Sciweavers

SEMCO
2008
IEEE

Text Categorization Based on Boosting Association Rules

14 years 5 months ago
Text Categorization Based on Boosting Association Rules
Associative classification is a novel and powerful method originating from association rule mining. In the previous studies, a relatively small number of high-quality association rules were used in the prediction. We propose a new approach in which a large number of association rules are generated. Then, the rules are filtered using a new method which is equivalent to a deterministic Boosting algorithm. Through this equivalence, our approach effectively adapts to large-scale classification tasks such as text categorization. Experiments with various text collections show that our method achieves one of the best prediction performance compared with the state-of-the-arts of this field.
Yongwook Yoon, Gary Geunbae Lee
Added 01 Jun 2010
Updated 01 Jun 2010
Type Conference
Year 2008
Where SEMCO
Authors Yongwook Yoon, Gary Geunbae Lee
Comments (0)