LGMLFeb 9, 2025

Decision Making in Hybrid Environments: A Model Aggregation Approach

arXiv:2502.05974v21 citationsh-index: 15COLT
Originality Incremental advance
AI Analysis

This work addresses a gap in online decision-making theory for hybrid regimes, offering incremental improvements in algorithm design and regret bounds.

The authors tackled the problem of decision-making in hybrid environments where dynamics are fixed but rewards change arbitrarily, by extending the decision estimation coefficient (DEC) framework to more precisely characterize this case, leading to improved regret bounds for linear Q*/V* MDPs in the stochastic regime.

Recent work by Foster et al. (2021, 2022, 2023b) and Xu and Zeevi (2023) developed the framework of decision estimation coefficient (DEC) that characterizes the complexity of general online decision making problems and provides a general algorithm design principle. These works, however, either focus on the pure stochastic regime where the world remains fixed over time, or the pure adversarial regime where the world arbitrarily changes over time. For the hybrid regime where the dynamics of the world is fixed while the reward arbitrarily changes, they only give pessimistic bounds on the decision complexity. In this work, we propose a general extension of DEC that more precisely characterizes this case. Besides applications in special cases, our framework leads to a flexible algorithm design where the learner learns over subsets of the hypothesis set, trading estimation complexity with decision complexity, which could be of independent interest. Our work covers model-based learning and model-free learning in the hybrid regime, with a newly proposed extension of the bilinear classes (Du et al., 2021) to the adversarial-reward case. In addition, our method improves the best-known regret bounds for linear Q*/V* MDPs in the pure stochastic regime.

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