Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm

In this chapter, we propose a new method based on genetic algorithms (GAs) for fuzzy artificial neural network (FANN) learning to improve its accuracy in measuring customer service satisfaction for establishing a principle of ecnomical survival in business area. The analysis is based on linguistic v...

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Main Authors: Mashinchi, M. Reza, Selamat, Ali
Other Authors: Ali, Al-Dahoud
Format: Book Section
Published: In-Teh 2010
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Online Access:http://eprints.utm.my/id/eprint/31214/
http://dx.doi.org/10.5772/7820
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Institution: Universiti Teknologi Malaysia
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spelling my.utm.312142017-02-05T00:39:10Z http://eprints.utm.my/id/eprint/31214/ Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm Mashinchi, M. Reza Selamat, Ali QA75 Electronic computers. Computer science In this chapter, we propose a new method based on genetic algorithms (GAs) for fuzzy artificial neural network (FANN) learning to improve its accuracy in measuring customer service satisfaction for establishing a principle of ecnomical survival in business area. The analysis is based on linguistic values received from customer service satisfactions index where fuzzy modeling, as one of possible ways, has been used to process these values. Here, customer's satisfaction is considered as a key factor for the analysis based on his/her preference as the scope of qualification for organization service. In the proposed method, we have introduced two-phase GAs-based learning for FANNs. In the neural network, inputs and weights are assumed to be fuzzy numbers on the set of all real numbers. The optimization ability of GA is used to tune alpha-cuts boundaries of membership functions for fuzzy weights. Here, five alpha-cuts are used for tuning as other researchers have used, which in two-phase method; two of them are for first phase and three of them for second phase. This leads to obtain better results for FANN. Comparisons are included with another method using two data sets to give some analyses to show the superiority of proposed method in term of generated error and executed time.From the experiments, the proposed approach has been able to predict quality values of possible strategies according to customer's preference. Finally, the ability of this system in recognizing customer's preference has been tested using some new assumed services. In-Teh Ali, Al-Dahoud 2010 Book Section PeerReviewed Mashinchi, M. Reza and Selamat, Ali (2010) Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm. In: Computational Intelligence and Modern Heuristics. In-Teh, Rijeka, Croatia, pp. 107-130. ISBN 978-953-7619-28-2 http://dx.doi.org/10.5772/7820 DOI: 10.5772/7820
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Mashinchi, M. Reza
Selamat, Ali
Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
description In this chapter, we propose a new method based on genetic algorithms (GAs) for fuzzy artificial neural network (FANN) learning to improve its accuracy in measuring customer service satisfaction for establishing a principle of ecnomical survival in business area. The analysis is based on linguistic values received from customer service satisfactions index where fuzzy modeling, as one of possible ways, has been used to process these values. Here, customer's satisfaction is considered as a key factor for the analysis based on his/her preference as the scope of qualification for organization service. In the proposed method, we have introduced two-phase GAs-based learning for FANNs. In the neural network, inputs and weights are assumed to be fuzzy numbers on the set of all real numbers. The optimization ability of GA is used to tune alpha-cuts boundaries of membership functions for fuzzy weights. Here, five alpha-cuts are used for tuning as other researchers have used, which in two-phase method; two of them are for first phase and three of them for second phase. This leads to obtain better results for FANN. Comparisons are included with another method using two data sets to give some analyses to show the superiority of proposed method in term of generated error and executed time.From the experiments, the proposed approach has been able to predict quality values of possible strategies according to customer's preference. Finally, the ability of this system in recognizing customer's preference has been tested using some new assumed services.
author2 Ali, Al-Dahoud
author_facet Ali, Al-Dahoud
Mashinchi, M. Reza
Selamat, Ali
format Book Section
author Mashinchi, M. Reza
Selamat, Ali
author_sort Mashinchi, M. Reza
title Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
title_short Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
title_full Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
title_fullStr Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
title_full_unstemmed Measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
title_sort measuring customer service satisfactions using fuzzy artificial neural network with two-phase genetic algorithm
publisher In-Teh
publishDate 2010
url http://eprints.utm.my/id/eprint/31214/
http://dx.doi.org/10.5772/7820
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