Quantized Tensor Neural Network

Author:

Gao Yuan1,Yang Laurence T.2,Zheng Dehua1,Yang Jing1,Zhao Yaliang3

Affiliation:

1. School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan, China

2. School of Computer Science and Technology, Huazhong University of Science and Technology and Department of Computer Science, St. Francis Xavier University, Antigonish, NS, Canada

3. Henan Key Laboratory of Big Data Analysis and Processing, School of Computer and Information Engineering, Henan University and with Department of Computer Science, St. Francis Xavier University, Antigonish, NS, Canada

Abstract

Tensor network as an effective computing framework for efficient processing and analysis of high-dimensional data has been successfully applied in many fields. However, the performance of traditional tensor networks still cannot match the strong fitting ability of neural networks, so some data processing algorithms based on tensor networks cannot achieve the same excellent performance as deep learning models. To further improve the learning ability of tensor network, we propose a quantized tensor neural network in this article (QTNN), which integrates the advantages of neural networks and tensor networks, namely, the powerful learning ability of neural networks and the simplicity of tensor networks. The QTNN model can be further regarded as a generalized multilayer nonlinear tensor network, which can efficiently extract low-dimensional features of the data while maintaining the original structure information. In addition, to more effectively represent the local information of data, we introduce multiple convolution layers in QTNN to extract the local features. We also develop a high-order back-propagation algorithm for training the parameters of QTNN. We conducted classification experiments on multiple representative datasets to further evaluate the performance of proposed models, and the experimental results show that QTNN is simpler and more efficient while compared to the classic deep learning models.

Funder

National Natural Science Foundation of China

Henan Key Research and Development and Promotion Project

State Scholarship Fund of China

Publisher

Association for Computing Machinery (ACM)

Subject

General Materials Science

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