ENSEMBLED DECISION TREE CLASSIFIER PERFORMANCE WITH VARYING COMMITTEE SIZES
Journal: International Journal of Computer Engineering and Technology (IJCET) (Vol.9, No. 1)Publication Date: 2018-02-15
Authors : G. SUJATHA K. USHA RANI;
Page : 96-101
Keywords : Data Mining; Classification; Decision Trees; MultiBoostAB; C4.5; Tumour Datasets;
Abstract
Data Mining is the process of extracting hidden knowledge from the large data repositories. Decision Tree, an important Classification technique of Data Mining is proved its role in medical diagnosis. Ensemble of classifiers will perform better than a single classifier. Prediction error can be minimised by the increase in committee size of classifiers. In this study experiments are conducted on a hybrid Classifier ie., C4.5, a Decision Tree classifier with MultiBoostAB, an ensemble technique with varied committee sizes on Tumour Datasets and the results are analyzed
Other Latest Articles
- A COMPREHENSIVE REVIEW OF VERSIONING METHODS OF SERVICE ORIENTED ARCHITECTURE
- DEVELOPING A MODEL FOR ADMISSION CELL OF COLLEGES BY ANALYZING STUDENT DATABASE USING CLUSTERING
- DETECTION AND ISOLATION TECHNIQUE FOR BLACKHOLE ATTACK IN WIRELESS SENSOR NETWORK
- NEUROPLASTICITY OF ARTIFICIAL NEURAL NETWORKS: AN INVESTIGATION USING ENGLISH AND DEVANAGARI CHARACTER RECOGNITION
- WATERMARKED IMAGE AUTHENTICATION USING SVD AND SEGMENT LEVEL KEY ENCRYPTION TECHNIQUES TO SUPPORT TAMPERING DETECTION AND LOCALIZATION
Last modified: 2018-04-06 19:40:37