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q-Munchausen Reinforcement Learning

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arxiv 2205.07467 v1 pith:VORZUQQP submitted 2022-05-16 cs.LG cs.AI

q-Munchausen Reinforcement Learning

classification cs.LG cs.AI
keywords tsallism-rllearninglogarithmpolicyconsideredentropyformulation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The recently successful Munchausen Reinforcement Learning (M-RL) features implicit Kullback-Leibler (KL) regularization by augmenting the reward function with logarithm of the current stochastic policy. Though significant improvement has been shown with the Boltzmann softmax policy, when the Tsallis sparsemax policy is considered, the augmentation leads to a flat learning curve for almost every problem considered. We show that it is due to the mismatch between the conventional logarithm and the non-logarithmic (generalized) nature of Tsallis entropy. Drawing inspiration from the Tsallis statistics literature, we propose to correct the mismatch of M-RL with the help of $q$-logarithm/exponential functions. The proposed formulation leads to implicit Tsallis KL regularization under the maximum Tsallis entropy framework. We show such formulation of M-RL again achieves superior performance on benchmark problems and sheds light on more general M-RL with various entropic indices $q$.

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