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Control theory / Operations research / Mathematics / Dynamic programming / Optimal control / Bellman equation / Algorithm / Reinforcement learning / Mathematical optimization / Equations / Systems theory
Date: 2013-09-20 04:05:56
Control theory
Operations research
Mathematics
Dynamic programming
Optimal control
Bellman equation
Algorithm
Reinforcement learning
Mathematical optimization
Equations
Systems theory

SVERIGES RIKSBANK WORKING PAPER SERIES 276 Approximate dynamic

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