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arxiv: 1909.08381 · v1 · pith:UOR5EJ7O · submitted 2019-09-18 · cs.LG · stat.ML

Laplacian Matrix for Dimensionality Reduction and Clustering

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classification cs.LG stat.ML
keywords laplacianmatrixnodessamplesclusteringrepresentingalgorithmsallows
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Many problems in machine learning can be expressed by means of a graph with nodes representing training samples and edges representing the relationship between samples in terms of similarity, temporal proximity, or label information. Graphs can in turn be represented by matrices. A special example is the Laplacian matrix, which allows us to assign each node a value that varies only little between strongly connected nodes and more between distant nodes. Such an assignment can be used to extract a useful feature representation, find a good embedding of data in a low dimensional space, or perform clustering on the original samples. In these lecture notes we first introduce the Laplacian matrix and then present a small number of algorithms designed around it.

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