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arxiv: 1710.09718 · v1 · submitted 2017-10-26 · 💻 cs.LG

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Learning Approximate Stochastic Transition Models

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classification 💻 cs.LG
keywords learningstochasticmodelsstatetransitionadversarialalgorithmapproximate
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We examine the problem of learning mappings from state to state, suitable for use in a model-based reinforcement-learning setting, that simultaneously generalize to novel states and can capture stochastic transitions. We show that currently popular generative adversarial networks struggle to learn these stochastic transition models but a modification to their loss functions results in a powerful learning algorithm for this class of problems.

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