Title of article :
Hypotheses testing for fuzzy robust regression parameters
Author/Authors :
Kamile S anl? Kula a، نويسنده , , Ays en Apayd?n ، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2009
Abstract :
The classical least squares (LS) method is widely used in regression analysis because computing
its estimate is easy and traditional. However, LS estimators are very sensitive to outliers
and to other deviations from basic assumptions of normal theory [Huynh H. A
comparison of four approaches to robust regression. Psychol Bull 1982;92:505–12; Stephenson
D. 2000. Available from: http://folk.uib.no/ngbnk/kurs/notes/node38.html; Xu R,
Li C. Multidimensional least-squares fitting with a fuzzy model. Fuzzy Sets and Systems
2001;119:215–23.]. If there exists outliers in the data set, robust methods are preferred
to estimate parameters values. We proposed a fuzzy robust regression method by using
fuzzy numbers when x is crisp and Y is a triangular fuzzy number and in case of outliers
in the data set, a weight matrix was defined by the membership function of the residuals.
In the fuzzy robust regression, fuzzy sets and fuzzy regression analysis was used in ranking
of residuals and in estimation of regression parameters, respectively [S anlı K, Apaydin A.
Fuzzy robust regression analysis based on the ranking of fuzzy sets. Inernat. J. Uncertainty
Fuzziness and Knowledge-Based Syst 2008;16:663–81.]. In this study, standard deviation
estimations are obtained for the parameters by the defined weight matrix. Moreover, we
propose another point of view in hypotheses testing for parameters.
Journal title :
Chaos, Solitons and Fractals
Journal title :
Chaos, Solitons and Fractals