非等长时间序列分析的深度学习输入模块

Hewei Gao, Xin Huo, Chao Zhu
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引用次数: 1

摘要

深度学习,特别是深度神经网络,在时间序列分类中受到越来越多的关注,最近提出了几种深度学习方法。然而,这些算法大多是针对等长度的时间序列设计的,而在现实问题中经常遇到不等长度的时间序列聚类。提出了一种深度学习的输入模块,将不等长的时间序列转换成经神经网络处理的翘曲矩阵进行训练。根据时间序列的相似度差,采用DTW算法生成轨迹翘曲矩阵。引入高斯模糊迭代算法将任意大小的扭曲矩阵转换为等维。基于CWRU数据集,评估了所提出的输入模块与一些先进的神经网络的有效性。总体而言,分析表明输入模块有助于深度学习对不等长度的时间序列进行准确分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Input Module of Deep Learning for the Analysis of Time Series with Unequal Length
Deep learning, particularly deep neural networks, has received increasing interest in time series classification, and several deep learning methods have been proposed recently. However, most of these algorithms are designed for time series with equal length, while clustering of time series with unequal length is often encountered in real-world problems. This paper proposes an input module of deep learning, transforming time series with unequal length into a warping matrix processed by neural network for training. The trajectory warping matrix is generated by DTW algorithm according to the similarity difference of time series. The Gaussian blur iterative algorithm is introduced to converted from the warping matrix of any size to equal dimension. The effectiveness of the proposed input module combined with some advanced neural networks are assessed based on the CWRU dataset. Overall, the analysis shows that the input module assists the depth learning to classify time series with unequal length accurately.
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