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Statistical theory / Estimation theory / Bayesian inference / Econometrics / Bayes estimator / Loss function / Supervised learning / Dirac delta function / Symbol / Mathematical analysis / Statistics / Decision theory
Date: 2014-07-07 18:19:37
Statistical theory
Estimation theory
Bayesian inference
Econometrics
Bayes estimator
Loss function
Supervised learning
Dirac delta function
Symbol
Mathematical analysis
Statistics
Decision theory

Journal of Machine Learning Research[removed] Submitted 4/00; Published[removed]Bipartite ranking: risk, optimality, and equivalences Aditya Krishna Menon

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