Paper:
An Interpretability-Accuracy Tradeoff in Learning Parameters of Intuitionistic Fuzzy Rule-Based Systems
Yanni Wang*1, Yaping Dai*1, Yu-Wang Chen*2, and Witold Pedrycz*3,*4
*1School of Automation, Beijing Institute of Technology
Zhongguancun Street 5, Beijing, Haidian District, China
*2Alliance Manchester Business School, University of Manchester
Manchester, M15 6PB, United Kingdom
*3Department of Electrical & Computer Engineering, University of Alberta
Edmonton, Alberta T6G 2J7, Canada
*4Systems Research Institute, Polish Academy of Sciences
Newelska 6, 01-447, Warsaw, Poland
- [1] J. Casillas, O. Cordón, F. Herrera, and L. Magdalena, “Accuracy Improvements to Find the Balance Interpretability-Accuracy in Linguistic Fuzzy Modeling: An Overview,” Springer-Verlag Berlin Heidelberg, pp. 1-20, 2003.
- [2] S. M. Zhou and J. Q. Gan, “Low-level interpretability and high-level interpretability: a unified view of data-driven interpretable fuzzy system Modeling,” Fuzzy Sets and Systems, Vol.159, pp. 3091-3131, 2008.
- [3] Z. Mucong, S. Zhongke, and L. Yan, “Triple I method of approximate reasoning on Atanassov’s intuitionistic fuzzy sets,” Int. J. of Approximate Reasoning, Vol.55, pp. 1369-1382, 2014.
- [4] C. Cornelis, G. Deschrijver, and E. E. Kerre, “Implication in intuitionistic fuzzy and interval-valued fuzzy set theory: construction, classification, application,” Int. J. of Approximate Reasoning, Vol.35, pp. 55-95, 2004.
- [5] O. Castillo, A. Alanis, M. Garcia, and H. Arias, “An intuitionistic fuzzy system for time series analysis in plant monitoring and diagnosis,” Applied Soft Computing, Vol.7, pp. 1227-1233, 2007.
- [6] H. Bustince, “Indicator of inclusion grade for interval-valued fuzzy sets. Application to approximate reasoning based on interval-valued fuzzy sets,” Int. J. of Approximate Reasoning, Vol.23, pp. 137-209, 2000.
- [7] R. R. Yager, “Some aspects of intuitionistic fuzzy sets,” Fuzzy Optim Decis Making, Vol.8, pp. 67-90, 2009.
- [8] C. Dongfeng, F. Yu, and L. Yongxue, “Threat Assessment for Air Defense Operations Based on Intuitionistic Fuzzy Logic,” Procedia Engineering, Vol.29, pp. 3302-3306, 2012.
- [9] Z. Xu and R. R. Yager, “Intuitionistic and interval-valued intutionistic fuzzy preference relations and their measures of similarity for the evaluation of agreement within a group,” Fuzzy Optim Decis Making, Vol.8, pp. 123-139, 2009.
- [10] E. Szmidt and J. Kacprzyk, “Distances between intuitionistic fuzzy sets,” Fuzzy Sets and Systems, Vol.114, pp. 505-518, 2000.
- [11] H. M. Nehi and H. R. Maleki, “Intuitionistic fuzzy numbers and it’s applications in fuzzy optimization problem,” Proc. of the 9th WSEAS Int. Conf. on Systems, pp.1-5, 2005.
- [12] J. Ye, “Expected value method for intuitionistic trapezoidal fuzzy multicriteria decision-making problems,” Expert Systems with Applications, Vol.38, pp. 11730-11734, 2011.
- [13] M. Mizumoto and H. J. Zimmermann, “Comparison of fuzzy reasoning methods,” Fuzzy sets and systems, Vol.8, pp. 253-283, 1982.
- [14] H. Wang, S. Kwong, Y. Jin, W. Wei, and K. F. Man, “Multi-objective hierarchical genetic algorithm for interpretable fuzzy rule-based knowledge extraction,” Fuzzy Sets and Systems, Vol.149, No.1, pp. 149-186, 2005.
- [15] M. Galende, M. J. Gacto, G. Sainz, and R. Alcalá, “Comparison and design of interpretable linguistic vs. scatter FRBSs: GM3M generalization and new rule meaning index for global assessment and local pseudo-linguistic representation,” Information Sciences, Vol.282, pp. 190-213, 2014.
