Scale-Invariant Sparse PCA on High-Dimensional Meta-Elliptical Data
We propose a semiparametric method for conducting scale-invariant sparse principal component analysis (PCA) on high-dimensional non-Gaussian data. Compared with sparse PCA, our method has a weaker modeling assumption and is more robust to possible data contamination. Theoretically, the proposed method achieves a parametric rate of convergence in estimating the parameter of interests under a flexible semiparametric distribution family; computationally, the proposed method exploits a rank-based procedure and is as efficient as sparse PCA; empirically, our method outperforms most competing methods on both synthetic and real-world datasets.
Year of publication: |
2014
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Authors: | Han, Fang ; Liu, Han |
Published in: |
Journal of the American Statistical Association. - Taylor & Francis Journals, ISSN 0162-1459. - Vol. 109.2014, 505, p. 275-287
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Publisher: |
Taylor & Francis Journals |
Saved in:
Saved in favorites
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