Please use this identifier to cite or link to this item:
https://doi.org/10.1214/15-AOS1423
Title: | Influential features PCA for high dimensional clustering | Authors: | Jin, J Wang, W |
Keywords: | stat.ME stat.ME math.ST stat.TH Primary 62H30, 62G32, secondary 62E20, 62P10 |
Issue Date: | 1-Dec-2016 | Publisher: | Institute of Mathematical Statistics | Citation: | Jin, J, Wang, W (2016-12-01). Influential features PCA for high dimensional clustering. Annals of Statistics 44 (6) : 2323-2359. ScholarBank@NUS Repository. https://doi.org/10.1214/15-AOS1423 | Abstract: | We consider a clustering problem where we observe feature vectors Xi ∈ Rp, i = 1, 2,⋯, n, from K possible classes. The class labels are unknown and the main interest is to estimate them. We are primarily interested in the modern regime of p ≫ n, where classical clustering methods face challenges. We propose Influential Features PCA (IF-PCA) as a new clustering procedure. In IF-PCA, we select a small fraction of features with the largest Kolmogorov-Smirnov (KS) scores, obtain the first (K - 1) left singular vectors of the post-selection normalized data matrix, and then estimate the labels by applying the classical k-means procedure to these singular vectors. In this procedure, the only tuning parameter is the threshold in the feature selection step. We set the threshold in a data-driven fashion by adapting the recent notion of Higher Criticism. As a result, IF-PCA is a tuning-free clustering method. We apply IF-PCA to 10 gene microarray data sets. The method has competitive performance in clustering. Especially, in three of the data sets, the error rates of IF-PCA are only 29% or less of the error rates by other methods. We have also rediscovered a phenomenon on empirical null by Efron [J. Amer. Statist. Assoc. 99 (2004) 96-104] on microarray data. With delicate analysis, especially post-selection eigen-analysis, we derive tight probability bounds on the Kolmogorov-Smirnov statistics and show that IF-PCA yields clustering consistency in a broad context. The clustering problem is connected to the problems of sparse PCA and low-rank matrix recovery, but it is different in important ways. We reveal an interesting phase transition phenomenon associated with these problems and identify the range of interest for each. | Source Title: | Annals of Statistics | URI: | https://scholarbank.nus.edu.sg/handle/10635/192301 | ISSN: | 00905364 | DOI: | 10.1214/15-AOS1423 |
Appears in Collections: | Staff Publications Elements |
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IF-PCA.pdf | Accepted version | 705.24 kB | Adobe PDF | OPEN | Post-print | View/Download |
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