Time Series Clustering Based on Dynamic Time Warping

Weizeng Wang, Gaofan Lyu, Yuliang Shi, Xun Liang
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引用次数: 19

Abstract

In general, solving prediction problems requires a series of operations for the data set such as preprocessing, partitioning, and structuring features, so as to fit a better prediction model. For time series data, it is divided into different data sets according to certain rules to achieve the effect of improving the accuracy of the prediction model. This paper proposes a more novel clustering method which the traditional Euclidean distance and dynamic time planning are separately weighted and combined to do the distance calculation method in clustering. A time series contains both a time dimension and a spatial dimension. Euclidean distance is mainly used for spatial distance calculation. Dynamic time warping can calculate the similarity calculation in time dimension, similar to the distance calculation in the spatial dimension. The measure of similarity of time series is a measure of the degree of similarity between two time series. It is verified by experiments that under the same prediction model, this novel clustering method is better than the Euclidean distance clustering method and the traditional dynamic time warping method.
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基于动态时间翘曲的时间序列聚类
一般来说,解决预测问题需要对数据集进行预处理、划分、构造特征等一系列操作,从而拟合出更好的预测模型。对于时间序列数据,按照一定的规则将其划分为不同的数据集,以达到提高预测模型精度的效果。本文提出了一种新颖的聚类方法,将传统的欧氏距离和动态时间规划分别加权并结合起来进行聚类中的距离计算方法。时间序列包含时间维度和空间维度。欧几里得距离主要用于空间距离计算。动态时间翘曲可以计算时间维度上的相似度计算,类似于空间维度上的距离计算。时间序列的相似性度量是对两个时间序列之间相似程度的度量。实验证明,在相同的预测模型下,该聚类方法优于欧氏距离聚类方法和传统的动态时间规整方法。
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