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      Curiosity-driven reinforcement learning with homeostatic regulation

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          Abstract

          We propose a curiosity reward based on information theory principles and consistent with the animal instinct to maintain certain critical parameters within a bounded range. Our experimental validation shows the added value of the additional homeostatic drive to enhance the overall information gain of a reinforcement learning agent interacting with a complex environment using continuous actions. Our method builds upon two ideas: i) To take advantage of a new Bellman-like equation of information gain and ii) to simplify the computation of the local rewards by avoiding the approximation of complex distributions over continuous states and actions.

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          Empowerment for continuous agent—environment systems

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            Author and article information

            Journal
            23 January 2018
            Article
            1801.07440
            e1c9af5c-4a40-40e4-b14c-b0ff48270351

            http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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            Presented at the NIPS 2017 Workshop: Cognitively Informed Artificial Intelligence: Insights From Natural Intelligence
            cs.AI

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