Learning Mixtures of Sparse Linear Regressions Using Sparse Graph Codes
Abstract
In this paper, we consider the mixture of sparse linear regressions model. Let be unknown sparse parameter vectors with a total of non-zero coefficients. Noisy linear measurements are obtained in the form , each of which is generated randomly from one of the sparse vectors with the label unknown. The goal is to estimate the parameter vectors efficiently with low sample and computational costs. This problem presents significant challenges as one needs to simultaneously solve the demixing problem of recovering the labels as well as the estimation problem of recovering the sparse vectors . Our solution to the problem leverages the connection between modern coding theory and statistical inference. We introduce a new algorithm, Mixed-Coloring, which samples the mixture strategically using query vectors constructed based on ideas from sparse graph codes. Our novel code design allows for both efficient demixing and parameter estimation. In the noiseless setting, for a constant number of sparse parameter vectors, our algorithm achieves the order-optimal sample and time complexities of . In the presence of Gaussian noise, for the problem with two parameter vectors (i.e., ), we show that the Robust Mixed-Coloring algorithm achieves near-optimal sample and time complexities. When for some constant (i.e., is sublinear in ), we can achieve sample and time complexities both sublinear in the ambient dimension. In one of our experiments, to recover a mixture of two regressions with dimension and sparsity , our algorithm is more than times faster than EM algorithm, with about one third of its sample cost.
Cite
@article{arxiv.1703.00641,
title = {Learning Mixtures of Sparse Linear Regressions Using Sparse Graph Codes},
author = {Dong Yin and Ramtin Pedarsani and Yudong Chen and Kannan Ramchandran},
journal= {arXiv preprint arXiv:1703.00641},
year = {2018}
}
Comments
To appear in IEEE Transactions on Information Theory