Time series event correlation with DTW and Hierarchical Clustering methods

Srishti Mishra, Zohair Shafi, S. Pathak
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引用次数: 1

Abstract

Data driven decision making is becoming increasingly an important aspect for successful business execution. More and more organizations are moving towards taking informed decisions based on the data that they are generating. Most of this data are in temporal format - time series data. Effective analysis across time series data sets, in an efficient and quick manner is a challenge. The most interesting and valuable part of such analysis is to generate insights on correlation and causation across multiple time series data sets. This paper looks at methods that can be used to analyze such data sets and gain useful insights from it, primarily in the form of correlation and causation analysis. This paper focuses on two methods for doing so, Two Sample Test with Dynamic Time Warping and Hierarchical Clustering and looks at how the results returned from both can be used to gain a better understanding of the data. Moreover, the methods used are meant to work with any data set, regardless of the subject domain and idiosyncrasies of the data set, primarily, a data agnostic approach.
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时间序列事件相关的DTW和层次聚类方法
数据驱动的决策越来越成为成功的业务执行的一个重要方面。越来越多的组织正朝着根据他们生成的数据做出明智决策的方向发展。这些数据大多采用时间格式——时间序列数据。以高效和快速的方式对时间序列数据集进行有效分析是一个挑战。这种分析最有趣和最有价值的部分是对多个时间序列数据集之间的相关性和因果关系产生见解。本文着眼于可用于分析此类数据集并从中获得有用见解的方法,主要以相关性和因果分析的形式。本文重点介绍了两种方法,动态时间扭曲的两样本测试和分层聚类,并研究了如何使用这两种方法返回的结果来更好地理解数据。此外,所使用的方法旨在处理任何数据集,而不考虑主题领域和数据集的特性,主要是一种数据不可知的方法。
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