Leverage Score Sampling for Faster Accelerated Regression and ERM

Abstract

Given a matrix $\mathbf{A}\in\R^{n\times d}$ and a vector $b\in\R^{d}$, we show how to compute an $\epsilon$-approximate solution to the regression problem $ \min_{x\in\R^{d}}\frac{1}{2} \norm{\mathbf{A} x-b}_{2}^{2} $ in time $ \widetilde{O} ((n+\sqrt{d\cdot\kappa_{\text{sum}}}) s \log\epsilon^{-1}) $ where $\kappa_{\text{sum}}=\tr\left(\mathbf{A}^{\top}\mathbf{A}\right)/\lambda_{\min}(\mathbf{A}^{\top}\mathbf{A})$ and $s$ is the maximum number of non-zero entries in a row of $\mathbf{A}$. This improves upon the previous best running time of $ \widetilde{O} ((n+\sqrt{n \cdot\kappa_{\text{sum}}}) s \log\epsilon^{-1})$. We achieve our result through an interesting combination of leverage score sampling, proximal point methods, and accelerated coordinate descent methods. Further, we show that our method not only matches the performance of previous methods up to polylogarithmic factors, but further improves whenever leverage scores of rows are small. We also provide a non-linear generalization of these results that improves the running time for solving a broader class of ERM problems and expands the set of ERM problems provably solvable in nearly linear time.

Cite

Text

Agarwal et al. "Leverage Score Sampling for Faster Accelerated Regression and ERM." Proceedings of the 31st International Conference  on Algorithmic Learning Theory, 2020.

Markdown

[Agarwal et al. "Leverage Score Sampling for Faster Accelerated Regression and ERM." Proceedings of the 31st International Conference  on Algorithmic Learning Theory, 2020.](https://mlanthology.org/alt/2020/agarwal2020alt-leverage/)

BibTeX

@inproceedings{agarwal2020alt-leverage,
  title     = {{Leverage Score Sampling for Faster Accelerated Regression and ERM}},
  author    = {Agarwal, Naman and Kakade, Sham and Kidambi, Rahul and Lee, Yin-Tat and Netrapalli, Praneeth and Sidford, Aaron},
  booktitle = {Proceedings of the 31st International Conference  on Algorithmic Learning Theory},
  year      = {2020},
  pages     = {22-47},
  volume    = {117},
  url       = {https://mlanthology.org/alt/2020/agarwal2020alt-leverage/}
}