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Efficient algorithms for mining outliers from large data sets
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- Sridhar Ramaswamy
- Epiphany Inc., Palo Alto, CA
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- Rajeev Rastogi
- Bell Laboratories, Murray Hill, NJ
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- Kyuseok Shim
- Korea Advanced Institute of Science and Technology and Advanced Information Technology Research Center at KAIST, Taejon, KOREA
Description
<jats:p> In this paper, we propose a novel formulation for distance-based <jats:italic>outliers</jats:italic> that is based on the distance of a point from its <jats:italic> k <jats:sup>th</jats:sup> </jats:italic> nearest neighbor. We rank each point on the basis of its distance to its <jats:italic> k <jats:sup>th</jats:sup> </jats:italic> nearest neighbor and declare the top <jats:italic>n</jats:italic> points in this ranking to be outliers. In addition to developing relatively straightforward solutions to finding such outliers based on the classical nested-loop join and index join algorithms, we develop a highly efficient <jats:italic>partition-based</jats:italic> algorithm for mining outliers. This algorithm first partitions the input data set into disjoint subsets, and then prunes entire partitions as soon as it is determined that they cannot contain outliers. This results in substantial savings in computation. We present the results of an extensive experimental study on real-life and synthetic data sets. The results from a real-life NBA database highlight and reveal several expected and unexpected aspects of the database. The results from a study on synthetic data sets demonstrate that the partition-based algorithm scales well with respect to both data set size and data set dimensionality. </jats:p>
Journal
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- ACM SIGMOD Record
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ACM SIGMOD Record 29 (2), 427-438, 2000-05-16
Association for Computing Machinery (ACM)
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Details 詳細情報について
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- CRID
- 1360855570597713664
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- ISSN
- 01635808
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- Data Source
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- Crossref