- [16] M. J. Gacto, R. Alcalá, and F. Herrera, “Interpretability of linguistic fuzzy rule-based systems: an overview of interpretability measures,” Information Science, Vol.181, pp. 4340-4360, 2011.
- [17] Y. N. Wang, Y. P. Dai, and F. C. Meng, “Similarity measure of intuitionistic trapezoidal fuzzy numbers and its application for medical diagnosis,” The 32nd Proc. of the Chinese Control Conf. (CCC), pp. 8567-8571, 2013.
- [18] P. Grzegrozewski, “Ditances between intuitionistic fuzzy sets and/or interval-valued fuzzy sets based on the Hausdorff metric,” Fuzzy Sets and Systems, Vol.148, pp. 319-328, 2004.
- [19] P. Grzegrozewski, “The hamming distance between intuitionistic fuzzy sets,” Proc. of the 10th IFSA World Congress, pp. 35-38, 2003.
- [20] M. Setnes, R. Babuška, and H. B. Verbruggen, “Rule-Based Modeling: Precision and Transparency, IEEE transactions on systems, man, and cybernetics-part C: applications and review,” Vol.28, No.1, pp. 165-169, 1998.
- [21] Z. Xu and R. R. Yager, “Intuitionistic and interval-valued intutionistic fuzzy preference relations and their measures of similarity for the evaluation of agreement within a group,” Fuzzy Optim Decis Making, Vol.8, pp. 123-139, 2009.
- [22] O. Cordón, F. Herrera, F. A. Márquez, and A. Peregrín, “A study on the evolutionary adaptive defuzzification methods in fuzzy modeling,” Int. J. of Hybrid Intelligent Systems, Vol.1, No.1, pp. 36-48, 2004.
- [23] O. Castillo, E. Lizárraga, J. Soria, P. Melin, and F. Valdez, “New approach using ant colony optimization with ant set partition for fuzzy control design applied to the ball and beam system,” Information Sciences, Vol.294, pp. 203-215, 2015.
- [24] O. Castillo, H. Neyoy, J. Soria, P. Melin, and F. Valdez, “A new approach for dynamic fuzzy logic parameter tuning in Ant Colony Optimization and its application in fuzzy control of a mobile robot,” Applied Soft Computing, Vol.28, pp. 150-159, 2015.
- [25] M. H. Khooban and T. Niknam, “A new intelligent online fuzzy tuning approach for multi-area load frequency control: Self Adaptive Modified Bat Algorithm,” Electrical Power and Energy Systems, Vol.71, pp. 254-261, 2015.
- [26] P. GaneshKumar, C. Rani, D. Devaraj, and T. A. A. Victoire, “Hybrid ant bee algorithm for fuzzy expert system based sample classification,” IEEE/ACM Trans. on Computational Biology And Bioinformatics, Vol.11, No.2, pp. 347-360, 2014.
- [27] F. Jiménez, G. Sánchez, and J. M. Juárez, “Multi-objective evolutionary algorithms for fuzzy classification in survival prediction,” Artificial Intelligence in Medicine, Vol.60, pp. 197-219, 2014.
- [28] L. A. Zadeh, “Outline of a new approach to the analysis of complex systems and decision processes,” IEEE Trans. on Systems, Man, and Cybernetics , Vol.3, pp. 28-44, 1973.
- [29] J. Alcalá-Fdez, F. Herrera, F. Márquez, and A. Peregrín, “Increasing fuzzy rules cooperation based on evolutionary adaptive inference systems,” Int. J. of Intelligent systems, Vol.22, pp. 1035-1064, 2007.
- [30] V. Khatibi and G. Ali Montazer, “Intuitionistic fuzzy set vs. fuzzy set application in medical pattern recognition,” Artificial Intelligence in Medicine, Vol.47, pp. 43-52, 2009.
- [31] http://www.ics.uci.edu/˜mlearn/MLRepository.html, UCI repository of machine learning databases, 1998.
- [32] S. Destercke, S. Guillaume, and B. Charnomordic, “Building an interpretable fuzzy rule base from data using Orthogonal Least Squares Application to a depollution problem,” Fuzzy Sets and Systems, Vol.158, No.18, pp. 2078-2094, 2007.
- [33] W. Duch, R. Setiono, and J. M. .Zurada, “Computational intelligence methods for rule-based data understanding,” Proc. of the IEEE, Vol.92, No.5, pp. 771-805, 2004.
This article is published under a Creative Commons Attribution-NoDerivatives 4.0 Internationa License.