Fr. 135.00

Decision Making with Dominance Constraints in Two-Stage Stochastic Integer Programming

English · Paperback / Softback

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Description

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Two-stage stochastic programming models are considered as attractive tools for making optimal decisions under uncertainty. Traditionally, optimality is formalized by applying statistical parameters such as the expectation or the conditional value at risk to the distributions of objective values.

Uwe Gotzes analyzes an approach to account for risk aversion in two-stage models based upon partial orders on the set of real random variables. These stochastic orders enable the incorporation of the characteristics of whole distributions into the decision process. The profit or cost distributions must pass a benchmark test with a given acceptable distribution. Thus, additional objectives can be optimized. For this new class of stochastic optimization problems, results on structure and stability are proven and a tailored algorithm to tackle large problem instances is developed. The implications of the modelling background and numerical results from the application of the proposed algorithm are demonstrated with case studies from energy trading.

List of contents

Increasing Convex Order Constraints Induced by Mixed-Integer Linear Recourse.- Competitive Risk-Averse Selling Price Determination for Electricity Retailers.- Decomposition Method.- Test Instances.- An Alternative Formulation for Optimization under Stochastic Dominance Constraints.

About the author

Dr. Uwe Gotzes completed his doctoral thesis at the Department of Mathematics at the University of Duisburg-Essen. He is a network planner at E.ON Gastransport.

Summary

Two-stage stochastic programming models are considered as attractive tools for making optimal decisions under uncertainty. Traditionally, optimality is formalized by applying statistical parameters such as the expectation or the conditional value at risk to the distributions of objective values.

Uwe Gotzes analyzes an approach to account for risk aversion in two-stage models based upon partial orders on the set of real random variables. These stochastic orders enable the incorporation of the characteristics of whole distributions into the decision process. The profit or cost distributions must pass a benchmark test with a given acceptable distribution. Thus, additional objectives can be optimized. For this new class of stochastic optimization problems, results on structure and stability are proven and a tailored algorithm to tackle large problem instances is developed. The implications of the modelling background and numerical results from the application of the proposed algorithm are demonstrated with case studies from energy trading.

Product details

Authors Uwe Gotzes
Publisher Vieweg+Teubner
 
Languages English
Product format Paperback / Softback
Released 31.07.2009
 
EAN 9783834808431
ISBN 978-3-8348-0843-1
No. of pages 100
Weight 218 g
Illustrations 104 p. 30 illus.
Series Stochastic Programming
Stochastic Programming
Subjects Natural sciences, medicine, IT, technology > IT, data processing > IT

Entscheidung, Stochastik, Wahrscheinlichkeitsrechnung und Statistik, Mathematics, Mathematics and Statistics, Mathematics, general, Probability Theory and Stochastic Processes, Probability & statistics, Probabilities, Stochastics, Probability Theory

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