Extending the Gaussian membership function for finding similarity between temporal patterns

Shadi A. Aljawarneh, V. Radhakrishna, Aravind Cheruvu
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引用次数: 58

Abstract

In this paper, the basic Gaussian membership function is extended to design the dissimilarity measure. We extend the dissimilarity measure proposed in the G-spamine by applying normal distribution. The dissimilarity measure proposed in this paper is designed by using the concept of standard normal distribution. For a pattern to be similar, the dissimilarity between reference and the temporal pattern has to be less than or equal to the dissimilarity constraint. This dissimilarity constraint is obtained by transforming the user threshold value to z-space. The dissimilarity measure has also been extended to compute the distance bounds by devising necessary expressions. These distance bounds can be used to prune the invalid temporal associations. The algorithm to obtain the similar temporal associations is outlined.
扩展高斯隶属函数用于寻找时间模式之间的相似性
本文将基本高斯隶属函数扩展到设计不相似度量。我们应用正态分布扩展了G-spamine中提出的不相似测度。本文采用标准正态分布的概念设计了不相似度测度。要使模式相似,引用模式和时间模式之间的不相似度必须小于或等于不相似约束。这种不相似性约束是通过将用户阈值转换到z空间来获得的。通过设计必要的表达式,将不相似度度量扩展到计算距离界限。这些距离界限可以用来修剪无效的时间关联。概述了获取相似时间关联的算法。
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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