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arxiv: 1904.12369 · v1 · submitted 2019-04-28 · 📊 stat.ML · cs.LG· stat.ME

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Low-Rank Principal Eigenmatrix Analysis

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classification 📊 stat.ML cs.LGstat.ME
keywords analysislow-rankmatricizedmethodappropriatelydataeigenmatrixmatrix
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Sparse PCA is a widely used technique for high-dimensional data analysis. In this paper, we propose a new method called low-rank principal eigenmatrix analysis. Different from sparse PCA, the dominant eigenvectors are allowed to be dense but are assumed to have a low-rank structure when matricized appropriately. Such a structure arises naturally in several practical cases: Indeed the top eigenvector of a circulant matrix, when matricized appropriately is a rank-1 matrix. We propose a matricized rank-truncated power method that could be efficiently implemented and establish its computational and statistical properties. Extensive experiments on several synthetic data sets demonstrate the competitive empirical performance of our method.

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