LOCI: Fast outlier detection using the local correlation integral

Research output: Contribution to conferencePaperpeer-review

761 Scopus citations

Abstract

Outlier detection is an integral part of data mining and has attracted much attention recently [8, 15, 19]. In this paper, we propose a new method for evaluating outlierness, which we call the Local Correlation Integral (LOCI). As with the best previous methods, LOCI is highly effective for detecting outliers and groups of outliers (a.k.a. microclusters). In addition, it offers the following advantages and novelties: (a) It provides an automatic, data-dictated cut-off to determine whether a point is an outlier-in contrast, previous methods force users to pick cut-offs, without any hints as to what cut-off value is best for a given dataset. (b) It can provide a LOCI plot for each point; this plot summarizes a wealth of information about the data in the vicinity of the point, determining clusters, micro-clusters, their diameters and their inter-cluster distances. None of the existing outlier-detection methods can match this feature, because they output only a single number for each point: its outlier-ness score. (c) Our LOCI method can be computed as quickly as the best previous methods. (d) Moreover, LOCI leads to a practically linear approximate method, aLOCI (for approximate LOCI), which provides fast highly-accurate outlier detection. To the best of our knowledge, this is the first work to use approximate computations to speed up outlier detection.

Original languageEnglish (US)
Pages315-326
Number of pages12
DOIs
StatePublished - 2003
Externally publishedYes
EventNineteenth International Conference on Data Ingineering - Bangalore, India
Duration: Mar 5 2003Mar 8 2003

Other

OtherNineteenth International Conference on Data Ingineering
Country/TerritoryIndia
CityBangalore
Period3/5/033/8/03

All Science Journal Classification (ASJC) codes

  • Software
  • Signal Processing
  • Information Systems

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