基于多尺度动态卷积特征和距离特征的时间序列分类

Tian Wang, Zhaoying Liu, Ting Zhang, Yujian Li
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引用次数: 1

摘要

时间序列分类是数据挖掘领域中最重要和最具挑战性的问题之一。提出了一种基于多尺度动态卷积特征和距离特征的时间序列分类模型FusionNet。本文的主要贡献包括三个方面:首先,基于多尺度动态卷积运算,提出了一种多尺度动态卷积网络(MSDCNet)。利用多尺度动态卷积对不同输入数据动态调整卷积核,提取时间序列特征。其次,通过计算原型与嵌入向量之间的距离,构建原型网络(PrototypeNet),提取时间序列的距离特征;同时,我们设计了距离损失来保证有效距离特征的计算。最后,将多尺度动态卷积特征与距离特征融合,得到用于分类的融合特征。在44个UCR数据集上的实验结果表明,该模型在多数据集上取得了较好的效果,证明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Classification Based on Multi-scale Dynamic Convolutional Features and Distance Features
Time series classification is one of the most important and challenging problems in the field of data mining. This paper presents a time series classification model named FusionNet, which is based on multi-scale dynamic convolutional features and distance features. The main contribution of this paper includes three aspects: firstly, based on the multi-scale dynamic convolution operation, we propose a Multi-Scale Dynamic Convolution Network (MSDCNet). It uses multi-scale dynamic convolution to dynamically adjust the convolutional kernels for different input data and extract the features of time series. Secondly, by calculating the distance between the prototypes and the embedding vectors, we construct a Prototype Network (PrototypeNet) to extract the distance features of time series. At the same time, we design a distance loss to ensure to calculate the effective distance features. Finally, we fuse the multi-scale dynamic convolution features with the distance features to obtain the fusing features for classification. Experimental results on 44 UCR datasets show that the proposed FusionNet achieves better results on multiple datasets than the previous model, demonstrating its effectiveness.
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