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Paper   IPM / Cognitive / 7535
School of Cognitive Sciences
  Title:   Multi Objective Emotional Learning Based Fuzzy Inference System
  Author(s): 
1.  A. Abbaspour
2.  A. Gholipour
3.  C. Lucas
4.  B. Nadjar Araabi
5.  M. Fatourechi
  Status:   In Proceedings
  Proceeding: WSEAS Transactions on System
  Year:  2003
  Supported by:  IPM
  Abstract:
Bounded rationality and satisficing models have shown good performance in reflection of uncertainties and complexities in real word problems of decision making and control. The emotional learning algorithm is such an appropriate method in multi objective applications. In this research the emotional learning algorithm is implemented on the base of the trainable Takaji Sugeno fuzzy inference system, which has shown great performance and flexibility among various learning methodologies. The two applications considered in this paper are selected among the well known real world problems: purposeful prediction of solar activity among the maximum regions, and multi objective portfolio selection. These multi criteria problems dealing with sampled data from unknown complex dynamical systems are hard to be handled with classical optimization techniques. In particular, the proposed emotional learning based fuzzy inference system (ELFIS) shows great performance in both cases: purposeful prediction and multi objective decision making. This method is also characterized by simple and fast computations which extends its use in large scale in real time systems. A comparison of the results with the adaptive network based fuzzy inference system (ANFIS) shows the efficiency of the proposed algorithm.


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