Effectiveness Evaluation of Rule Based Classifiers for the Classification of Iris Data Set
Journal: Bonfring International Journal of Man Machine Interface (Vol.01, No. 1)Publication Date: 2011-12-30
Authors : C. Lakshmi Devasena T. Sumathi V.V. Gomathi; M. Hemalatha;
Page : 05-09
Keywords : IRIS; Fuzzy clustering; DTNB Classifier; RIDOR Classifier; Conjunctive Rule Classifier;
Abstract
In machine learning, classification refers to a step by step procedure for designating a given piece of input data into any one of the given categories. There are many classification problem occurs and need to be solved. Different types are classification algorithms like tree-based, rule-based, etc are widely used. This work studies the effectiveness of Rule-Based classifiers for classification by taking a sample data set from UCI machine learning repository using the open source machine learning tool. A comparison of different rule-based classifiers used in Data Mining and a practical guideline for selecting the most suited algorithm for a classification is presented and some empirical criteria for describing and evaluating the classifiers are given
Other Latest Articles
- Test Suite Skimming on Agent Based Model using Maximum Clique on a Modified Bee Colony Algorithm
- AN ASSESSMENT OF MULTI-PURPOSE USE OF ADANSONIA DIGITATA (Baobab tree) FOR SUSTAINABLE DEVELOPMENT IN THE SEMI URBAN FRINGES OF DUTSINMA KATSINA STATE NIGERIA
- DIVERSITY INDEX ANALYSIS OF WATER SUPPLY FOR DOMESTIC PURPOSES TO ACHIEVE SUSTAINABILITY IN THE 12 LGA’S OF KATSINA SENATORIAL ZONE, KATSINA STATE
- INTELLIGENT SYSTEMS, MODELLING, SIMULATIONS AND THE APPLICATIONS
- ON THE SPOT BRAZING AND SPOT SOLDERING OF TANTALUM
Last modified: 2013-09-21 19:42:46