论文标题

量子学习模型的经典替代物

Classical surrogates for quantum learning models

论文作者

Schreiber, Franz J., Eisert, Jens, Meyer, Johannes Jakob

论文摘要

嘈杂的中间量子计算机的出现使搜索可能的应用程序成为量子信息科学的最前沿。量子机学习是量量量计算机高的一个领域,即通过近期量子计算机的优势,其中讨论了基于参数化量子电路的变异量子学习模型。在这项工作中,我们介绍了经典替代物的概念,一个经典模型可以从训练有素的量子学习模型中有效地获得,并重现其投入输出关系。由于可以从经典上进行推论,因此经典替代物的存在大大提高了量子学习策略的适用性。但是,经典的替代物还挑战了量子方案的可能优势。由于可以直接优化经典替代物的Ansatz,因此它们创建了量子模型必须胜过的天然基准。我们表明,大量的精心设计的重新上传模型具有经典的替代品。我们进行了数值实验,发现这些量子模型在我们分析的问题中没有表现或训练性的优势。这仅将概括能力作为量子优势的可能点,并强调对量子学习模型的感应偏见的可怕需求。

The advent of noisy intermediate-scale quantum computers has put the search for possible applications to the forefront of quantum information science. One area where hopes for an advantage through near-term quantum computers are high is quantum machine learning, where variational quantum learning models based on parametrized quantum circuits are discussed. In this work, we introduce the concept of a classical surrogate, a classical model which can be efficiently obtained from a trained quantum learning model and reproduces its input-output relations. As inference can be performed classically, the existence of a classical surrogate greatly enhances the applicability of a quantum learning strategy. However, the classical surrogate also challenges possible advantages of quantum schemes. As it is possible to directly optimize the ansatz of the classical surrogate, they create a natural benchmark the quantum model has to outperform. We show that large classes of well-analyzed re-uploading models have a classical surrogate. We conducted numerical experiments and found that these quantum models show no advantage in performance or trainability in the problems we analyze. This leaves only generalization capability as possible point of quantum advantage and emphasizes the dire need for a better understanding of inductive biases of quantum learning models.

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