Entropic Risk Optimization in Discounted MDPs: Sample Complexity Bounds with a Generative Model

Oliver Mortensen, Mohammad Sadegh Talebi

公開日: 2025/5/30

Abstract

In this paper, we analyze the sample complexities of learning the optimal state-action value function $Q^*$ and an optimal policy $\pi^*$ in a finite discounted Markov decision process (MDP) where the agent has recursive entropic risk-preferences with risk-parameter $\beta\neq 0$ and where a generative model of the MDP is available. We provide and analyze a simple model based approach which we call model-based risk-sensitive $Q$-value-iteration (MB-RS-QVI) which leads to $(\varepsilon,\delta)$-PAC-bounds on $\|Q^*-Q^k\|$, and $\|V^*-V^{\pi_k}\|$ where $Q_k$ is the output of MB-RS-QVI after k iterations and $\pi_k$ is the greedy policy with respect to $Q_k$. Both PAC-bounds have exponential dependence on the effective horizon $\frac{1}{1-\gamma}$ and the strength of this dependence grows with the learners risk-sensitivity $|\beta|$. We also provide two lower bounds which shows that exponential dependence on $|\beta|\frac{1}{1-\gamma}$ is unavoidable in both cases. The lower bounds reveal that the PAC-bounds are tight in the parameters $S,A,\delta,\varepsilon$ and that unlike in the classical setting it is not possible to have polynomial dependence in all model parameters.

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