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arxiv: 1301.0567 · v1 · pith:ZGEYL3EKnew · submitted 2012-12-12 · 💻 cs.LG · cs.AI

The Thing That We Tried Didn't Work Very Well : Deictic Representation in Reinforcement Learning

classification 💻 cs.LG cs.AI
keywords deicticlearningrepresentationrepresentationsmethodspropositionalreinforcementactually
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Most reinforcement learning methods operate on propositional representations of the world state. Such representations are often intractably large and generalize poorly. Using a deictic representation is believed to be a viable alternative: they promise generalization while allowing the use of existing reinforcement-learning methods. Yet, there are few experiments on learning with deictic representations reported in the literature. In this paper we explore the effectiveness of two forms of deictic representation and a na\"{i}ve propositional representation in a simple blocks-world domain. We find, empirically, that the deictic representations actually worsen learning performance. We conclude with a discussion of possible causes of these results and strategies for more effective learning in domains with objects.

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