Please use this identifier to cite or link to this item: http://dspace.uniten.edu.my/jspui/handle/123456789/8894
Title: On equivalence of FIS and ELM for interpretable rule-based knowledge representation
Authors: Wong, S.Y. 
Yap, K.S. 
Yap, H.J. 
Tan, S.C. 
Chang, S.W. 
Issue Date: 2015
Abstract: This paper presents a fuzzy extreme learning machine (F-ELM) that embeds fuzzy membership functions and rules into the hidden layer of extreme learning machine (ELM). Similar to the concept of ELM that employed the random initialization technique, three parameters of F-ELM are randomly assigned. They are the standard deviation of the membership functions, matrix-C (rule-combination matrix), and matrix-D [don't care (DC) matrix]. Fuzzy if-then rules are formulated by the rule-combination Matrix of F-ELM, and a DC approach is adopted to minimize the number of input attributes in the rules. Furthermore, F-ELM utilizes the output weights of the ELM to form the target class and confidence factor for each of the rules. This is to indicate that the corresponding consequent parameters are determined analytically. The operations of F-ELM are equivalent to a fuzzy inference system. Several benchmark data sets and a real world fault detection and diagnosis problem have been used to empirically evaluate the efficacy of the proposed F-ELM in handling pattern classification tasks. The results show that the accuracy rates of F-ELM are comparable (if not superior) to ELM with distinctive ability of providing explicit knowledge in the form of interpretable rule base. © 2012 IEEE.
URI: http://dspace.uniten.edu.my/jspui/handle/123456789/8894
Appears in Collections:COE Scholarly Publication

Show full item record

Google ScholarTM

Check


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.