Abstract
In fuzzy regression, that was first proposed by Tanaka et al. (Eur J Oper Res 40:389–396, 1989; Int Cong Appl Syst Cybern 4:2933–2938, 1980; IEEE Trans SystMan Cybern 12:903–907, 1982), there is a tendency that the greater the values of independent variables, the wider the width of the estimated dependent variables. This causes a decrease in the accuracy of the fuzzy regression model constructed by the least squares method.
This paper suggests the least absolute deviation estimators to construct the fuzzy regression model, and investigates the performance of the fuzzy regression models with respect to a certain errormeasure. Simulation studies and examples show that the proposed model produces less error than the fuzzy regression model studied by many authors that use the least squares method when the data contains fuzzy outliers.
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Choi SH, Kim HK, Park KO (2000) Nonlinear regression quantiles estimation. J Korean Stat Soc 29:187–199
Diamond P, Körner RK (1997) Extended fuzzy linear models and least-squares estimates. Comput Math Appl 9:15–32
Diamond P (1988) Fuzzy least squares. Inform Sci 46:141–157
Kao C, Chyu C (2002) A fuzzy linear regression model with better explanatory power. Fuzzy Sets Syst 126:401–409
Kao C, Chyu C (2003) Least-squares estimates in fuzzy linear regression analysis. Eur J Oper Res 148:426–435
Kim B, Bishu RR (1998) Evaluation of fuzzy linear regression models by comparing membership functions. Fuzzy Sets Syst 100:343–352
Koenker R, Bassett G (1978) Regression Quantiles. Econometrica 46:33–50
Savic D, Pedryzc W (1991) Evaluation of fuzzy linear regression models. Fuzzy Sets Syst 39:51–63
Tanaka H, Hayashi I, Watada J (1989) Possibilistic linear regression analysis for fuzzy data. Eur J Oper Res 40:389–396
Tanaka H, Uejima S, Asai K (1980) Fuzzy linear regression model. Int Cong Appl Syst Cybern 4:2933–2938
Tanaka H, Uejima S, Asai K (1982) Linear regression analysis with fuzzy model. IEEE Trans Syst Man Cybern 12:903–907
Zadeh LA (1965) Fuzzy sets. Inform Control 8:338–353
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Choi, S.H., Buckley, J.J. Fuzzy regression using least absolute deviation estimators. Soft Comput 12, 257–263 (2008). https://doi.org/10.1007/s00500-007-0198-3
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DOI: https://doi.org/10.1007/s00500-007-0198-3