PhD course Dynamic Programming and Optimal Control.


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