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Machine learning / Artificial intelligence / Learning / Statistical classification / Massive Online Analysis / K-nearest neighbors algorithm / Ensemble learning / Classifier chains / Multi-label classification / Concept drift / Stochastic gradient descent / Naive Bayes classifier
Date: 2015-08-21 10:06:56
Machine learning
Artificial intelligence
Learning
Statistical classification
Massive Online Analysis
K-nearest neighbors algorithm
Ensemble learning
Classifier chains
Multi-label classification
Concept drift
Stochastic gradient descent
Naive Bayes classifier

Data Stream Classification using Random Feature Functions and Novel Method Combinations Jesse Read Albert Bifet

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