WOS: 000260806300004Since fuzzy linear regression was introduced by Tanaka et al., fuzzy regression analysis has been widely studied and applied invarious areas. Diamond proposed the fuzzy least squares method to eliminate disadvantages in the Tanaka et al method. In this paper, we propose a modified fuzzy leasts quares regression analysis. When independent variables are crisp, the dependent variable is a fuzzy number and outliers are present in the dataset. In the proposed method, the residuals are ranked as the comparison of fuzzy sets, and the weight matrix is defined by the membership function of the residuals. To illustrate how the proposed method is applied, two examples are discussed and compared in methods from the literature. Resul...
In this study, a fuzzy robust regression method is proposed to construct a model that describes the ...
AbstractA least squares support vector fuzzy regression model (LS_SVFR) is proposed to estimate unce...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...
In this paper we propose a robust fuzzy linear regression model based on the Least Median Squares-We...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
In standard regression the Least Squares approach may fail to give valid estimates due to the presen...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In this paper, we address the issues related to the design of fuzzy robust linear regression algorit...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
This paper deals with a new approach to fuzzy linear regression analysis. A doubly linear adaptive f...
Fuzzy linear analysis may lead to an incorrect interpretation of data in case of being incapable of ...
The least-squares technique has been shown to possess valuable properties as a method of the paramet...
Abstract—A novel approach is introduced to construct a fuzzy regression model when both input data a...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
In this study, a fuzzy robust regression method is proposed to construct a model that describes the ...
AbstractA least squares support vector fuzzy regression model (LS_SVFR) is proposed to estimate unce...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...
In this paper we propose a robust fuzzy linear regression model based on the Least Median Squares-We...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
In standard regression the Least Squares approach may fail to give valid estimates due to the presen...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In this paper, we address the issues related to the design of fuzzy robust linear regression algorit...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
This paper deals with a new approach to fuzzy linear regression analysis. A doubly linear adaptive f...
Fuzzy linear analysis may lead to an incorrect interpretation of data in case of being incapable of ...
The least-squares technique has been shown to possess valuable properties as a method of the paramet...
Abstract—A novel approach is introduced to construct a fuzzy regression model when both input data a...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
In this study, a fuzzy robust regression method is proposed to construct a model that describes the ...
AbstractA least squares support vector fuzzy regression model (LS_SVFR) is proposed to estimate unce...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...