Detecting the Number of Clusters during Expectation-Maximization Clustering Using Information Criterion

Machine Learning and Computing(2010)

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摘要
This paper presents an algorithm to automatically determine the number of clusters in a given input data set, under a mixture of Gaussians assumption. Our algorithm extends the Expectation- Maximization clustering approach by starting with a single cluster assumption for the data, and recursively splitting one of the clusters in order to find a tighter fit. An Information Criterion parameter is used to make a selection between the current and previous model after each split. We build this approach upon prior work done on both the K-Means and Expectation-Maximization algorithms. We also present a novel idea for intelligent cluster splitting which minimizes convergence time and substantially improves accuracy.
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关键词
information criterion parameter,input data,novel idea,maximization clustering approach,recursively splitting,expectation-maximization clustering,convergence time,gaussians assumption,single cluster assumption,intelligent cluster splitting,expectation-maximization algorithm,k means,gaussian processes,machine learning,expectation maximization,unsupervised learning,mixture of gaussians,k means clustering,expectation maximization algorithm,clustering
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