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IEAAIE
2009
Springer

Incremental Mining of Ontological Association Rules in Evolving Environments

13 years 10 months ago
Incremental Mining of Ontological Association Rules in Evolving Environments
The process of knowledge discovery from databases is a knowledge intensive, highly user-oriented practice, thus has recently heralded the development of ontology-incorporated data mining techniques. In our previous work, we have considered the problem of mining association rules with ontological information (called ontological association rules) and devised two efficient algorithms, called AROC and AROS, for discovering ontological associations that exploit not only classification but also composition relationship between items. The real world, however, is not static. Data mining practitioners usually are confronted with a dynamic environment. New transactions are continually added into the database over time, and the ontology of items is evolved accordingly. Furthermore, the work of discovering interesting association rules is an iterative process; the analysts need to repeatedly adjust the constraint of minimum support and/or minimum confidence to discover real informative rules. Und...
Ming-Cheng Tseng, Wen-Yang Lin
Added 26 May 2010
Updated 26 May 2010
Type Conference
Year 2009
Where IEAAIE
Authors Ming-Cheng Tseng, Wen-Yang Lin
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