In the classical multiple regression modeling, there might be some insignificant input variables. These variables can be eliminated by automatic selectors, known as penalized methods. We propose a penalized estimation method for the coefficients of a linear regression model for studying the dependence of a LR fuzzy response (output) variable on a set of crisp explanatory (input) variables. To show the performances of the proposed model a simulation study was utilized under three scenarios of multicollinear and sparse data. The model demonstrates better performances in comparison to another three models on the basis of specified goodness of fit measures, under three variants of the penalty function. Evaluation of the method has been conducte...
A linear regression model for imprecise random variables is considered. The imprecision of a random...
AbstractThe fuzzy linear regression model has been a useful tool for analyzing relationships between...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
A linear regression model with imprecise response and p real explanatory variables is analyzed. The ...
AbstractA linear regression model with imprecise response and p real explanatory variables is analyz...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
Confidence intervals for the parameters of a linear regression model with a fuzzy response variable ...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
A linearity test for a simple regression model with an imprecise response is investigated. The value...
In standard regression analysis the relationship between one (response) variable and a set of (expla...
In standard regression analysis the relationship between the (response) variable and a set of (expla...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
A linear regression model for imprecise random variables is considered. The imprecision of a random...
AbstractThe fuzzy linear regression model has been a useful tool for analyzing relationships between...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
A linear regression model with imprecise response and p real explanatory variables is analyzed. The ...
AbstractA linear regression model with imprecise response and p real explanatory variables is analyz...
In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting...
Confidence intervals for the parameters of a linear regression model with a fuzzy response variable ...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
A linearity test for a simple regression model with an imprecise response is investigated. The value...
In standard regression analysis the relationship between one (response) variable and a set of (expla...
In standard regression analysis the relationship between the (response) variable and a set of (expla...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
A linear regression model for imprecise random variables is considered. The imprecision of a random...
AbstractThe fuzzy linear regression model has been a useful tool for analyzing relationships between...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...