Title :
Adaptive refinement of fuzzy knowledge bases using trend rules and inverse inference
Author :
Rotshtein, Alexander ; Rakytyanska, Hanna
Author_Institution :
Dept. of Ind. Eng. & Manage., Jerusalem Coll. of Technol.-Machon Lev, Jerusalem, Israel
Abstract :
In this paper, an adaptive approach to refinement of fuzzy classification knowledge bases within the framework of fuzzy relational equations is proposed. The fuzzy classification knowledge base can be built using the system of trend fuzzy rules and inverse inference. The essence of the approach is in constructing and training the composite neuro-fuzzy network isomorphic to linguistic solutions of fuzzy relational equations. The composite network allows adaptive refinement of the expert rules while the bounds of decision classes are changing.
Keywords :
fuzzy reasoning; knowledge based systems; adaptive refinement; composite neuro-fuzzy network isomorphic solutions; decision classes; fuzzy classification knowledge bases; fuzzy relational equations; fuzzy rules; inverse inference; linguistic solutions; Knowledge based systems; Market research; Mathematical model; Neural networks; Pragmatics; Training; Tuning; fuzzy knowledge bases refinement; min-max neural network; solving fuzzy relational equations;
Conference_Titel :
Human System Interactions (HSI), 2015 8th International Conference on
DOI :
10.1109/HSI.2015.7170640