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ICONIP
2009

Tracking in Reinforcement Learning

13 years 10 months ago
Tracking in Reinforcement Learning
Reinforcement learning induces non-stationarity at several levels. Adaptation to non-stationary environments is of course a desired feature of a fair RL algorithm. Yet, even if the environment of the learning agent can be considered as stationary, generalized policy iteration frameworks, because of the interleaving of learning and control, will produce non-stationarity of the evaluated policy and so of its value function. Tracking the optimal solution instead of trying to converge to it is therefore preferable. In this paper, we propose to handle this tracking issue with a Kalman-based temporal difference framework. Complexity and convergence analysis are studied. Empirical investigations of its ability to handle non-stationarity is finally provided.
Matthieu Geist, Olivier Pietquin, Gabriel Fricout
Added 19 Feb 2011
Updated 19 Feb 2011
Type Journal
Year 2009
Where ICONIP
Authors Matthieu Geist, Olivier Pietquin, Gabriel Fricout
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