37
Views
8
CrossRef citations to date
0
Altmetric
Original Articles

Improving Transparency in Approximate Fuzzy Modeling Using Multi-objective Immune-Inspired Optimisation

Pages 322-342 | Received 11 Nov 2010, Accepted 01 Jun 2011, Published online: 23 Apr 2012

References

  • Kosko , B. 1994 . Fuzzy Systems as Universal Approximators . IEEE Transactions on Computers , 43 ( 11 ) : 1329 – 1333 .
  • K. M. Passino , S. Yurkovich , Fuzzy Control , MA : Addison-Wesley , 1998 , pp. 246 – 252 .
  • J. H. Holland , Adaptation in Natural and Artificial Systems , MI : The University of Michigan Press , 1975 .
  • Farmer , J. D. and Packard , N. H. 1986 . The Immune System, Adaptation, and Machine Learning . Physica , 22D : 187 – 204 .
  • Guillaume , S. 2001 . Designing Fuzzy Inference Systems from Data: An Interpretability-Oriented Review . IEEE Transactions on Fuzzy Systems , 9 ( 3 ) : 426 – 443 .
  • Delgado , M. , Gómez-Skarmeta Antonio , F. and Martin , F. 1997 . A Fuzzy Clustering-Based Rapid Prototyping for Fuzzy Rule-Based Modelling . IEEE Transactions on Fuzzy Systems , 5 ( 2 ) : 223 – 233 .
  • Karr , C. L. 1991 . Genetic Algorithms for Fuzzy Controllers . AI Expert , 6 ( 2 ) : 26 – 33 .
  • J. Chen , M. Mahfouf , Interpretable Fuzzy Modeling using Multi-Objective Immune Inspired Optimisation Algorithms , FUZZ-IEEE 2010 , 2010 .
  • J. Chen , Biologically Inspired Optimisation Algorithms for Transparent Knowledge Extraction Allied to Engineering Materials Processing , The University of Sheffield , Ph.D. Thesis , 2009 .
  • J. Chen , M. Mahfouf , A Population Adaptive Based Immune Algorithm for Solving Multi-objective Optimisation Problems , in H. Bersini & J. Carneiro : ICARIS 2006, LNCS 4163 , pp. 280 – 293 , 2006 .
  • J. Chen , M. Mahfouf , Artificial Immune Systems as a Bio-inspired Optimisation Technique and Its Engineering Applications , in H. W. Mo : Artificial Immune Systems and Natural Computing: Applying Complex Adaptive Technologies , pp. 22 – 48 , 2008 .
  • Mamdani , E. H. 1974 . Applications of Fuzzy Algorithm for Control a Simple Dynamic Plant . Proc. Inst. Electr. Eng. , 121 ( 12 ) : 1585 – 1588 .
  • Takagi , T. and Sugeno , M. 1985 . Fuzzy Identification of Systems and Its Applications to Modelling and Control . IEEE Transactions on Systems, Man and Cybernetics , 15 : 116 – 132 .
  • Casillas , J. , Cordon , O. , Del Jesus Mara , J. and Herrera , F. 2001 . Genetic Tuning of Fuzzy Rule Deep Structures for Linguistic Modelling . IEEE Transactions on Fuzzy Systems , 13 : 13 – 29 .
  • Zadeh , L. 1973 . Outline of A New Approach to the Analysis of Complex Systems and Decision Processes, IEEE Transactions on Systems, Man . and Cybernetics , 3 : 28 – 44 .
  • de Oliveira , J. V. 1999 . Semantic Constraints for Membership Function Optimisation . IEEE Trans. Syst. Man. Cybern. Part A , 29 ( 1 ) : 128 – 138 .
  • Zhou , S. M. and Gan , J. Q. 2008 . Low-level Interpretability and High-level Interpretability: A Unified View of Data-Driven Interpretable Fuzzy System Modeling . Fuzzy Sets and Systems , 159 : 2091 – 3131 .
