一般化
量子
计算机科学
卷积神经网络
量子计算机
参数化复杂度
量子电路
量子门
人工神经网络
量子机器学习
量子算法
多项式的
集合(抽象数据类型)
算法
人工智能
数学
量子纠错
量子力学
物理
数学分析
程序设计语言
作者
C. Matthias,Hsin-Yuan Huang,M. Cerezo,Kunal Sharma,Andrew Sornborger,Łukasz Cincio,Patrick J. Coles
出处
期刊:Texas Medical Center - DigtalCommons @ Texas Medical Center Library
日期:2021-11-09
被引量:11
标识
DOI:10.48550/arxiv.2111.05292
摘要
Modern quantum machine learning (QML) methods involve variationally optimizing a parameterized quantum circuit on a training data set, and subsequently making predictions on a testing data set (i.e., generalizing). In this work, we provide a comprehensive study of generalization performance in QML after training on a limited number $N$ of training data points. We show that the generalization error of a quantum machine learning model with $T$ trainable gates scales at worst as $\sqrt{T/N}$. When only $K \ll T$ gates have undergone substantial change in the optimization process, we prove that the generalization error improves to $\sqrt{K / N}$. Our results imply that the compiling of unitaries into a polynomial number of native gates, a crucial application for the quantum computing industry that typically uses exponential-size training data, can be sped up significantly. We also show that classification of quantum states across a phase transition with a quantum convolutional neural network requires only a very small training data set. Other potential applications include learning quantum error correcting codes or quantum dynamical simulation. Our work injects new hope into the field of QML, as good generalization is guaranteed from few training data.
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