Risk-Averse Optimization and Control Risk-Averse Optimization and Control
Springer Series in Operations Research and Financial Engineering

Risk-Averse Optimization and Control

Theory and Methods

    • €129.99
    • €129.99

Publisher Description

This book offers a comprehensive presentation of the theory and methods of risk-averse optimization and control. Problems of this type arise in finance, energy production and distribution, supply chain management, medicine, and many other areas, where not only the average performance of a stochastic system is essential, but also high-impact and low-probability events must be taken into account. The book is a self-contained presentation of the utility theory, the theory of measures of risk, including systemic and dynamic measures of risk, and their use in optimization and control models. It also covers stochastic dominance relations and their application as constraints in optimization models. Optimality conditions for problems with nondifferentiable and nonconvex functions and operators involving risk measures and stochastic dominance relations are discussed. Much attention is paid to multi-stage risk-averse optimization problems and to risk-averse Markov decision problems.



Specialized algorithms for solving risk-averse optimization and control problems are presented and analyzed: stochastic subgradient methods for risk optimization, decomposition methods for dynamic problems, event cut and dual methods for stochastic dominance constraints, and policy iteration methods for control problems.



The target audience is researchers and graduate students in the areas of mathematics, business analytics, insurance and finance, engineering, and computer science. The theoretical considerations are illustrated with examples, which make the book useful material for advanced courses in the area.

GENRE
Science & Nature
RELEASED
2024
29 June
LANGUAGE
EN
English
LENGTH
466
Pages
PUBLISHER
Springer Nature Switzerland
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
18
MB
Principles of Supply Chain Management and Their Implications Principles of Supply Chain Management and Their Implications
2024
Extreme Value Theory for Time Series Extreme Value Theory for Time Series
2024
Modeling with Stochastic Programming Modeling with Stochastic Programming
2024
Second-Order Variational Analysis in Optimization, Variational Stability, and Control Second-Order Variational Analysis in Optimization, Variational Stability, and Control
2024
Fundamentals of Convex Analysis and Optimization Fundamentals of Convex Analysis and Optimization
2023
Convex Analysis and Beyond Convex Analysis and Beyond
2022