SIMILARITY ANALYSIS OF TIME SERIES DATA BY WISAM

Takakazu Mori, T. Misawa
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Abstract

This article focuses on a new characteristic quantity, "similarity distance", which is defined for a pair of time series data and reflects similarity between them. This characteristic quantity is defined with the help of a smooth approximating function, which is obtained by "WISAM (Wavelet Interpolation Method with Simulated Annealing)" developed by Mori (1999) and Mori and Misawa (2001). Afterwards, as an illustrated example of the usage of similarity distance together with WISAM, the classifications and similarity of the annual GDP data for ten regions in Japan are investigated.
基于wisam的时间序列数据相似性分析
本文重点研究了一个新的特征量“相似距离”,它是对时间序列数据进行定义,用来反映它们之间的相似度。该特征量通过平滑逼近函数定义,该函数由Mori(1999)和Mori and Misawa(2001)开发的“WISAM(小波插值方法与模拟退火)”获得。随后,以日本10个地区年度GDP数据的分类和相似性为例,研究了相似距离与WISAM方法的结合。
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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