Author:
Ciaperoni Martino,Gionis Aristides,Mannila Heikki
Abstract
AbstractWe introduce the Hadamard decomposition problem in the context of data analysis. The problem is to represent exactly or approximately a given matrix as the Hadamard (or element-wise) product of two or more low-rank matrices. The motivation for this problem comes from situations where the input matrix has a multiplicative structure. The Hadamard decomposition has potential for giving more succint but equally accurate representations of matrices when compared with the gold-standard of singular value decomposition (svd). Namely, the Hadamard product of two rank-$$h$$
h
matrices can have rank as high as $${h}^2$$
h
2
. We study the computational properties of the Hadamard decomposition problem and give gradient-based algorithms for solving it approximately. We also introduce a mixed model that combines svd and Hadamard decomposition. We present extensive empirical results comparing the approximation accuracy of the Hadamard decomposition with that of the svd using the same number of basis vectors. The results demonstrate that the Hadamard decomposition is competitive with the svd and, for some datasets, it yields a clearly higher approximation accuracy, indicating the presence of multiplicative structure in the data.
Publisher
Springer Science and Business Media LLC
Reference77 articles.
1. Banerjee S, Roy A (2014) Linear algebra and matrix analysis for statistics. CRC Press, Boca Raton
2. Bernstein D (2018) Scalar, vector, and matrix mathematics: theory, facts, and formulas-revised and expanded edition, Expanded. Princeton University Press, Princeton
3. Breslow NE, Lubin J, Marek P, Langholz B (1983) Multiplicative models and cohort analysis. J Am Stat Assoc 78(381):1–12
4. Bro R, Smilde AK (2014) Principal component analysis. Ana Methods 6(9):2812–2831
5. Brunet J-P, Tamayo P, Golub TR, Mesirov JP (2004) Metagenes and molecular pattern discovery using matrix factorization. Proc Natl Acad Sci 101(12):4164–4169