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 monte carlo pomdp


Monte Carlo POMDPs

Neural Information Processing Systems

We present a Monte Carlo algorithm for learning to act in partially observable Markov decision processes (POMDPs) with real-valued state and action spaces. Our approach uses importance sampling for representing beliefs, and Monte Carlo approximation for belief propagation. A reinforcement learning algorithm, value iteration, is employed to learn value functions over belief states. Finally, a sample(cid:173) based version of nearest neighbor is used to generalize across states. Initial empirical results suggest that our approach works well in practical applications.


Monte Carlo POMDPs

Neural Information Processing Systems

We present a Monte Carlo algorithm for learning to act in partially observable Markov decision processes (POMDPs) with real-valued state and action spaces. Our approach uses importance sampling for representing beliefs, and Monte Carlo approximation for belief propagation. A reinforcement learning algorithm, value iteration, is employed to learn value functions over belief states. Finally, a samplebased versionof nearest neighbor is used to generalize across states. Initial empirical results suggest that our approach works well in practical applications.