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  Better Optimism By Bayes: Adaptive Planning with Rich Models

Guez, A., Silver, D., & Dayan, P. (submitted). Better Optimism By Bayes: Adaptive Planning with Rich Models.

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Genre: Forschungspapier

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externe Referenz:
https://arxiv.org/abs/1402.1958 (beliebiger Volltext)
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 Urheber:
Guez, A, Autor
Silver, D, Autor
Dayan, P1, Autor           
Affiliations:
1External Organizations, ou_persistent22              

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Schlagwörter: -
 Zusammenfassung: The computational costs of inference and planning have confined Bayesian model-based reinforcement learning to one of two dismal fates: powerful Bayes-adaptive planning but only for simplistic models, or powerful, Bayesian non-parametric models but using simple, myopic planning strategies such as Thompson sampling. We ask whether it is feasible and truly beneficial to combine rich probabilistic models with a closer approximation to fully Bayesian planning. First, we use a collection of counterexamples to show formal problems with the over-optimism inherent in Thompson sampling. Then we leverage state-of-the-art techniques in efficient Bayes-adaptive planning and non-parametric Bayesian methods to perform qualitatively better than both existing conventional algorithms and Thompson sampling on two contextual bandit-like problems.

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 Datum: 2014-02
 Publikationsstatus: Eingereicht
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