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arxiv: 2410.11338 · v1 · pith:PSNXZ5B2 · submitted 2024-10-15 · cs.LG · cs.AI· cs.RO

DIAR: Diffusion-model-guided Implicit Q-learning with Adaptive Revaluation

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classification cs.LG cs.AIcs.RO
keywords adaptivediardiffusionofflinerevaluationaddressdecision-makingdiffusion-model-guided
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We propose a novel offline reinforcement learning (offline RL) approach, introducing the Diffusion-model-guided Implicit Q-learning with Adaptive Revaluation (DIAR) framework. We address two key challenges in offline RL: out-of-distribution samples and long-horizon problems. We leverage diffusion models to learn state-action sequence distributions and incorporate value functions for more balanced and adaptive decision-making. DIAR introduces an Adaptive Revaluation mechanism that dynamically adjusts decision lengths by comparing current and future state values, enabling flexible long-term decision-making. Furthermore, we address Q-value overestimation by combining Q-network learning with a value function guided by a diffusion model. The diffusion model generates diverse latent trajectories, enhancing policy robustness and generalization. As demonstrated in tasks like Maze2D, AntMaze, and Kitchen, DIAR consistently outperforms state-of-the-art algorithms in long-horizon, sparse-reward environments.

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