A New Classifier Design With Fuzzy Functions

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2007

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Springer-verlag Berlin

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Tourism Management
The aim of Atılım University Department of Tourism Management is to train tourism managers who are able to compete at an international level by offering quality education opportunities. Graduates employed as managers in the fields of accommodation, travel, catering, gastronomy, transportation, congress, conference organization begin their professional life while they are still interns. The academic staff consists of faculty members who are experts in their field, as well as sector professionals. With five years of education including the preparatory English courses offered, the courses of the department are in English. The course program consists of applied and theoretical courses devised with respect to the global trends in tourism. Students perform their internship studies at hotel chains, A-Class travel agencies and professional tourism companies. Our Department is in contract with universities abroad within the scope of the Erasmus student Exchange program. With its quality of education documented by TURAK (Tourism Education, Evaluation and Accreditation Board), Atılım university Department of Tourism Management is the first undergraduate program in Turkey to hold the accreditation.

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Abstract

This paper presents a new fuzzy classifier design, which constructs one classifier for each fuzzy partition of a given system. The new approach, namely Fuzzy Classifier Functions (FCF), is an adaptation of our generic design on Fuzzy Functions to classification problems. This approach couples any fuzzy clustering algorithm with any classification method, in a unique way. The presented model derives fuzzy functions (rules) from data to classify patterns into number of classes. Fuzzy c-means clustering is used to capture hidden fuzzy patterns and a linear or a non-linear classifier function is used to build one classifier model for each pattern identified. The performance of each classifier is enhanced by using corresponding membership values of the data vectors as additional input variables. FCF is proposed as an alternate representation and reasoning schema to fuzzy rule base classifiers. The proposed method is evaluated by the comparison of experiments with the standard classifier methods using cross validation on test patterns.

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fuzzy classification, fuzzy c-means clustering, SVM

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Q3

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11th International Conference on Rough Sets, Fuzzy Sets, Data Mining and Granular Computing (RSFDGrC 2007) -- MAY 14-16, 2007 -- Toronto, CANADA

Volume

4482

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Start Page

136

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