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Sublinear quantum algorithms for training linear and kernel-based classifiers

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 نشر من قبل Tongyang Li
 تاريخ النشر 2019
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We investigate quantum algorithms for classification, a fundamental problem in machine learning, with provable guarantees. Given $n$ $d$-dimensional data points, the state-of-the-art (and optimal) classical algorithm for training classifiers with constant margin runs in $tilde{O}(n+d)$ time. We design sublinear quantum algorithms for the same task running in $tilde{O}(sqrt{n} +sqrt{d})$ time, a quadratic improvement in both $n$ and $d$. 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 $n$-dimensional matrix zero-sum games with optimal complexity $tilde{Theta}(sqrt{n})$.

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