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Data mining / Statistics / Computational statistics / Software / Machine learning / Massive Online Analysis / Cluster analysis / Formal sciences / Data stream mining / K-means clustering / Concept drift / Weka
Date: 2014-11-07 23:43:25
Data mining
Statistics
Computational statistics
Software
Machine learning
Massive Online Analysis
Cluster analysis
Formal sciences
Data stream mining
K-means clustering
Concept drift
Weka

MOA: Massive Online Analysis, a Framework for Stream Classification and Clustering. Albert Bifet1 , Geoff Holmes1 , Bernhard Pfahringer1 , Philipp Kranen2 , Hardy Kremer2 , Timm Jansen2 , and Thomas Seidl2 1

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Source URL: moa.cs.waikato.ac.nz

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