Asaoka Hinako, Kudo Kazue
Department of Computer Science, Ochanomizu University, Tokyo, 112-8610, Japan.
Graduate School of Information Sciences, Tohoku University, Sendai, 980-8579, Japan.
Sci Rep. 2023 Oct 2;13(1):16527. doi: 10.1038/s41598-023-43729-z.
Classical computing has borne witness to the development of machine learning. The integration of quantum technology into this mix will lead to unimaginable benefits and be regarded as a giant leap forward in mankind's ability to compute. Demonstrating the benefits of this integration now becomes essential. With the advance of quantum computing, several machine-learning techniques have been proposed that use quantum annealing. In this study, we implement a matrix factorization method using quantum annealing for image classification and compare the performance with traditional machine-learning methods. Nonnegative/binary matrix factorization (NBMF) was originally introduced as a generative model, and we propose a multiclass classification model as an application. We extract the features of handwritten digit images using NBMF and apply them to solve the classification problem. Our findings show that when the amount of data, features, and epochs is small, the accuracy of models trained by NBMF is superior to classical machine-learning methods, such as neural networks. Moreover, we found that training models using a quantum annealing solver significantly reduces computation time. Under certain conditions, there is a benefit to using quantum annealing technology with machine learning.
经典计算见证了机器学习的发展。将量子技术融入其中将带来难以想象的好处,并被视为人类计算能力的巨大飞跃。现在证明这种融合的好处变得至关重要。随着量子计算的发展,已经提出了几种使用量子退火的机器学习技术。在本研究中,我们实现了一种使用量子退火的矩阵分解方法用于图像分类,并将其性能与传统机器学习方法进行比较。非负/二进制矩阵分解(NBMF)最初作为一种生成模型被引入,我们提出了一种多类分类模型作为应用。我们使用NBMF提取手写数字图像的特征,并将其应用于解决分类问题。我们的研究结果表明,当数据量、特征数量和轮次较少时,由NBMF训练的模型的准确率优于经典机器学习方法,如神经网络。此外,我们发现使用量子退火求解器训练模型可显著减少计算时间。在某些条件下,将量子退火技术与机器学习结合使用是有益的。