Multivariate Voronoi Outlier Detection for Time Series.

Chris E Zwilling, Michelle Yongmei Wang
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引用次数: 5

Abstract

Outlier detection is a primary step in many data mining and analysis applications, including healthcare and medical research. This paper presents a general method to identify outliers in multivariate time series based on a Voronoi diagram, which we call Multivariate Voronoi Outlier Detection (MVOD). The approach copes with outliers in a multivariate framework, via designing and extracting effective attributes or features from the data that can take parametric or nonparametric forms. Voronoi diagrams allow for automatic configuration of the neighborhood relationship of the data points, which facilitates the differentiation of outliers and non-outliers. Experimental evaluation demonstrates that our MVOD is an accurate, sensitive, and robust method for detecting outliers in multivariate time series data.

Abstract Image

Abstract Image

Abstract Image

时间序列的多变量Voronoi离群值检测。
异常值检测是许多数据挖掘和分析应用程序的主要步骤,包括医疗保健和医学研究。本文提出了一种基于Voronoi图的多变量时间序列异常点识别的通用方法,我们称之为多变量Voronoi异常点检测(multivariate Voronoi Outlier Detection, MVOD)。该方法通过从数据中设计和提取有效的属性或特征来处理多元框架中的异常值,这些属性或特征可以采取参数或非参数形式。Voronoi图允许自动配置数据点的邻域关系,这有助于区分离群值和非离群值。实验评估表明,我们的MVOD方法是一种准确、灵敏、鲁棒的多变量时间序列数据异常值检测方法。
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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