An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness

Affective product design aims at incorporating customers’ affective needs into design variables of a new product so as to optimise customers’ affective satisfaction. Faced with fierce competition in marketplaces, companies try to determine the settings in order to maximise customers’ affective satis...

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Main Authors: Chan, Kit Yan, Kwong, C., Dillon, Tharam, Fung, K.
Format: Journal Article
Published: Taylor & Francis 2011
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/24671
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author Chan, Kit Yan
Kwong, C.
Dillon, Tharam
Fung, K.
author_facet Chan, Kit Yan
Kwong, C.
Dillon, Tharam
Fung, K.
author_sort Chan, Kit Yan
building Curtin Institutional Repository
collection Online Access
description Affective product design aims at incorporating customers’ affective needs into design variables of a new product so as to optimise customers’ affective satisfaction. Faced with fierce competition in marketplaces, companies try to determine the settings in order to maximise customers’ affective satisfaction with products. To achieve this, a set of customer survey data is required in order to develop a model which relates customers’ affective responses to the design variables of a new product. Customer survey data are usually fuzzy since human feeling is usually fuzzy, and the relationship between customers’ affective responses and design variables is usually nonlinear. However, previous research on modelling the relationship between affective response and design variables has not addressed the development of explicit models involving either nonlinearity or fuzziness. In this paper, an intelligent fuzzy regression approach is proposed to generate models which represent this nonlinear and fuzzy relationship between affective responses and design variables. In order to do this, we extend the existing work on fuzzy regression by first utilising an evolutionary algorithm to construct branches of a tree representing structures of a model where the nonlinearity of the model can be addressed. The fuzzy regression algorithm is then used to determine the fuzzy coefficients of the model. The models thus developed are explicit, and consist of fuzzy, nonlinear terms which relate affective responses to design variables. A case study of affective product design of mobile phones is used to illustrate the proposed method.
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institution Curtin University Malaysia
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publishDate 2011
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spelling curtin-20.500.11937-246712017-09-13T15:56:35Z An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness Chan, Kit Yan Kwong, C. Dillon, Tharam Fung, K. fuzzy regression affective product design evolutionary algorithm Affective product design aims at incorporating customers’ affective needs into design variables of a new product so as to optimise customers’ affective satisfaction. Faced with fierce competition in marketplaces, companies try to determine the settings in order to maximise customers’ affective satisfaction with products. To achieve this, a set of customer survey data is required in order to develop a model which relates customers’ affective responses to the design variables of a new product. Customer survey data are usually fuzzy since human feeling is usually fuzzy, and the relationship between customers’ affective responses and design variables is usually nonlinear. However, previous research on modelling the relationship between affective response and design variables has not addressed the development of explicit models involving either nonlinearity or fuzziness. In this paper, an intelligent fuzzy regression approach is proposed to generate models which represent this nonlinear and fuzzy relationship between affective responses and design variables. In order to do this, we extend the existing work on fuzzy regression by first utilising an evolutionary algorithm to construct branches of a tree representing structures of a model where the nonlinearity of the model can be addressed. The fuzzy regression algorithm is then used to determine the fuzzy coefficients of the model. The models thus developed are explicit, and consist of fuzzy, nonlinear terms which relate affective responses to design variables. A case study of affective product design of mobile phones is used to illustrate the proposed method. 2011 Journal Article http://hdl.handle.net/20.500.11937/24671 10.1080/09544820903550924 Taylor & Francis fulltext
spellingShingle fuzzy regression
affective product design
evolutionary algorithm
Chan, Kit Yan
Kwong, C.
Dillon, Tharam
Fung, K.
An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title_full An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title_fullStr An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title_full_unstemmed An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title_short An intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
title_sort intelligent fuzzy regression approach for affective product design that captures nonlinearity and fuzziness
topic fuzzy regression
affective product design
evolutionary algorithm
url http://hdl.handle.net/20.500.11937/24671