Title of article :
A novel Neuro-fuzzy classification technique for data mining
Author/Authors :
Ghosh, Soumadip Academy of Technology Aedconagar, India , Biswas, Sushanta University of Kalyani - Department of Engineering and Technological Studies (DETS), India , Sarkar, Debasree University of Kalyani - Department of Engineering and Technological Studies (DETS), India , Sarkar, Partha Pratim University of Kalyani - Department of Engineering and Technological Studies (DETS), India
Abstract :
Abstract In our study,we proposed a novel Neuro-fuzzy classification technique for data mining. The inputs to the Neuro-fuzzy classification system were fuzzified by applying generalized bell-shaped membership function. The proposed method utilized a fuzzification matrix in which the input patterns were associated with a degree of membership to different classes. Based on the value of degree of membership a pattern would be attributed to a specific category or class. We applied our method to ten benchmark data sets from the UCI machine learning repository for classification. Our objective was to analyze the proposed method and,therefore compare its performance with two powerful supervised classification algorithms Radial Basis Function Neural Network (RBFNN) and Adaptive Neuro-fuzzy Inference System (ANFIS). We assessed the performance of these classification methods in terms of different performance measures such as accuracy,root-mean-square error,kappa statistic,true positive rate,false positive rate,precision,recall,and f-measure. In every aspect the proposed method proved to be superior to RBFNN and ANFIS algorithms. © 2014 Production and hosting by Elsevier B.V.
Keywords :
Classification , Data mining , Neural network , Neuro , fuzzy
Journal title :
Egyptian Informatics Journal
Journal title :
Egyptian Informatics Journal