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Mathematical optimization / Dimension reduction / Machine learning / Regularization / Linear regression / Least squares / Compressed sensing / Multivariate normal distribution / Chemometrics / Statistics / Regression analysis / Econometrics
Date: 2011-01-19 11:34:58
Mathematical optimization
Dimension reduction
Machine learning
Regularization
Linear regression
Least squares
Compressed sensing
Multivariate normal distribution
Chemometrics
Statistics
Regression analysis
Econometrics

MATH 6267 SYLLABUS Spring 2011 Course Number: Math 6267

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