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PKDD
2007
Springer

Matching Partitions over Time to Reliably Capture Local Clusters in Noisy Domains

13 years 11 months ago
Matching Partitions over Time to Reliably Capture Local Clusters in Noisy Domains
Abstract. When seeking for small clusters it is very intricate to distinguish between incidental agglomeration of noisy points and true local patterns. We present the PAMALOC algorithm that addresses this problem by exploiting temporal information which is contained in most business data sets. The algorithm enables the detection of local patterns in noisy data sets more reliable compared to the case when the temporal information is ignored. This is achieved by making use of the fact that noise does not reproduce its incidental structure but even small patterns do. In particular, we developed a method to track clusters over time based on an optimal match of data partitions between time periods.
Frank Höppner, Mirko Böttcher
Added 09 Jun 2010
Updated 09 Jun 2010
Type Conference
Year 2007
Where PKDD
Authors Frank Höppner, Mirko Böttcher
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