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Applied mathematics / Statistics / Numerical analysis / Computational statistics / Machine learning / Cybernetics / Apprenticeship learning / Reinforcement learning / Artificial neural network / Mathematical optimization / Loss function / Sine
Date: 2016-07-20 01:41:08
Applied mathematics
Statistics
Numerical analysis
Computational statistics
Machine learning
Cybernetics
Apprenticeship learning
Reinforcement learning
Artificial neural network
Mathematical optimization
Loss function
Sine

Model-Free Imitation Learning with Policy Optimization Jonathan Ho Jayesh K. Gupta Stefano Ermon Stanford University

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