  • Alonso , J. M. , Magdalena , L. and Gonzalez-Rodriguez , G. 2009 . Looking for a Good Fuzzy System Interpretability Index: An Experimental Approach . Int. J. Approx. Reasoning , 51 : 115 – 134 .
  • Miller , G. A. 1956 . The Magical Number Seven, Plus or Minus Two: Some Limits on Our Capacity for Processing Information . The Psychological Review , 63 ( 2 ) : 81 – 97 .
  • Herrera , F. 2008 . Genetic Fuzzy Systems: Taxonomy, Current Research Treads and Prospects . Evol. Intel. , 1 ( 1 ) : 27 – 46 .
  • Ishibuchi , H. , Nozaki , K. , Yamamoto , N. and Tanaka , H. 1995 . Selecting Fuzzy If-Then Rules for Classification Problems Using Genetic Algorithms . IEEE Transactions on Fuzzy Systems , 3 ( 3 ) : 260 – 270 .
  • Ishibuchi , H. , Nakashima , T. and Murata , T. 2001 . Three-objective Genetics-based Machine Learning for Linguistic Rule Extraction . Information Sciences , 136 : 109 – 133 .
  • Ishibuchi , H. and Yamamoto , T. 2004 . Fuzzy Rule Selection by Multi-Objective Genetic Local Search Algorithms and Rule Evaluation Measures in Data Mining . Fuzzy Sets and Systems , 141 : 59 – 88 .
  • Antonelli , M. , Ducange , P. , Zazzerini , B. and Marcelloni , F. 2009 . Learning Concurrently Partition Granularities and Rule Bases of Mamdani Fuzzy Systems in a Multi-objectie Evolutionary Framework . International Journal of Approximate Reasoning , 50 ( 7 ) : 1066 – 1080 .
  • Gacto , M. J. , Alcalá , R. and Herrera , F. 2009 . Adaptation and Application of Multi-objective Evolutionary Algorithms for Rule Reduction and Parameter Tuning of Fuzzy Rule-based Systems . Soft Computing , 13 ( 5 ) : 419 – 436 .
  • Gacto , M. J. , Alcalá , R. and Herrera , F. 2010 . Integration of an Index to Preserve the Semantic Interpretability in the Multi-Objective Evolutionary Rule Selection and Tuning of Linguistic Fuzzy Systems . IEEE Transactions on Fuzzy Systems , 18 ( 3 ) : 515 – 531 .
  • Setnes , M. , Babuška , R. , Kaymak , U. and Lemke , H. 1998 . Similarity Measures in Fuzzy Rule Base Simplification . IEEE Transactions on Systems, Man and Cybernetics-Part B , 28 ( 3 ) : 376 – 386 .
  • F. Jiménez , G. Sánchez , A. F. Gómez-Skarmeta , H. Roubos , R. Babuška , Fuzzy Modeling with Multi-Objective Neuro-Evolutionary Algorithms , IEEE International Conference on Systems, Man, and Cybernetics , 3 , 2002 .
  • Jin , Y. , Von Seelen , W. and Sendhoff , B. 1999 . On Generating FC3 Fuzzy Rule Systems From Data Using Evolution Strategies . IEEE Transactions on Systems, Man and Cybernetics , 29 ( 6 ) : 829 – 845 .
  • Wang , H. L. , Kwong , S. , Jin , Y. C. , Wei , W. and Man , K. F. 2005 . Multi-objective Hierarchical Genetic Algorithm for Interpretable Fuzzy Rule-based Knowledge Extraction . Fuzzy Sets and Systems , 149 ( 1 ) : 149 – 186 .
  • González , J. , Rojas , I. , Pomares , H. , Herrera , L. J. , Guill n , A. , Palomares , J. M. and Rojas , F. 2007 . Improving the Accuracy While Preserving the Interpretability of Fuzzy Function Approximators by means of Multi-objective Evolutionary Algorithms . International Journal of Approximate Reasoning , 44 ( 1 ) : 32 – 44 .
