Abstract
In recent years, several algorithms which approximate matrix decomposition have been developed. These algorithms are based on metric conservation features for linear spaces of random projection types. We present a new algorithm, which achieves with high probability a rank-r singular value decomposition (SVD) approximation of an n × n matrix and derive an error bound that does not depend on the first r singular values. Although the algorithm has an asymptotic complexity similar to state-of-the-art algorithms and the proven error bound is not as tight as the state-of-the-art bound, experiments show that the proposed algorithm is faster in practice while providing the same error rates as those of the stateof- the-art algorithms. We also show that an i.i.d. sub-Gaussian matrix with large probability of having null entries is metric conserving. This result is used in the SVD approximation algorithm, as well as to improve the performance of a previously proposed approximated LU decomposition algorithm.
Original language | English |
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Pages (from-to) | 445-469 |
Number of pages | 25 |
Journal | Information and Inference |
Volume | 8 |
Issue number | 3 |
DOIs | |
State | Published - 19 Sep 2019 |
Keywords
- Johnson-Lindenstrauss Lemma
- LU decomposition
- Low-rank approximation
- Oblivious subspace embedding
- Random matrices
- SVD
- Sparse matrices
- Sub-Gaussian matrices
All Science Journal Classification (ASJC) codes
- Computational Theory and Mathematics
- Analysis
- Applied Mathematics
- Statistics and Probability
- Numerical Analysis