In performing a fuzzy multiple linear regression model, important topics are: to measure the fitting quality of the model and to find the "best" set of input variables that explain the variation in the observed system responses. In this paper, by considering an exploratory approach, to express the quality of fit of a fuzzy linear regression model, a coefficient of multiple determination R-2 for symmetrical fuzzy variable has been suggested. Furthermore, for overcoming the inconveniences of R-2 an adjusted version of R-2 (denoted by (R) over bar (2)) has been defined. For measuring the fitting performances of the estimated model, a fuzzy extension of another goodness of fit measure, the so-called Mallows index (C-p), has been considered. All...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squar...
AbstractLeast squares regression of the fuzzy linear model is extended to overcome and interpret the...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
AbstractThe fuzzy linear regression model has been a useful tool for analyzing relationships between...
posed a modification of fuzzy linear regression analysis. Their modification is based on a criterion...
Nonparametric linear regression and fuzzy linear regression have been developed based on different p...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
In fuzzy domain, a variable (vague linguistic term) often depends not only on a single variable but ...
Fuzzy regression models are useful for investigating the relationship between explanatory variables...
The regression analysis is a common tool in data analysis, while fuzzy regression can be used to ana...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squar...
AbstractLeast squares regression of the fuzzy linear model is extended to overcome and interpret the...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
In the classical multiple regression modeling, there might be some insignificant input variables. Th...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
AbstractThe fuzzy linear regression model has been a useful tool for analyzing relationships between...
posed a modification of fuzzy linear regression analysis. Their modification is based on a criterion...
Nonparametric linear regression and fuzzy linear regression have been developed based on different p...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
In fuzzy domain, a variable (vague linguistic term) often depends not only on a single variable but ...
Fuzzy regression models are useful for investigating the relationship between explanatory variables...
The regression analysis is a common tool in data analysis, while fuzzy regression can be used to ana...
[[abstract]]The method for obtaining the fuzzy estimates of regression parameters with the help of &...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
[[abstract]]By considering two criteria of minimum total sum of vagueness and minimum total sum of s...
AbstractBy considering two criteria of minimum total sum of vagueness and minimum total sum of squar...
AbstractLeast squares regression of the fuzzy linear model is extended to overcome and interpret the...