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Single-Pass PCA of Large High-Dimensional Data. (arXiv:1704.07669v1 [cs.DS])
来源于:arXiv
Principal component analysis (PCA) is a fundamental dimension reduction tool
in statistics and machine learning. For large and high-dimensional data,
computing the PCA (i.e., the singular vectors corresponding to a number of
dominant singular values of the data matrix) becomes a challenging task. In
this work, a single-pass randomized algorithm is proposed to compute PCA with
only one pass over the data. It is suitable for processing extremely large and
high-dimensional data stored in slow memory (hard disk) or the data generated
in a streaming fashion. Experiments with synthetic and real data validate the
algorithm's accuracy, which has orders of magnitude smaller error than an
existing single-pass algorithm. For a set of high-dimensional data stored as a
150 GB file, the proposed algorithm is able to compute the first 50 principal
components in just 24 minutes on a typical 24-core computer, with less than 1
GB memory cost. 查看全文>>