Machine Learning and Data Mining Lecture Notes
Lecture Notes CSC 411/D11 Computer Science Department University of Toronto Version: February 6, 2012 ... 5 Basic Probability Theory 21 ... when fitting a curve to noisy data, it is common to measure the q uality of the fit in terms of
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