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Approximate spectral clustering with eigenvector selection and self-tuned kk

Abstract

The recently emerged spectral clustering surpasses conventional clustering methods by detecting clusters of any shape without the convexity assumption. Unfortunately, with a computational complexity of O(n3)O(n^3), it was infeasible for multiple real applications, where nn could be large. This stimulates researchers to propose the approximate spectral clustering (ASC). However, most of ASC methods assumed that the number of clusters kk was known. In practice, manual setting of kk could be subjective or time consuming. The proposed algorithm has two relevance metrics for estimating kk in two vital steps of ASC. One for selecting the eigenvectors spanning the embedding space, and the other to discover the number of clusters in that space. The algorithm used a growing neural gas (GNG) approximation, GNG is superior in preserving input data topology. The experimental setup demonstrates the efficiency of the proposed algorithm and its ability to compete with similar methods where kk was set manually.

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