k-Means Clustering Is Matrix Factorization
classification
📊 stat.ML
keywords
matrixclusteringk-meansdatafactorizationapproximationconventionaldifference
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We show that the objective function of conventional k-means clustering can be expressed as the Frobenius norm of the difference of a data matrix and a low rank approximation of that data matrix. In short, we show that k-means clustering is a matrix factorization problem. These notes are meant as a reference and intended to provide a guided tour towards a result that is often mentioned but seldom made explicit in the literature.
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