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Mutual Information State Intrinsic Control

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arxiv 2103.08107 v1 pith:QPMMTBSL submitted 2021-03-15 cs.LG

Mutual Information State Intrinsic Control

classification cs.LG
keywords agentintrinsicrewardstateablecontrolinformationmotivated
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Reinforcement learning has been shown to be highly successful at many challenging tasks. However, success heavily relies on well-shaped rewards. Intrinsically motivated RL attempts to remove this constraint by defining an intrinsic reward function. Motivated by the self-consciousness concept in psychology, we make a natural assumption that the agent knows what constitutes itself, and propose a new intrinsic objective that encourages the agent to have maximum control on the environment. We mathematically formalize this reward as the mutual information between the agent state and the surrounding state under the current agent policy. With this new intrinsic motivation, we are able to outperform previous methods, including being able to complete the pick-and-place task for the first time without using any task reward. A video showing experimental results is available at https://youtu.be/AUCwc9RThpk.

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