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Econometrics / Statistical classification / Supervised learning / Generalization error / Regularization / VC dimension / Linear regression / Errors and residuals in statistics / Statistics / Machine learning / Regression analysis
Date: 2014-07-09 00:45:51
Econometrics
Statistical classification
Supervised learning
Generalization error
Regularization
VC dimension
Linear regression
Errors and residuals in statistics
Statistics
Machine learning
Regression analysis

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