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Beyond Prioritized Replay: Sampling States in Model-Based Reinforcement Learning via Simulated Priorities

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 نشر من قبل Yangchen Pan
 تاريخ النشر 2020
  مجال البحث الهندسة المعلوماتية
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The prioritized Experience Replay (ER) method has attracted great attention; however, there is little theoretical understanding about why it can help and its limitations. In this work, we take a deep look at the prioritized ER. In a supervised learning setting, we show the equivalence between the error-based prioritized sampling method for mean squared error and uniform sampling for cubic power loss. We then provide theoretical insight into why it improves convergence rate upon uniform sampling during early learning. Based on the insight, we further point out two limitations of the prioritized ER method: 1) outdated priorities and 2) insufficient coverage of the sample space. To mitigate the limitations, we propose our model-based stochastic gradient Langevin dynamics sampling method. We show that our method does provide states distributed close to an ideal prioritized sampling distribution estimated by the brute-force method, which does not suffer from the two limitations. We conduct experiments on both discrete and continuous control problems to show our approachs efficacy and examine the practical implication of our method in an autonomous driving application.

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