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  • title: Intrinsic Control of Variational Beliefs in Dynamic Partially-Observed Visual Environments
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            Intrinsic Control of Variational Beliefs in Dynamic Partially-Observed Visual Environments
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            Intrinsic Control of Variational Beliefs in Dynamic Partially-Observed Visual Environments

            Dec 6, 2021

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            Nick Rhinehart

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            Ji Wang

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            Glen Berseth

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            About

            Humans and animals explore their environment and acquire useful skills even in the absence of clear goals, exhibiting intrinsic motivation. The study of intrinsic motivation in artificial agents is concerned with the following question: what is a good general-purpose objective for an agent? We study this question in dynamic partially-observed environments, and argue that a compact and general learning objective is to minimize the entropy of the agent's state visitation estimated using a latent s…

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            NeurIPS 2021

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