Increasing accuracy of two-class pattern recognition with enhanced fuzzy functions

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Date

2009

Journal Title

Journal ISSN

Volume Title

Publisher

Pergamon-elsevier Science Ltd

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Organizational Units

Organizational Unit
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.

Journal Issue

Abstract

In building an approximate fuzzy classifier system, significant effort is laid oil estimation and fine tuning of fuzzy sets. However, in such systems little thought is given to the way in which membership functions are combined within fuzzy rules. In this paper, a robust method, improved fuzzy classifier functions (IFCF) design is proposed for two-class pattern recognition problems. A supervised hybrid improved fuzzy Clustering for classification (IFC-C) algorithm is implemented for structure identification. IFC-C algorithm is based oil it dual optimization method, which yields simultaneous estimates of the parameters of (c-classification functions together with fuzzy c partitioning of dataset based oil a distance measure. The merit of novel IFCF is that the information oil natural grouping of data samples i.e., the membership values, are utilized as additional predictors of each fuzzy classifier function to improve accuracy of system model. Improved fuzzy classifier functions are approximated using statistical and soft computing approaches. A new semi-non-parametric inference mechanism is implemented for reasoning. The experimental results Of the new modeling approach indicate that the new IFCF is it promising method for two-class pattern recognition problems. (c) 2007 Elsevier Ltd. All rights reserved.

Description

Keywords

Fuzzy classification, Improved fuzzy clustering, Fuzzy Functions, Data mining, Early warning system, Decision support systems

Turkish CoHE Thesis Center URL

Citation

21

WoS Q

Q1

Scopus Q

Source

Volume

36

Issue

2

Start Page

1337

End Page

1354

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