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MEET: A Monte Carlo Exploration-Exploitation Trade-off for Buffer Sampling
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- Citation Author(s):
- Submitted by:
- Julius Ott
- Last updated:
- 30 May 2023 - 3:08am
- Document Type:
- Poster
- Document Year:
- 2023
- Event:
- Presenters:
- Julius Ott
- Paper Code:
- https://github.com/juliusott/uncertainty-buffer
- Categories:
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Data selection is essential for any data-based optimization technique, such as Reinforcement Learning. State-of-the-art sampling strategies for the experience replay buffer improve the performance of the Reinforcement Learning agent. However, they do not incorporate uncertainty in the Q-Value estimation. Consequently, they cannot adapt the sampling strategies, including exploration and exploitation of transitions, to the complexity of the task.
To address this, this paper proposes a new sampling strategy that leverages the exploration-exploitation trade-off. This is enabled by the uncertainty estimation of the Q-Value function, which guides the sampling to explore more significant transitions and, thus, learn a more efficient policy. Experiments on classical control environments demonstrate stable results across various environments. They show that the proposed method outperforms state-of-the-art sampling strategies for dense rewards w.r.t.\ convergence and peak performance by 26\% on average.
MEET_Poster.pdf
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icassp_2023 (7).pdf
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