Title :
A Novel Pruning Approach Using Expert Knowledge for Intelligent Inexact Classification
Author :
Mahmood, Ali Mirza ; Kuppa, Mrithyumjaya Rao
Author_Institution :
Acharya Nagarjuna Univ., Guntur, India
Abstract :
The ever growing presence of data led to a large number of proposed algorithms for classification and especially decision trees over the last years. Recently, it has been shown that decision trees outperform traditional approaches also on limited data. Therefore, increasing the decision tree classification accuracy yields better performance on both huge and moderate sized datasets. This paper proposes a practical algorithm to deal with the data specific classification problem when there are datasets with different properties. Another key motivation of the data specific pruning in the paper is "trading accuracy and size". A novel algorithm called Expert Knowledge Based Pruning, EKBP is proposed to solve this dilemma. We proposed to integrate error rate, missing values and expert judgment as factors for determining data specific pruning for each dataset. In experimental evaluation against three existing techniques on 40 datasets we showed that our best approach outperforms all competitors and yields significant improvement over previous results in terms of accuracy and tree size.
Keywords :
decision trees; expert systems; learning (artificial intelligence); pattern classification; data specific classification problem; expert knowledge; intelligent inexact classification; pruning approach; Accuracy; Classification algorithms; Classification tree analysis; Error analysis; Machine learning; Upper bound; Decision tree; EKBP; expert knowledge; intelligent in-exact classification; pruning;
Conference_Titel :
Emerging Applications of Information Technology (EAIT), 2011 Second International Conference on
Conference_Location :
Kolkata
Print_ISBN :
978-1-4244-9683-9
DOI :
10.1109/EAIT.2011.74