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arXiv:2505.04546 [math.OC]AbstractReferencesReviewsResources

Algorithms for zero-sum stochastic games with the risk-sensitive average criterion

Fang Chen, Xianping Guo, Xin Guo, Junyu Zhang

Published 2025-05-07Version 1

This paper is an attempt to compute the value and saddle points of zero-sum risk-sensitive average stochastic games. For the average games with finite states and actions, we first introduce the so-called irreducibility coefficient and then establish its equivalence to the irreducibility condition. Using this equivalence,we develop an iteration algorithm to compute $\varepsilon$-approximations of the value (for any given $\varepsilon>0$) and show its convergence. Based on $\varepsilon$-approximations of the value and the irreducibility coefficient, we further propose another iteration algorithm, which is proved to obtain $\varepsilon$-saddle points in finite steps. Finally, a numerical example of energy management in smart grids is provided to illustrate our results.

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