论文标题

通过预测的纠缠对面的监督学习

Supervised Learning with Projected Entangled Pair States

论文作者

Cheng, Song, Wang, Lei, Zhang, Pan

论文摘要

来自量子物理学的模型Tensor Networks近年来已在机器学习中逐渐推广为有效的模型。但是,为了获得确切的收缩,仅考虑了类似树状的张量网络,例如矩阵产品状态和树张量网络,即使用于建模二维数据(例如图像)。在这项工作中,我们使用投影的纠缠对状态(PEPS)为图像构建了监督的学习模型,这是一个在自然图像之前具有相似结构的二维张量网络。我们的方法首先执行特征图,该特征图将图像数据转换为网格上的产品状态,然后将产品状态签给具有可训练参数的PEPS以预测图像标签。 PEPS的张量元素是通过最大程度地减少训练标签和预测标签之间的差异来训练的。使用MNIST和Fashion-Mnist数据集对图像分类进行评估。我们表明,使用树状张量网络,我们的模型大于现有模型。此外,使用相同的输入功能,我们的方法和多层perceptron分类器都可以执行,但参数较少,并且更稳定。我们的结果阐明了机器学习中二维张量网络模型的潜在应用。

Tensor networks, a model that originated from quantum physics, has been gradually generalized as efficient models in machine learning in recent years. However, in order to achieve exact contraction, only tree-like tensor networks such as the matrix product states and tree tensor networks have been considered, even for modeling two-dimensional data such as images. In this work, we construct supervised learning models for images using the projected entangled pair states (PEPS), a two-dimensional tensor network having a similar structure prior to natural images. Our approach first performs a feature map, which transforms the image data to a product state on a grid, then contracts the product state to a PEPS with trainable parameters to predict image labels. The tensor elements of PEPS are trained by minimizing differences between training labels and predicted labels. The proposed model is evaluated on image classifications using the MNIST and the Fashion-MNIST datasets. We show that our model is significantly superior to existing models using tree-like tensor networks. Moreover, using the same input features, our method performs as well as the multilayer perceptron classifier, but with much fewer parameters and is more stable. Our results shed light on potential applications of two-dimensional tensor network models in machine learning.

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