In this paper, we address the issues related to the design of fuzzy robust linear regression algorithms. The design of robust linear regression analysis has been studied in the literature of statistics for over two decades. More recently various robust regression models have been proposed for processing noisy data. We proposed a new objective function by using fuzzy complement and derive improved algorithms that can produce good regression analysis from the spoiled data set. Data set from the U.S. Department of Transportation is used to evaluate the performance of the regression algorithms
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
The least-squares technique has been shown to possess valuable properties as a method of the paramet...
WOS: 000421186100012Fuzzy adaptive networks used for estimating the unknown parameters of a regressi...
In this paper we propose a robust fuzzy linear regression model based on the Least Median Squares-We...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
We consider an application of fuzzy logic connectives to statistical regression. We replace the stan...
In standard regression the Least Squares approach may fail to give valid estimates due to the presen...
new robust fuzzy linear clustering method is proposed. We estimate coe cients of a linear regressio...
summary:In this paper are presented two robust estimators of unknown fuzzy parameters in the fuzzy r...
WOS: 000260806300004Since fuzzy linear regression was introduced by Tanaka et al., fuzzy regression ...
In this paper, the Ordered Weighted Averaging (OWA) operators will be considered to propose general ...
Fuzzy linear analysis may lead to an incorrect interpretation of data in case of being incapable of ...
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 this study, a fuzzy robust regression method is proposed to construct a model that describes the ...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
The least-squares technique has been shown to possess valuable properties as a method of the paramet...
WOS: 000421186100012Fuzzy adaptive networks used for estimating the unknown parameters of a regressi...
In this paper we propose a robust fuzzy linear regression model based on the Least Median Squares-We...
WOS: 000269190000021The classical least squares (LS) method is widely used in regression analysis be...
We consider an application of fuzzy logic connectives to statistical regression. We replace the stan...
In standard regression the Least Squares approach may fail to give valid estimates due to the presen...
new robust fuzzy linear clustering method is proposed. We estimate coe cients of a linear regressio...
summary:In this paper are presented two robust estimators of unknown fuzzy parameters in the fuzzy r...
WOS: 000260806300004Since fuzzy linear regression was introduced by Tanaka et al., fuzzy regression ...
In this paper, the Ordered Weighted Averaging (OWA) operators will be considered to propose general ...
Fuzzy linear analysis may lead to an incorrect interpretation of data in case of being incapable of ...
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 this study, a fuzzy robust regression method is proposed to construct a model that describes the ...
In order to estimate fuzzy regression models, possibilistic and least-squares procedures can be cons...
The least-squares technique has been shown to possess valuable properties as a method of the paramet...
WOS: 000421186100012Fuzzy adaptive networks used for estimating the unknown parameters of a regressi...