Feature Reinforcement Learning: Part I. unstructured MDPs
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Hutter, Marcus
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De Gruyter Open
Abstract
General-purpose, intelligent, learning agents cycle through sequences of
observations, actions, and rewards that are complex, uncertain, unknown, and
non-Markovian. On the other hand, reinforcement learning is well-developed
for small finite state Markov decision processes (MDPs). Up to now, extracting
the right state representations out of bare observations, that is, reducing
the general agent setup to the MDP framework, is an art that involves significant
effort by designers. The primary goal of this work is to automate the
reduction process and thereby significantly expand the scope of many existing
reinforcement learning algorithms and the agents that employ them. Before
we can think of mechanizing this search for suitable MDPs, we need a formal
objective criterion. The main contribution of this article is to develop such a
criterion. I also integrate the various parts into one learning algorithm. Extensions
to more realistic dynamic Bayesian networks are developed in Part
II [Hut09c]. The role of POMDPs is also considered there.
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Journal of Artificial General Intelligence
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