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A novel approach to noise clustering for outlier detection
Type of publication: Article
Citation: Rehm_et_al_noise_clustering_2007
Journal: Soft Computing - A Fusion of Foundations, Methodologies and Applications
Volume: 11
Number: 5
Year: 2007
Month: March
Pages: 489--494
ISSN: 1432-7643
URL: http://springerlink.metapress....
DOI: 10.1007/s00500-006-0112-4
Abstract: Noise clustering, as a robust clustering method, performs partitioning of data sets reducing errors caused by outliers. Noise clustering defines outliers in terms of a certain distance, which is called noise distance. The probability or membership degree of data points belonging to the noise cluster increases with their distance to regular clusters. The main purpose of noise clustering is to reduce the influence of outliers on the regular clusters. The emphasis is not put on exactly identifying outliers. However, in many applications outliers contain important information and their correct identification is crucial. In this paper we present a method to estimate the noise distance in noise clustering based on the preservation of the hypervolume of the feature space. Our examples will demonstrate the efficiency of this approach.
Keywords: Fuzzy clustering, Noise clustering, Outlier detection
Authors Rehm, Frank
Klawonn, Frank
Kruse, Rudolf
Added by: [ADM]
Total mark: 0
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  • rehmetal2007nc.pdf
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