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Operations research / Markov decision process / Robust optimization / Dynamic programming / Variance / Interior point method / Determining the number of clusters in a data set / Statistics / Mathematical optimization / Mathematical sciences
Date: 2012-06-07 13:20:18
Operations research
Markov decision process
Robust optimization
Dynamic programming
Variance
Interior point method
Determining the number of clusters in a data set
Statistics
Mathematical optimization
Mathematical sciences

Policy Gradients with Variance Related Risk Criteria

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