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Compressed sensing / Linear regression / Elastic net regularization / Least squares / Supervised learning / Logistic regression / Machine learning / Lasso / JPEG / Statistics / Regression analysis / Regularization
Date: 2010-05-20 16:34:36
Compressed sensing
Linear regression
Elastic net regularization
Least squares
Supervised learning
Logistic regression
Machine learning
Lasso
JPEG
Statistics
Regression analysis
Regularization

Learning Compressible Models Yi Zhang∗ Jeff Schneider† Abstract

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