Introduction to Machine Learning
by Amnon Shashua
Publisher: arXiv 2009
Number of pages: 109
Description:
Introduction to Machine learning covering Statistical Inference (Bayes, EM, ML/MaxEnt duality), algebraic and spectral methods (PCA, LDA, CCA, Clustering), and PAC learning (the Formal model, VC dimension, Double Sampling theorem).
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