监督学习中的量子优势与量子计算优势之间的关系

Jordi Pérez-Guijarro;Alba Pagés-Zamora;Javier R. Fonollosa
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引用次数: 0

摘要

机器学习的广泛应用提出了一个问题:与量子计算优势相比,监督学习是否具有量子优势?事实上,最近的一项研究表明,计算优势和学习优势在一般情况下并不等同,也就是说,训练集提供的额外信息可以降低某些问题的难度。本文将研究在哪些条件下,计算优势和学习优势是等价的,或者至少是高度相关的。本文通过考虑学习加速的两种定义来分析这种关系:一种与分布相关,另一种与分布无关。在这两种情况下,生成训练集的高效算法的存在都是这些条件的基石,尽管对于与分布无关的定义,还必须满足额外的温和条件。最后,这些结果被应用于证明某些基于素数因式分解问题的学习任务存在量子提速,前提是该问题的经典难解性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relation Between Quantum Advantage in Supervised Learning and Quantum Computational Advantage
The widespread use of machine learning has raised the question of quantum supremacy for supervised learning as compared to quantum computational advantage. In fact, a recent work shows that computational and learning advantages are, in general, not equivalent, i.e., the additional information provided by a training set can reduce the hardness of some problems. This article investigates under which conditions they are found to be equivalent or, at least, highly related. This relation is analyzed by considering two definitions of learning speed-up: one tied to the distribution and another that is distribution-independent. In both cases, the existence of efficient algorithms to generate training sets emerges as the cornerstone of such conditions, although, for the distribution-independent definition, additional mild conditions must also be met. Finally, these results are applied to prove that there is a quantum speed-up for some learning tasks based on the prime factorization problem, assuming the classical intractability of this problem.
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