资源论文Adaptive Clustering through Semidefinite Programming

Adaptive Clustering through Semidefinite Programming

2020-02-10 | |  66 |   49 |   0

Abstract

 We analyze the clustering problem through a flexible probabilistic model that aims to identify an optimal partition on the sample X1 , ..., Xn . We perform exact clustering with high probability using a convex semidefinite estimator that interprets as a corrected, relaxed version of K-means. The estimator is analyzed through a non-asymptotic framework and showed to be optimal or near-optimal in recovering the partition. Furthermore, its performances are shown to be adaptive to the problem’s effective dimension, as well as to K the unknown number of groups in this partition. We illustrate the method’s performances in comparison to other classical clustering algorithms with numerical experiments on simulated high-dimensional data.

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