[en] As we know fuzzy modeling is one of the most powerful techniques to extract experts’ knowledge in the form of fuzzy if-then rules. In this research work, a new method to fuzzy modeling is proposed in which the main goal is to construct a fuzzy rule-base of the type of
Mamdani. In the proposed method, fuzzy c-means (FCM) clustering is used for structure identification and two optimization problems are used for parameter identification. The proposed method is used to simulate experts’ knowledge for performance evaluation of tenants in incubators. The authors have implemented their proposed method in a real numerical example successfully.
scite shows how a scientific paper has been cited by providing the context of the citation, a classification describing whether it supports, mentions, or contrasts the cited claim, and a label indicating in which section the citation was made.
Bibliography
Zadeh, L.A., Fuzzy sets (1965) Inf Control, 8, pp. 338-353
Zimmermann, H.J., (1996) Fuzzy Set Theory and Its Applications, , Kluwer Academic Boston
Terano, T., Asai, K., Sugeno, M., (1992) Fuzzy Systems Theory and Its Applications, , Academic Boston
Sugeno, M., Yasukawa, T., A fuzzy-logic-based approach to qualitative modeling (1993) IEEE Trans Fuzzy Syst, 1, pp. 7-31. , 1
Takagi, T., Sugeno, M., Fuzzy identification of systems and its applications to modeling and control (1985) IEEE Trans Syst Man Cybern, 15, pp. 116-132. , 1
Kim, E., Park, M., Ji, S., Park, M., A new approach to fuzzy modeling (1997) IEEE Trans Fuzzy Syst, 5, pp. 328-337. , 3
Reyes, C.N.P., (2004) Coevolutionary Fuzzy Modeling, , Springer Berlin
Wong, C.C., Chen, C.C., A hybrid clustering and gradient descent approach for fuzzy modeling (1999) IEEE Trans Syst Man Cybern, 29, pp. 686-693. , 6
Grimaldi, R., Grandi, A., Business incubators and new venture creation: An assessment of incubating models (2005) Technovation, 25, pp. 111-121
Ammar, S., Wright, R., Applying fuzzy set theory to performance evaluation (2000) Socio-Econ Plann Sci, 34, pp. 285-302
Shaout, A., Al-Shammari, M., Fuzzy logic modeling for performance appraisal systems: A framework for empirical evaluation (1998) Expert Syst Appl, 14, pp. 323-328
Henri, J.F., Organizational culture and performance measurement systems (2006) Account Org Soc, 31, p. 77. , 1
Yeh, C.H., Deng, H., Chang, Y.H., Fuzzy multicriteria analysis for performance evaluation of bus companies (2000) Eur J Oper Res, 126, pp. 459-473
Ammar, S., Duncombe, W., Jump, B., Wright, R., Constructing a fuzzy knowledge-based system: An application for assessing the financial condition of public schools (2004) Expert Syst Appl, 27, pp. 349-364
Chan, F.T., Kumar, F., Global supplier development considering risk factors using fuzzy extended AHP-based approach (2007) Omega, 35, p. 417. , 4
This website uses cookies to improve user experience. Read more
Save & Close
Accept all
Decline all
Show detailsHide details
Cookie declaration
About cookies
Strictly necessary
Performance
Strictly necessary cookies allow core website functionality such as user login and account management. The website cannot be used properly without strictly necessary cookies.
This cookie is used by Cookie-Script.com service to remember visitor cookie consent preferences. It is necessary for Cookie-Script.com cookie banner to work properly.
Performance cookies are used to see how visitors use the website, eg. analytics cookies. Those cookies cannot be used to directly identify a certain visitor.
Used to store the attribution information, the referrer initially used to visit the website
Cookies are small text files that are placed on your computer by websites that you visit. Websites use cookies to help users navigate efficiently and perform certain functions. Cookies that are required for the website to operate properly are allowed to be set without your permission. All other cookies need to be approved before they can be set in the browser.
You can change your consent to cookie usage at any time on our Privacy Policy page.