Monash University
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Leave-one-out Kernel Density Estimates for Outlier Detection

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journal contribution
posted on 2022-11-10, 03:41 authored by Sevvandi Kandanaarachchi, Rob J Hyndman
This paper introduces lookout, a new approach to detect outliers using leave-one-out kernel density estimates and extreme value theory. Outlier detection methods that use kernel density estimates generally employ a user defined parameter to determine the bandwidth. Lookout uses persistent homology to construct a bandwidth suitable for outlier detection without any user input. We demonstrate the effectiveness of lookout on an extensive data repository by comparing its performance with other outlier detection methods based on extreme value theory. Furthermore, we introduce outlier persistence, a useful concept that explores the birth and the cessation of outliers with changing bandwidth and significance levels. The R package lookout implements this algorithm.

History

Classification-JEL

C55, C65, C87

Creation date

2021-02-06

Working Paper Series Number

2/21

Length

26 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2021-2