A Framework for Fast Classification Algorithms


Autoria(s): Ghanshyam, Thakur; Chandra Jain, Ramesh
Data(s)

10/04/2009

03/09/2009

10/04/2009

03/09/2009

2008

Resumo

Today, due to globalization of the world the size of data set is increasing, it is necessary to discover the knowledge. The discovery of knowledge can be typically in the form of association rules, classification rules, clustering, discovery of frequent episodes and deviation detection. Fast and accurate classifiers for large databases are an important task in data mining. There is growing evidence that integrating classification and association rules mining, classification approaches based on heuristic, greedy search like decision tree induction. Emerging associative classification algorithms have shown good promises on producing accurate classifiers. In this paper we focus on performance of associative classification and present a parallel model for classifier building. For classifier building some parallel-distributed algorithms have been proposed for decision tree induction but so far no such work has been reported for associative classification.

Identificador

1313-0463

http://hdl.handle.net/10525/86

Idioma(s)

en

Publicador

Institute of Information Theories and Applications FOI ITHEA

Palavras-Chave #Classification #Association #Data Mining
Tipo

Article