Time Series K-Nearest Neighbors Classifier Based on Fast Dynamic Time Warping

Jinghui Wang, Yuanchao Zhao
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引用次数: 1

Abstract

In the paper, a new Time Series classifier, which based on K-Nearest Neighbors (KNN) and Fast Dynamic Time Warping (FDTW), is presented. Fast dynamic time warping is particularly suitable for suitable for detecting signal similarity, which has an important character when we want to classify time series. K-Nearest Neighbors, which be used to slove regress and classify tasks, is a famous machine learning method. In this paper, we used FDTW as Features, and KNN as classifier. The algorithm forms a cluster, then comparing the characteristics of the signals to be classified. The time series of UCR was used in the experiment. By comparing classification results of fast dynamic time warping and neural networks, we can prove that the method is feasible, to a certain extent, improve the accuracy of signal classification.
基于快速动态时间翘曲的时间序列k近邻分类器
本文提出了一种新的基于k近邻和快速动态时间翘曲的时间序列分类器。快速动态时间翘曲尤其适用于信号相似度的检测,这对时间序列的分类具有重要的意义。k近邻算法是一种著名的机器学习方法,用于解决回归和分类任务。本文采用FDTW作为特征,KNN作为分类器。该算法先形成一个聚类,然后比较待分类信号的特征。实验采用UCR的时间序列。通过对比快速动态时间翘曲和神经网络的分类结果,可以证明该方法是可行的,在一定程度上提高了信号分类的准确率。
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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