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Date: 2016-03-28 19:05:32Cognitive science Artificial intelligence Automated planning and scheduling Probability Dynamic programming Markov processes Stochastic control Reinforcement learning Markov decision process Motion planning Action selection Prior probability | Proceedings of the Twenty-Fifth International Conference on Automated Planning and Scheduling Goal-Based Action Priors David Abel, D. Ellis Hershkowitz, Gabriel Barth-Maron, Stephen Brawner, Kevin O’Farrell, James MacAdd to Reading ListSource URL: h2r.cs.brown.eduDownload Document from Source WebsiteFile Size: 985,32 KBShare Document on Facebook |
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