1 / 32

Content

A Decision System Using ANP and Fuzzy Inputs Jaroslav Ram ík Silesian University Opava School of Business Administration Karviná Czech Republic e-mail: ramik@opf.slu.cz FUR XII, Rome, June 2006. Content. Problem -AHP Dependent criteria – ANP Solution Case study Conclusion. Problem- AHP.

erasto
Download Presentation

Content

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. A Decision System Using ANP and Fuzzy InputsJaroslav RamíkSilesian University Opava School of Business Administration Karviná Czech Republice-mail: ramik@opf.slu.czFUR XII, Rome, June 2006

  2. Content • Problem -AHP • Dependent criteria – ANP • Solution • Case study • Conclusion

  3. Problem- AHP • MADM problem – AHP • AHP- supermatrix • AHP- limiting matrix Content

  4. MADM problem – AHP - Criteria - Variants Content

  5. AHP – supermatrix Supermatrix: Content

  6. AHP- limiting matrix Limiting matrix: - vector of evaluations of variants (weights) Content

  7. Dependent criteria – ANP • Dependent evaluation criteria – ANP • Dependent criteria – supermatrix • Dependent criteria – limiting matrix • Uncertain evaluations • Uncertain pair-wise comparisons Content

  8. Dependent evaluation criteria – ANP Feedback Content

  9. Dependent criteria – supermatrix Supermatrix: - matrix of feedback between the criteria Content

  10. Dependent criteria – limiting matrix Limiting matrix: - vector of evaluations of variants (weights) Content

  11. Uncertain evaluations 1 0 aL aM aU Triangular fuzzy number Content

  12. Uncertain pair-wise comparisons Reciprocity 0 ¼ 1/3 ½ 1 2 3 4 Content

  13. Solution • Fuzzy evaluations • Fuzzy arithmetic • Fuzzy weights and values • Defuzzyfication • Algorithm Content

  14. Fuzzy evaluations • Fuzzy values (of criteria/variants): • Triangular fuzzy numbers: , k = 1,2,...,r • Normalized fuzzy values: Content

  15. Fuzzy arithmetic aL > 0, bL > 0 • Addition: • Subtraction: • Multiplication: • Division: • Particularly: Content

  16. Fuzzy weights and values • Triangular fuzzy pair-wise comparison matrix (reciprocal): • approximation of the matrix: Content

  17. Fuzzy weights and values Solve the optimization problem: subject to Solution: i = 1,2,...,r Logarithmic method Content

  18. Defuzzyfication • Result of synthesis: Triangular fuzzy vector, i.e. • Corresponding crisp (nonfuzzy) vector: where 1/3 zL zM xg zU Content

  19. Algorithm Step 1:Calculate triangular fuzzy weights (of criteria, feedback and variants): Step 2:Calculate the aggregating triangular fuzzy evaluations of the variants: or Step 3: Find the „best“ variant using a ranking method (e.g. Center Gravity) Content

  20. Case study • Case study - outline • Case study - criteria • Case study - variants • Case study - feedback • Case study - W32* and W22* • Case study - synthesis • Case study - crisp case with fedback • Case study - crisp case NO fedback • Case study - comparison Content

  21. Case study - outline • Problem: Buy the best product(a car)3 criteria 4 variants • Data: triangular fuzzy pair-wise comparisons  fuzzy weights • Calculations: 1. with feedback 2. without feedback • Crisp case: „middle values of triangles“ Case study

  22. Case study - criteria Case study

  23. Case study - variants Case study

  24. Case study - feedback Case study

  25. Case study - W32* and W22* Case study

  26. Case study - synthesis Case study

  27. Case study - crisp case with fedback Crisp case:aL =aM =aU Case study

  28. Case study - crisp case NO fedback Crisp case:aL =aM =aU, W22 = 0 Case study

  29. Case study - comparison Case study

  30. Conclusion • Fuzzy evaluation of pair-wise comparisons may be more comfortable and appropriate for DM • Occurance of dependences among criteria is realistic and frequent • Dependences among criteria may influence the final rank of variants • Presence of fuzziness in evaluations may change the final rank of variants Case study

  31. References • Buckley, J.J., Fuzzy hierarchical analysis. Fuzzy Sets and Systems 17, 1985, 1, p. 233-247, ISSN 0165-0114. • Chen, S.J., Hwang, C.L. and Hwang, F.P., Fuzzy multiple attribute decision making. Lecture Notes in Economics and Math. Syst., Vol. 375, Springer-Verlag, Berlin – Heidelberg 1992, ISBN 3-540-54998-6. • Horn, R. A., Johnson, C. R.,Matrix Analysis, Cambridge University Press, 1990, ISBN 0521305861. • Ramik, J., Duality in fuzzy linear programming with possibility and necessity relations. Fuzzy Sets and Systems 157, 2006, 1, p. 1283-1302, ISSN 0165-0114. • Saaty, T.L., Exploring the interface between hierarchies, multiple objectives and fuzzy sets. Fuzzy Sets and Systems 1, 1978, p. 57-68, ISSN 0165-0114. • Saaty, T.L., Multicriteria decision making - the Analytical Hierarchy Process. Vol. I., RWS Publications, Pittsburgh, 1991, ISBN . • Saaty, T.L., Decision Making with Dependence and Feedback – The Analytic Network Process. RWS Publications, Pittsburgh, 2001, ISBN 0-9620317-9-8. • Van Laarhoven, P.J.M. and Pedrycz, W., A fuzzy extension of Saaty's priority theory. Fuzzy Sets and Systems 11, 1983, 4, p. 229-241, ISSN 0165-0114.

  32. DĚKUJI VÁM(Thank You)

More Related