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Stochastic control / Partially observable Markov decision process / Markov decision process / Automated planning and scheduling / Bayesian network / FO / S0 / Finite-state machine / Macro / Statistics / Dynamic programming / Markov processes
Date: 2013-08-29 10:13:42
Stochastic control
Partially observable Markov decision process
Markov decision process
Automated planning and scheduling
Bayesian network
FO
S0
Finite-state machine
Macro
Statistics
Dynamic programming
Markov processes

Exploiting Fully Observable and Deterministic Structures in Goal POMDPs

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