Nonparametric linear regression and fuzzy linear regression have been developed based on different perspectives and assumptions, and thus there exist conceptual and methodological differences between the two approaches. This article describes their comparative characteristics such as basic assumptions, parameter estimation, and applications, and then compares their predictive and descriptive performances by a simulation experiment to identify the conditions under which one method performs better than the other. The experimental results indicate that nonparametric linear regression is superior to fuzzy linear regression in predictive capability, whereas their descriptive capabilities depend on various factors. When the size of the data set i...
AbstractKim et al. [1] proposed a new fuzzy linear regression model and studied the asymptotic norma...
(MLR) is the most common type of linear regression analysis. Current technology advancement and incr...
Confidence intervals for the parameters of a linear regression model with a fuzzy response variable ...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this chapter, we will deal with fuzzy correlation and fuzzy non-linear regression analyses. Both ...
posed a modification of fuzzy linear regression analysis. Their modification is based on a criterion...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
Recently a new linear regression model with fuzzy response and scalar explanatory variables has been...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
We introduce a new fuzzy linear regression method. The method is capable of approximating fuzzy rela...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
In this paper, we propose a statistical relationship between acceptance rate & first decision time o...
AbstractLeast squares regression of the fuzzy linear model is extended to overcome and interpret the...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
AbstractKim et al. [1] proposed a new fuzzy linear regression model and studied the asymptotic norma...
(MLR) is the most common type of linear regression analysis. Current technology advancement and incr...
Confidence intervals for the parameters of a linear regression model with a fuzzy response variable ...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this chapter, we will deal with fuzzy correlation and fuzzy non-linear regression analyses. Both ...
posed a modification of fuzzy linear regression analysis. Their modification is based on a criterion...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
Recently a new linear regression model with fuzzy response and scalar explanatory variables has been...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
We introduce a new fuzzy linear regression method. The method is capable of approximating fuzzy rela...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
In this paper, we propose a statistical relationship between acceptance rate & first decision time o...
AbstractLeast squares regression of the fuzzy linear model is extended to overcome and interpret the...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
AbstractKim et al. [1] proposed a new fuzzy linear regression model and studied the asymptotic norma...
(MLR) is the most common type of linear regression analysis. Current technology advancement and incr...
Confidence intervals for the parameters of a linear regression model with a fuzzy response variable ...