Quantization and application of low-rank tensor decomposition based on the deep learning model.

Jia Zhao
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引用次数: 0

Abstract

Watching the presentation of a large-scale network is very important for network state tracking, performance optimization, traffic engineering, anomaly detection, fault analysis, etc. In this paper, we try to develop deep learning technology to solve the defect problem of tensor filling based on inner product interaction. To solve the limitations of the existing tensor-filling algorithms, a new neural tensor-filling (NTC) model is proposed. NTC model can effectively type the third-order communication between data landscapes through outer creation operation. It creates the third-order interaction mapping tensor. On this basis, the interaction between local features of the 3D neural network is studied. In this paper, another fusion neural tensor filling (Fu NTC) model is proposed to solve the problem that the NTC model can only extract the nonlinear complex structural information between potential feature dimensions. In the framework of the neural network, the NTC model and tensor decomposition model share the same potential feature embedding. It can effectively extract nonlinear feature information and linear feature information at the same time. It achieves higher precision data recovery.
基于深度学习模型的低秩张量分解的量化及应用。
观看大规模网络的呈现对于网络状态跟踪、性能优化、流量工程、异常检测、故障分析等都是非常重要的。在本文中,我们尝试开发深度学习技术来解决基于内积交互的张量填充缺陷问题。为了解决现有张量填充算法的局限性,提出了一种新的神经张量填充(NTC)模型。NTC模型可以通过外部创建操作有效地实现数据景观之间的三阶通信。它产生了三阶相互作用映射张量。在此基础上,研究了三维神经网络局部特征之间的相互作用。本文提出了另一种融合神经张量填充(Fu NTC)模型,解决了NTC模型只能提取潜在特征维之间的非线性复杂结构信息的问题。在神经网络框架中,NTC模型和张量分解模型具有相同的潜在特征嵌入。它可以有效地同时提取非线性特征信息和线性特征信息。实现了更高的数据恢复精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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