Q-SupCon:表征学习框架内的量子增强监督对比学习架构

Asitha Kottahachchi Kankanamge Don, Ibrahim Khalil
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引用次数: 0

摘要

在数据隐私法规不断发展的背景下,为稳健的深度分类模型提供大量数据成为一项挑战。由于需要调整的参数众多,这些模型的准确性取决于训练数据的数量。遗憾的是,要获得如此大量的数据具有挑战性,尤其是在医疗应用等领域,这些领域迫切需要稳健的模型来进行早期疾病检测,但却缺乏标注数据。尽管如此,经典的监督对比学习模型通过利用深度编码器模型,在一定限度内显示出了应对这一挑战的潜力。然而,量子机器学习的最新进展使得从极其有限和简单的数据中提取有意义的表征成为可能。因此,在经典或混合量子-经典监督对比模型中替换经典对应模型,能以最少的数据增强特征学习能力。因此,本研究提出了 Q-SupCon 模型,这是一个由量子数据增强电路、量子编码器、量子投影头和量子变量分类器组成的完全量子化的监督对比学习模型,能以最少的标注数据实现高效的图像分类。此外,该新型模型在 MNIST、KMNIST 和 FMNIST 数据集上的测试准确率分别达到了 80%、60% 和 80%,在应对数据稀缺挑战方面取得了重大进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Q-SupCon: Quantum-Enhanced Supervised Contrastive Learning Architecture within the Representation Learning Framework
In the evolving landscape of data privacy regulations, the challenge of providing extensive data for robust deep classification models arises. The accuracy of these models relies on the amount of training data, due to the multitude of parameters that require tuning. Unfortunately, obtaining such ample data proves challenging, particularly in domains like medical applications, where there is a pressing need for robust models for early disease detection but a shortage of labeled data. Nevertheless, the classical supervised contrastive learning models, have shown the potential to address this challenge up to a certain limit, by utilizing deep encoder models. However, recent advancements in quantum machine learning enable the extraction of meaningful representations from extremely limited and simple data. Thus, replacing classical counterparts in classical or hybrid quantum-classical supervised contrastive models enhances feature learning capability with minimal data. Therefore, this work proposes the Q-SupCon model, a fully quantum-powered supervised contrastive learning model comprising a quantum data augmentation circuit, quantum encoder, quantum projection head, and quantum variational classifier, enabling efficient image classification with minimal labeled data. Furthermore, the novel model attains 80%, 60%, and 80% test accuracy on MNIST, KMNIST, and FMNIST datasets, marking a significant advancement in addressing the data scarcity challenge.
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