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Near-Optimal Dynamic Regret for Adversarial Linear Mixture MDPs

Long-Fei Li, Peng Zhao, Zhi-Hua Zhou

TL;DR

This is the first work that achieves near-optimal dynamic regret for adversarial linear mixture MDPs with the unknown transition without prior knowledge of the non-stationarity measure.

Abstract

We study episodic linear mixture MDPs with the unknown transition and adversarial rewards under full-information feedback, employing dynamic regret as the performance measure. We start with in-depth analyses of the strengths and limitations of the two most popular methods: occupancy-measure-based and policy-based methods. We observe that while the occupancy-measure-based method is effective in addressing non-stationary environments, it encounters difficulties with the unknown transition. In contrast, the policy-based method can deal with the unknown transition effectively but faces challenges in handling non-stationary environments. Building on this, we propose a novel algorithm that combines the benefits of both methods. Specifically, it employs (i) an occupancy-measure-based global optimization with a two-layer structure to handle non-stationary environments; and (ii) a policy-based variance-aware value-targeted regression to tackle the unknown transition. We bridge these two parts by a novel conversion. Our algorithm enjoys an $\widetilde{\mathcal{O}}(d \sqrt{H^3 K} + \sqrt{HK(H + \bar{P}_K)})$ dynamic regret, where $d$ is the feature dimension, $H$ is the episode length, $K$ is the number of episodes, $\bar{P}_K$ is the non-stationarity measure. We show it is minimax optimal up to logarithmic factors by establishing a matching lower bound. To the best of our knowledge, this is the first work that achieves near-optimal dynamic regret for adversarial linear mixture MDPs with the unknown transition without prior knowledge of the non-stationarity measure.

Near-Optimal Dynamic Regret for Adversarial Linear Mixture MDPs

TL;DR

This is the first work that achieves near-optimal dynamic regret for adversarial linear mixture MDPs with the unknown transition without prior knowledge of the non-stationarity measure.

Abstract

We study episodic linear mixture MDPs with the unknown transition and adversarial rewards under full-information feedback, employing dynamic regret as the performance measure. We start with in-depth analyses of the strengths and limitations of the two most popular methods: occupancy-measure-based and policy-based methods. We observe that while the occupancy-measure-based method is effective in addressing non-stationary environments, it encounters difficulties with the unknown transition. In contrast, the policy-based method can deal with the unknown transition effectively but faces challenges in handling non-stationary environments. Building on this, we propose a novel algorithm that combines the benefits of both methods. Specifically, it employs (i) an occupancy-measure-based global optimization with a two-layer structure to handle non-stationary environments; and (ii) a policy-based variance-aware value-targeted regression to tackle the unknown transition. We bridge these two parts by a novel conversion. Our algorithm enjoys an dynamic regret, where is the feature dimension, is the episode length, is the number of episodes, is the non-stationarity measure. We show it is minimax optimal up to logarithmic factors by establishing a matching lower bound. To the best of our knowledge, this is the first work that achieves near-optimal dynamic regret for adversarial linear mixture MDPs with the unknown transition without prior knowledge of the non-stationarity measure.

Paper Structure

This paper contains 26 sections, 12 theorems, 62 equations, 1 figure, 1 table, 2 algorithms.

Key Result

Lemma 1

Suppose $\theta_h^* \in \mathcal{C}_{k,h}, \forall k \in [K], h \in [H]$. Set the clipping parameter $\alpha=1/T^2$, the step size pool as $\mathcal{H} = \{\eta_i = 2^{i-1} \sqrt{K^{-1}\log(S^2A/H)} \mid i\in [N] \}$, where $N=\lceil\frac{1}{2} \log(1+\frac{4K\log{T}}{\log(S^2 A/H)})\rceil+1$, and t

Figures (1)

  • Figure : OOPE

Theorems & Definitions (27)

  • Definition 1: Linear Mixture MDPs
  • Remark 1
  • Remark 2
  • Lemma 1
  • Remark 3
  • Lemma 2
  • Remark 4
  • Theorem 1
  • Remark 5
  • Theorem 2
  • ...and 17 more