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Neural networks / Supervised learning / Perceptron / Support vector machine / Linear classifier / Logistic regression / K-nearest neighbor algorithm / Kernel trick / Maximum likelihood / Statistics / Machine learning / Statistical classification
Date: 2014-09-24 16:08:40
Neural networks
Supervised learning
Perceptron
Support vector machine
Linear classifier
Logistic regression
K-nearest neighbor algorithm
Kernel trick
Maximum likelihood
Statistics
Machine learning
Statistical classification

A Course in Machine Learning Hal Daumé III C ODE

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