Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (numerical or categorical) explanatory variables. It can be obtained as a series of simple and multiple regressions of simple and multiple regressions. PLS is an alternative to classical regression model when there are many variables or the variables are correlated. On the other hand, an alternative method to regression in order to model data has been studied is called Fuzzy Linear Regression (FLR). FLR is one of the modelling techniques based on fuzzy set theory. It is applied to many diversified areas such as engineering, biology, finance and so on. Development of FLR follows mainly two paths. One of which depends on improving the parameter esti...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
In this chapter, we will deal with fuzzy correlation and fuzzy non-linear regression analyses. Both ...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In standard regression analysis the relationship between one (response) variable and a set of (expla...
Nonparametric linear regression and fuzzy linear regression have been developed based on different p...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
In sensory analysis a panel of assessors gives scores to blocks of sensory attributes for profiling ...
WOS: 000260806300004Since fuzzy linear regression was introduced by Tanaka et al., fuzzy regression ...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
This paper deals with a new approach to fuzzy linear regression analysis. A doubly linear adaptive f...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
In this chapter, we will deal with fuzzy correlation and fuzzy non-linear regression analyses. Both ...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...
Partial Least Squared (PLS) regression is a model linking a dependent variable y to a set of X (nume...
Linear Programming (LP) methods are commonly used to construct fuzzy linear regression (FLR,) models...
In this paper, we discuss the problem of regression analysis in a fuzzy domain. By considering an it...
[[abstract]]Fuzzy linear regression was originally introduced by Tanaka et al. To cope with differen...
In standard regression analysis the relationship between one (response) variable and a set of (expla...
Nonparametric linear regression and fuzzy linear regression have been developed based on different p...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
In sensory analysis a panel of assessors gives scores to blocks of sensory attributes for profiling ...
WOS: 000260806300004Since fuzzy linear regression was introduced by Tanaka et al., fuzzy regression ...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
This paper deals with fuzzy regression analysis in presence of multivariate symmetric fuzzy response...
This paper deals with a new approach to fuzzy linear regression analysis. A doubly linear adaptive f...
Market researches and opinion polls usually include customers’ responses as verbal labels of sets wi...
In this chapter, we will deal with fuzzy correlation and fuzzy non-linear regression analyses. Both ...
[[abstract]]The method for obtaining the fuzzy least squares estimators with the help of the extensi...