会议专题

A Similarity Model Based On Trend For Time Series

  This paper presents a time series similarity matching model based on trend meeting the peoples 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 twodimensional 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.

time series data mining similarity trends linear representation

ShuaiFei Chen Xin Lv Lin Yu YingChi Mao LongBao Wang HongXu Ma

College of Computer and Information Hohai University Nanjing,China

国际会议

The 14th International Symposium on Distributed Computing and Applications to Business,Engineering and Science(DCABES 2015)(第十四届分布式计算及其应用国际学术研讨会)

贵阳

英文

435-438

2015-08-18(万方平台首次上网日期,不代表论文的发表时间)