Sublinear quantum algorithms for training linear and kernel-based classifiers
Abstract
We investigate quantum algorithms for classification, a fundamental problem in machine learning, with provable guarantees. Given -dimensional data points, the state-of-the-art (and optimal) classical algorithm for training classifiers with constant margin runs in time. We design sublinear quantum algorithms for the same task running in time, a quadratic improvement in both and . Moreover, our algorithms use the standard quantization of the classical input and generate the same classical output, suggesting minimal overheads when used as subroutines for end-to-end applications. We also demonstrate a tight lower bound (up to poly-log factors) and discuss the possibility of implementation on near-term quantum machines. As a side result, we also give sublinear quantum algorithms for approximating the equilibria of -dimensional matrix zero-sum games with optimal complexity .
Cite
@article{arxiv.1904.02276,
title = {Sublinear quantum algorithms for training linear and kernel-based classifiers},
author = {Tongyang Li and Shouvanik Chakrabarti and Xiaodi Wu},
journal= {arXiv preprint arXiv:1904.02276},
year = {2019}
}
Comments
31 pages, 1 figure