Advancements based on fuzzy regression model based on interval-valued fuzzy neural network and its applications to management

Advancements based on fuzzy regression model based on interval-valued fuzzy neural network and its applications to management

Mahin1

1) Ashoori

Publication : 3rd.International Congress on Management, Economy, Humanities and Business Development(3icmba.ir)
Abstract :
Regression is a fundamental component of data analysis and artificial intelligence that acts as a building block for this field. However, comprehensive lacks the development of regression models for interval-valued data that can be done as factors influencing these sets. In this paper, a fuzzy regression model based on an interval-valued fuzzy neural network and its applications to management is analyzed. We investigated some fuzzy regression models with type-1 and type-2 fuzzy regressions, namely IV-T1FR and IV-T2FR. The interval-valued fuzzy neural network (IVFNN) could be trained with clear and interval-valued fuzzy data. Here a neural network was considered as a method for analyzing and forecasting earned value schedule. This article introduces models based on interval fuzzy rule-based modeling (iFRB) and its application in management. Finally, we analyzed the affecting of this method and compared this method with existing methods.
Keywords : Regression interval-valued fuzzy neural network