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    Offline reinforcement learning (RL) faces distributional shift. Our offline decoupled prioritized resampling (ODPR) method improves policies by prioritizing actions, enhancing stability and performance across various algorithms.

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    Area of Science:

    • Artificial Intelligence
    • Machine Learning
    • Robotics

    Background:

    • Offline reinforcement learning (RL) is hindered by the distributional shift problem.
    • Existing methods often apply uniform policy constraints, potentially harming policy learning.
    • This uniform approach can negatively impact the performance of learned policies.

    Purpose of the Study:

    • To introduce offline decoupled prioritized resampling (ODPR) to address suboptimal policy constraints in offline RL.
    • To enhance training stability through unique decoupled resampling techniques.
    • To theoretically and empirically demonstrate ODPR's effectiveness in improving offline RL performance.

    Main Methods:

    • ODPR designs specialized priority functions to address suboptimal policy constraints.
    • It employs decoupled resampling for improved training stability.
    • Two implementations, ODPR-A (advantage-based) and ODPR-R (return-based), balance computation and performance.

    Main Results:

    • Theoretical analysis shows ODPR's priority functions improve the behavior policy distribution.
    • Constraining to this improved policy is likely to yield better offline RL solutions.
    • Experiments demonstrate significant performance improvements across behavior cloning (BC), TD3 BC, OnestepRL, conservative Q-learning (CQL), and implicit Q-learning (IQL) using ODPR-A and ODPR-R.
    • ODPR-A shows effectiveness even without trajectory information.

    Conclusions:

    • ODPR is a highly compatible, plug-and-play component that significantly enhances offline RL algorithms.
    • The method effectively mitigates the distributional shift problem by prioritizing actions.
    • ODPR offers a promising direction for improving the robustness and performance of offline RL systems.