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Intuitionistic fuzzy ridge regression functions

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<mark>Journal publication date</mark>1/03/2020
<mark>Journal</mark>Communications in Statistics: Simulation and Computation
Issue number3
Volume49
Number of pages10
Pages (from-to)699-708
Publication StatusPublished
Early online date13/06/19
<mark>Original language</mark>English

Abstract

Developing technology shows how useful fuzzy inference systems in lots of applications. Fuzzy functions approach which is one of the important fuzzy inference system for time series forecasting. In fuzzy functions approach, the membership values and their non-linear transformations are used together with original input variables to increase the prediction power. However, multicollinearity problem can be occured because of using these correlated variables. Purpose of the paper is to propose a new fuzzy forecasting method with intuitionistic fuzzy sets which has addition information known as hesitation degree. In this case, both intuitionistic fuzzy sets and their non-linear transformations is used to increase the prediction power. Ridge regression method is preferred to obtain intuitionistic fuzzy functions without exposed to multicolinearity problem. To demonstrate the performances of proposed method, some real world time series data are used and the results have shown that the effectiveness of the proposed method in conrast to other methods.