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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 nn dd-dimensional data points, the state-of-the-art (and optimal) classical algorithm for training classifiers with constant margin runs in O~(n+d)\tilde{O}(n+d) time. We design sublinear quantum algorithms for the same task running in O~(n+d)\tilde{O}(\sqrt{n} +\sqrt{d}) time, a quadratic improvement in both nn and dd. 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 nn-dimensional matrix zero-sum games with optimal complexity Θ~(n)\tilde{\Theta}(\sqrt{n}).

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