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Estimation theory / Econometrics / Data analysis / Resampling / Linear regression / Supervised learning / Bootstrapping / Generalization error / Estimator / Statistics / Statistical inference / Regression analysis
Date: 2013-03-21 09:35:36
Estimation theory
Econometrics
Data analysis
Resampling
Linear regression
Supervised learning
Bootstrapping
Generalization error
Estimator
Statistics
Statistical inference
Regression analysis

Handbook Statistical foundations of machine learning Gianluca Bontempi

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Source URL: www.ulb.ac.be

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