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Conference Papers Year : 2012

Exploration in Model-based Reinforcement Learning by Empirically Estimating Learning Progress

Abstract

Formal exploration approaches in model-based reinforcement learning estimate the accuracy of the currently learned model without consideration of the empirical prediction error. For example, PAC-MDP approaches such as R-MAX base their model certainty on the amount of collected data, while Bayesian approaches assume a prior over the transition dynamics. We propose extensions to such approaches which drive exploration solely based on empirical estimates of the learner's accuracy and learning progress. We provide a "sanity check" theoretical analysis, discussing the behavior of our extensions in the standard stationary finite state-action case. We then provide experimental studies demonstrating the robustness of these exploration measures in cases of non-stationary environments or where original approaches are misled by wrong domain assumptions.
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Dates and versions

hal-00755248 , version 1 (20-11-2012)

Identifiers

  • HAL Id : hal-00755248 , version 1

Cite

Manuel Lopes, Tobias Lang, Marc Toussaint, Pierre-Yves Oudeyer. Exploration in Model-based Reinforcement Learning by Empirically Estimating Learning Progress. Neural Information Processing Systems (NIPS), Dec 2012, Lake Tahoe, United States. ⟨hal-00755248⟩
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