Fuzzy linear regression (FLR) approaches are widely used for modeling relations between variables that involve human judgments, qualitative and imprecise data. Tanaka's FLR analysis is the first one developed and widely used for this purpose. However, this method is not appropriate for classification problems, because it can only handle continuous type dependent variables rather than categorical. In this study, we propose three alternative approaches for building classification models, for a customer satisfaction survey data, based on Tanaka's FLR approach. In these models, we aim to reflect both random and fuzzy types of uncertainties in the data in different ways, and compare their performances using several classification performance mea...
In this contribution we describe a novel procedure to represent uncertainty in rating scales in term...
© 2014 IEEE. Fuzzy regression methods have commonly been used to develop consumer preferences models...
Certain statistical systems for modelling are influenced by human perception. Analysis by human perc...
In some classification problems where human judgments, qualitative and imprecise data exist, uncerta...
In this paper, we propose a statistical relationship between acceptance rate & first decision time o...
Faced with fierce competition in marketplaces, manufacturers need to determine the appropriate setti...
This chapter develops a framework that uses fuzzy set theory in order to measure customer satisfacti...
The success of a new product is very much related to the customer satisfaction level of the product....
© 2016 - IOS Press and the authors. All rights reserved. Fuzzy regression models have commonly been ...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
<p><strong><em>Purpose:</em></strong> The purpose of study is to meet customer requirements and impr...
In recent years, the fuzzy linear regression (FLR) approach is widely applied in the quality functio...
This chapter develops a framework that uses fuzzy set theory in order to measure customersatisfactio...
Fuzzy regression methods have commonly been used to develop consumer preferences models which correl...
This research proposes new statistical methods for marketing and decision-making studies. This study...
In this contribution we describe a novel procedure to represent uncertainty in rating scales in term...
© 2014 IEEE. Fuzzy regression methods have commonly been used to develop consumer preferences models...
Certain statistical systems for modelling are influenced by human perception. Analysis by human perc...
In some classification problems where human judgments, qualitative and imprecise data exist, uncerta...
In this paper, we propose a statistical relationship between acceptance rate & first decision time o...
Faced with fierce competition in marketplaces, manufacturers need to determine the appropriate setti...
This chapter develops a framework that uses fuzzy set theory in order to measure customer satisfacti...
The success of a new product is very much related to the customer satisfaction level of the product....
© 2016 - IOS Press and the authors. All rights reserved. Fuzzy regression models have commonly been ...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
<p><strong><em>Purpose:</em></strong> The purpose of study is to meet customer requirements and impr...
In recent years, the fuzzy linear regression (FLR) approach is widely applied in the quality functio...
This chapter develops a framework that uses fuzzy set theory in order to measure customersatisfactio...
Fuzzy regression methods have commonly been used to develop consumer preferences models which correl...
This research proposes new statistical methods for marketing and decision-making studies. This study...
In this contribution we describe a novel procedure to represent uncertainty in rating scales in term...
© 2014 IEEE. Fuzzy regression methods have commonly been used to develop consumer preferences models...
Certain statistical systems for modelling are influenced by human perception. Analysis by human perc...