基于趋势的时间序列相似度模型

Shuaifei Chen, Xin Lv, Lin Yu, Yingchi Mao, Longbao Wang, Hongxu Ma
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引用次数: 0

摘要

本文提出了一种基于趋势的时间序列相似度匹配模型,满足人们对趋势特征相似性的直观感知。同时,为了更直观地显示时间序列的相似性,引入了相似度值的概念。该模型采用基于显著点的时间序列分割算法对原始时间序列进行分割。将时间序列的每一个子片段根据斜率和时间跨度映射到二维向量上,然后对二维向量进行符号化,计算两个时间序列的字符串之间的距离。最后根据提出的相似度计算公式,得到两个时间序列之间的相似度值。实验结果表明,该时间序列相似度匹配模型是良好的。在相似性匹配方面,适用性强,效率高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Similarity Model Based on Trend for Time Series
This paper presents a time series similarity matching model based on trend meeting the people's intuitive sense of trends characterize similarity. At the same time, the concept of similarity value is introduced in order to display the similarity of time series in a more intuitive form. In this model, the original time series are segmented according to the time series segmentation algorithm based on significant points. Each sub-section of the time series are mapped to a two-dimensional vector according to the slope and time span, and then symbolic the two-dimensional vector and calculate the distance between two time series of strings. Finally according to similarity calculation formula proposed, obtain the similarity value between the two time series. Experimental results show that the time series similarity matching model is good. In the aspect of similarity matching, the applicability, high efficiency.
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