4.6 Article

RISK-SENSITIVE MARKOV CONTROL PROCESSES

Journal

SIAM JOURNAL ON CONTROL AND OPTIMIZATION
Volume 51, Issue 5, Pages 3652-3672

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/120899005

Keywords

Markov control processes; Poisson equation; Bellman equation; risk-sensitive control; risk measures; stability of nonlinear operators; Doeblin's condition; Lyapunov stability

Funding

  1. BMBF [FKZ01GQ1001B]
  2. BMBF (Bernstein Fokus Lernen TP1) [01GQ0911]

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We introduce a general framework for measuring risk in the context of Markov control processes with risk maps on general Borel spaces that generalize known concepts of risk measures in mathematical finance, operations research, and behavioral economics. Within the framework, applying weighted norm spaces to incorporate unbounded costs also, we study two types of infinite-horizon risk-sensitive criteria, discounted total risk and average risk, and solve the associated optimization problems by dynamic programming. For the discounted case, we propose a new discount scheme, which is different from the conventional form but consistent with the existing literature, while for the average risk criterion, we state Lyapunov-like stability conditions that generalize known conditions for Markov chains to ensure the existence of solutions to the optimality equation.

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