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Method of Time Series Similarity Measurement Based on Dynamic Time Warping

机译:动态时间规整的时间序列相似度测量方法

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摘要

With the rapid development of mobile communication all over the world, the similarity of mobile phone communication data has received widely attention due to its advantage for the construction of smart cities. Mobile phone communication data can be regarded as a type of time series and dynamic time warping (DTW) and derivative dynamic time warping (DDTW) are usually used to analyze the similarity of these data. However, many traditional methods only calculate the distance between time series while neglecting the shape characteristics of time series. In this paper, a novel hybrid method based on the combination of dynamic time warping and derivative dynamic time warping is proposed. The new method considers not only the distance between time series, but also the shape characteristics of time series. We demonstrated that our method can outperform DTW and DDTW through extensive experiments with respect to cophenetic correlation.
机译:随着世界范围内移动通信的飞速发展,手机通信数据的相似性由于其在智慧城市建设中的优势而受到广泛关注。手机通信数据可以看作是时间序列的一种类型,动态时间规整(DTW)和派生动态时间规整(DDTW)通常用于分析这些数据的相似性。但是,许多传统方法只计算时间序列之间的距离,而忽略了时间序列的形状特征。提出了一种基于动态时间规整与导数动态时间规整相结合的混合方法。新方法不仅考虑时间序列之间的距离,而且考虑时间序列的形状特征。我们证明了我们的方法可以通过广泛的关于共形相关性的实验胜过DTW和DDTW。

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