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Statistics / Statistical classification / Robust statistics / Machine learning / K-nearest neighbors algorithm / Outlier / Nonparametric statistics / Naive Bayes classifier / Linear regression / Book:Machine Learning  The Complete Guide / Predictive analytics
Date: 2014-06-10 14:21:32
Statistics
Statistical classification
Robust statistics
Machine learning
K-nearest neighbors algorithm
Outlier
Nonparametric statistics
Naive Bayes classifier
Linear regression
Book:Machine Learning The Complete Guide
Predictive analytics

logistic regression decision trees pre-pruning global contextual

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