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General Characterization of Agents by States they Visit

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arxiv 2012.01244 v3 pith:ZAK3W5S3 submitted 2020-12-02 cs.AI cs.NE

General Characterization of Agents by States they Visit

classification cs.AI cs.NE
keywords policiespolicyalgorithmsagentsevaluategeneralstatestraining
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Behavioural characterizations (BCs) of decision-making agents, or their policies, are used to study outcomes of training algorithms and as part of the algorithms themselves to encourage unique policies, match expert policy or restrict changes to policy per update. However, previously presented solutions are not applicable in general, either due to lack of expressive power, computational constraint or constraints on the policy or environment. Furthermore, many BCs rely on the actions of policies. We discuss and demonstrate how these BCs can be misleading, especially in stochastic environments, and propose a novel solution based on what states policies visit. We run experiments to evaluate the quality of the proposed BC against baselines and evaluate their use in studying training algorithms, novelty search and trust-region policy optimization. The code is available at https://github.com/miffyli/policy-supervectors.

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