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Stable Sparse Subspace Embedding for Dimensionality Reduction

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arxiv 2002.02844 v1 pith:UHHWOUV2 submitted 2020-02-07 cs.LG stat.ML

Stable Sparse Subspace Embedding for Dimensionality Reduction

classification cs.LG stat.ML
keywords reductionsparsematrixsamplingdimensiondimensionalityexistingnon-zeros
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sparse random projection (RP) is a popular tool for dimensionality reduction that shows promising performance with low computational complexity. However, in the existing sparse RP matrices, the positions of non-zero entries are usually randomly selected. Although they adopt uniform sampling with replacement, due to large sampling variance, the number of non-zeros is uneven among rows of the projection matrix which is generated in one trial, and more data information may be lost after dimension reduction. To break this bottleneck, based on random sampling without replacement in statistics, this paper builds a stable sparse subspace embedded matrix (S-SSE), in which non-zeros are uniformly distributed. It is proved that the S-SSE is stabler than the existing matrix, and it can maintain Euclidean distance between points well after dimension reduction. Our empirical studies corroborate our theoretical findings and demonstrate that our approach can indeed achieve satisfactory performance.

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