%0 Journal Article %@ 19316828 %A Abraham, A. %A Vasant, P. %A Bhattacharya, A. %D 2008 %F scholars:488 %I Springer International Publishing %J Springer Optimization and Its Applications %P 301-321 %R 10.1007/978-0-387-76813-7₁₂ %T Neuro-fuzzy approximation of multi-criteria decision-making QFD methodology %U https://khub.utp.edu.my/scholars/488/ %V 16 %X This chapter demonstrates how a neuro-fuzzy approach could produce outputs of a further-modified multi-criteria decision-making (MCDM) quality function deployment (QFD) model within the required error rate. The improved fuzzified MCDM model uses the modified S-curve membership function (MF) as stated in an earlier chapter. The smooth and flexible logistic membership function (MF) finds out fuzziness patterns in disparate level-of-satisfaction for the integrated analytic hierarchy process (AHP-QFD model. The key objective of this chapter is to guide decision makers in finding out the best candidate-alternative robot with a higher degree of satisfaction and with a lesser degree of fuzziness. © Springer Science + Business Media, LLC 2008. %Z cited By 9