Learning the Positions in CountSketch
Abstract
We consider sketching algorithms which first compress data by multiplication with a random sketch matrix, and then apply the sketch to quickly solve an optimization problem, e.g., low-rank approximation and regression. In the learning-based sketching paradigm proposed by Indyk et al., the sketch matrix is found by choosing a random sparse matrix, e.g., CountSketch, and then the values of its non-zero entries are updated by running gradient descent on a training data set. Despite the growing body of work on this paradigm, a noticeable omission is that the locations of the non-zero entries of previous algorithms were fixed, and only their values were learned. In this work, we propose the first learning-based algorithms that also optimize the locations of the non-zero entries. Our first proposed algorithm is based on a greedy algorithm. However, one drawback of the greedy algorithm is its slower training time. We fix this issue and propose approaches for learning a sketching matrix for both low-rank approximation and Hessian approximation for second-order optimization. The latter is helpful for a range of constrained optimization problems, such as LASSO and matrix estimation with a nuclear norm constraint. Both approaches achieve good accuracy with a fast running time. Moreover, our experiments suggest that our algorithm can still reduce the error significantly even if we only have a very limited number of training matrices.
Cite
Text
Li et al. "Learning the Positions in CountSketch." International Conference on Learning Representations, 2023.Markdown
[Li et al. "Learning the Positions in CountSketch." International Conference on Learning Representations, 2023.](https://mlanthology.org/iclr/2023/li2023iclr-learning/)BibTeX
@inproceedings{li2023iclr-learning,
title = {{Learning the Positions in CountSketch}},
author = {Li, Yi and Lin, Honghao and Liu, Simin and Vakilian, Ali and Woodruff, David},
booktitle = {International Conference on Learning Representations},
year = {2023},
url = {https://mlanthology.org/iclr/2023/li2023iclr-learning/}
}