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Operations research / Numerical analysis / Mathematical optimization / Mathematical analysis / Optimal control / Dynamic programming / Markov decision process / Stochastic control
Date: 2014-11-25 12:45:37
Operations research
Numerical analysis
Mathematical optimization
Mathematical analysis
Optimal control
Dynamic programming
Markov decision process
Stochastic control

approximate-mdps-notes.dvi

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