  • Alcalá , R. , Ducange , P. , Herrera , F. and Lazzerini , B. 2009 . A Multiobjective Evolutionary Approach to Concurrently Learn Rule and Data Bases of Linguistic Fuzzy-Rule-Based Systems . IEEE Transactions on Fuzzy Systems , 17 ( 5 ) : 1106 – 1122 .
  • Setnes , M. and Roubos , H. 2000 . GA-Fuzzy Modeling and Classification: Complexity and Performance . IEEE Transactions on Fuzzy Systems , 8 ( 5 ) : 509 – 522 .
  • Roubos , H. and Setnes , M. 2001 . Compact and Transparent Fuzzy Models and Classifiers Through Iterative Complexity Reduction . IEEE Transactions on Fuzzy Systems , 9 ( 4 ) : 516 – 524 .
  • Chen , M. Y. and Linkens , D. A. 2001 . A Systematic Neuro-Fuzzy Modeling Framework With Application to Material Property Prediction . IEEE Transactions on Systems, Man and Cybernetics , 31 ( 5 ) : 781 – 790 .
  • F. Jiménez , A. F. Gómez-Skarmeta , H. Roubos , R. Babuška , Accurate, Transparent, and Compact Fuzzy Models for Function Approximation and Dynamic Modeling through Multi-Objective Evolutionary Optimisation , in E. Zitzler et al. .: EMO 2001, LNCS 1993 , pp. 653 – 667 , 2001 .
  • Cococcioni , M. , Ducange , P. , Lazzerini , B. and Marcelloni , F. 2007 . A Pareto-based Multi-objective Evolutionary Approach to the Identification of Mamdani Fuzzy Systems . Soft Computing , 11 : 1013 – 1031 .
  • Acalά , R. , Gacto , M. J. and Herrera , F. 2007 . A Multi-Objective Genetic Algorithm for Tuning and Rule Selection to Obtain Accurate and Compact Linguistic Fuzzy Rule-Based Systems, International Journal of Uncertainty . Fuzziness and Knowledge-Based Systems , 15 ( 5 ) : 539 – 557 .
  • Q. Zhang , Nature-Inspired Multi-Objective Optimisation and Transparent Knowledge Discovery via Hierarchical Fuzzy Modelling , Ph.D. Thesis , Department of Automatic Control and Systems Engineering, The University of Sheffield , U.K , 2009 .
  • Magdalena , L. 1998 . Crossing Unordered Sets of Rules in Evolutionary Fuzzy Controllers . International Journal of Intelligent Systems , 13 ( 10/11 ) : 993 – 1010 .
  • Cooper , M. G. and Vidal , J. J. 1994 . Genetic Design of Fuzzy Controllers: The Cart and Jointed-Pole Problem . Proceedings of the Third IEEE Conference on Fuzzy Systems , 2 : 1332 – 1337 .
  • Jin , Y. 2000 . Fuzzy Modeling of High-Dimensional Systems: Complexity Reduction and Interpretability Improvement . IEEE Transactions on Fuzzy Systems , 8 ( 2 ) : 212 – 221 .
  • Sugeno , M. and Yasukawa , T. 1993 . A Fuzzy-Logic-Based Approach to Qualitative Modeling . IEEE Transactions on Fuzzy Systems , 1 ( 1 ) : 7 – 31 .
  • Lin , Y. H. , Cunningham , G. A. III and Coggeshall , S. V. 1997 . Using Fuzzy Partitions to Create Fuzzy Systems from Input-Output Data and Set the Initial Weights in a Fuzzy Neural Network . IEEE Transactions on Fuzzy Systems , 5 ( 4 ) : 614 – 621 .
  • Chen , M. Y. and Linkens , D. A. 2004 . Rule-base Self-generation and Simplification for Data-driven Fuzzy Models . Fuzzy Sets and Systems , 142 : 243 – 265 .
  • J. Tenner , Optimisation of the Heat Treatment of Steel using Neural Networks , Ph.D. Thesis , Department of Automatic Control and Systems Engineering, University of Sheffield , U.K , 1999 .

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.