Movatterモバイル変換


[0]ホーム

URL:


Optimal Reinforcement Learning for Gaussian Systems

Part ofAdvances in Neural Information Processing Systems 24 (NIPS 2011)

BibtexMetadataPaper

Authors

Philipp Hennig

Abstract

The exploration-exploitation trade-off is among the central challenges of reinforcement learning. The optimal Bayesian solution is intractable in general. This paper studies to what extent analytic statements about optimal learning are possible if all beliefs are Gaussian processes. A first order approximation of learning of both loss and dynamics, for nonlinear, time-varying systems in continuous time and space, subject to a relatively weak restriction on the dynamics, is described by an infinite-dimensional partial differential equation. An approximate finite-dimensional projection gives an impression for how this result may be helpful.


Name Change Policy

Requests for name changes in the electronic proceedings will be accepted with no questions asked. However name changes may cause bibliographic tracking issues. Authors are asked to consider this carefully and discuss it with their co-authors prior to requesting a name change in the electronic proceedings.

Use the "Report an Issue" link to request a name change.


[8]ページ先頭

©2009-2025 Movatter.jp