Abstract
In this paper we survey recent work on incremental data mining model maintenance and change detection under
block evolution.
In block evolution, a dataset is updated periodically through insertions and deletions of
blocks
of records at a time. We describe two techniques: (1) We describe a generic algorithm for model maintenance that takes any traditional incremental data mining model maintenance algorithm and transforms it into an algorithm that allows restrictions on a temporal subset of the database. (2) We also describe a generic framework for change detection, that quantifies the difference between two datasets in terms of the data mining models they induce.
Publisher
Association for Computing Machinery (ACM)
Cited by
53 articles.
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