Constructing Time Series Shape Association Measures: Minkowski Distance and Data Standardization

I. Batyrshin
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引用次数: 25

Abstract

It is surprising that last two decades many works in time series data mining and clustering were concerned with measures of similarity of time series but not with measures of association that can be used for measuring possible direct and inverse relationships between time series. Inverse relationships can exist between dynamics of prices and sell volumes, between growth patterns of competitive companies, between well production data in oilfields, between wind velocity and air pollution concentration etc. The paper develops a theoretical basis for analysis and construction of time series shape association measures. Starting from the axioms of time series shape association measures it studies the methods of construction of measures satisfying these axioms. Several general methods of construction of such measures suitable for measuring time series shape similarity and shape association are proposed. Time series shape association measures based on Minkowski distance and data standardization methods are considered. The cosine similarity and the Pearson's correlation coefficient are obtained as partial cases of the proposed general methods that can be used also for construction of new association measures in data analysis.
构建时间序列形状关联测度:闵可夫斯基距离与数据标准化
令人惊讶的是,在过去的二十年中,时间序列数据挖掘和聚类的许多工作都关注时间序列的相似性度量,而不是用于度量时间序列之间可能的直接和反向关系的关联度量。价格动态与销售量之间、竞争公司的增长模式之间、油田油井生产数据之间、风速与空气污染浓度之间等可能存在反比关系。本文为时间序列形状关联测度的分析和构造提供了理论基础。从时间序列形状关联测度的公理出发,研究了满足这些公理的测度的构造方法。提出了几种适合于测量时间序列形状相似度和形状关联度的一般构造方法。考虑了基于闵可夫斯基距离和数据标准化方法的时间序列形状关联度量。余弦相似度和Pearson相关系数作为所提出的一般方法的部分情况,也可用于数据分析中新的关联度量的构建。
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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