Title : ( A fuzzy penalized regression model with variable selection )
Authors: M. Kashani , Mohammad Arashi , M.R. Rabie , P. Durso , L.D.Giovani ,Access to full-text not allowed by authors
Abstract
can be eliminated by automatic selectors, known as penalized methods. We propose a penalized estimation method for the coefficients of a linear regression model for studying the dependence of a LR fuzzy response (output) variable on a set of crisp explanatory (input) variables. To show the performances of the proposed model a simulation study was utilized under three scenarios of multicollinear and sparse data. The model demonstrates better performances in comparison to another three models on the basis of specified goodness of fit measures, under three variants of the penalty function. Evaluation of the method has been conducted on real data. The results demonstrate superior performances in terms of the goodness of fit measures in comparison to the other models. To take into account the imprecision due to the lack of knowledge about the data generation process, in the applications to real data bootstrap-t confidence intervals were also utilized.
Keywords
, Fuzzy regression Penalized model Least, squares method Bootstrap, t confidence interval Uncertainty measure Variable selection@article{paperid:1085340,
author = {M. Kashani and Arashi, Mohammad and M.R. Rabie and P. Durso and L.D.Giovani},
title = {A fuzzy penalized regression model with variable selection},
journal = {Expert Systems with Applications},
year = {2021},
volume = {175},
month = {August},
issn = {0957-4174},
pages = {114696--114696},
numpages = {0},
keywords = {Fuzzy regression
Penalized model
Least-squares method
Bootstrap-t confidence interval
Uncertainty measure
Variable selection},
}
%0 Journal Article
%T A fuzzy penalized regression model with variable selection
%A M. Kashani
%A Arashi, Mohammad
%A M.R. Rabie
%A P. Durso
%A L.D.Giovani
%J Expert Systems with Applications
%@ 0957-4174
%D 2021