Vendor selection is a strategic issue in supply chain management for any organization to identify the right supplier. Such selection in most cases is based on the analysis of some specific criteria. Most of the researches so far concentrate on multi-criteria decisionmaking analysis. Though many approaches have been proposed, analytic hierarchy process (AHP) is the most well known as it can deal with a very complex criteria structure. In AHP, the selected criteria are ranked and organized in a hierarchical order from generic to specific to formulate the problem. Though this order of ranking is acceptably logical, it incurs a huge computational complexity when a large number of alternatives are considered as the selection criteria. Moreover, the AHP may generate wrong selection due to computational error. To address these limitations, a novel model namely vendor selection using fuzzy c-means algorithm and analytic hierarchy process (VFA) is presented in this paper by integrating the fuzzy c-means clustering (FCM) algorithm with analytic hierarchy process (AHP). The outcome of the proposed VFA algorithm is compared with the basic AHP algorithm and VFA outperforms the basic AHP and reduces the computational complexity of AHP by a factor of 7.
Conference paper
Vendor selection using fuzzy C means algorithm and analytic hierarchy process
pp.181-184
IEEE
Proceedings of Fuzzy Systems, FUZZ-IEEE2009 Conference (Jeju Island, Korea, 20-24 August)
2009
Metrics
24 Record Views
Abstract
Details
- Title
- Vendor selection using fuzzy C means algorithm and analytic hierarchy process
- Creators
- M SQZ Nine - Military Institute of Science and Technology, DhakaMohammed AK Khan - Military Institute of Science and Technology, DhakaM H Hoque - Military Institute of Science and Technology, DhakaM Ameer Ali - East West UniversityN C Shil - East West UniversityGolam Sorwar - Southern Cross University
- Publication Details
- pp.181-184
- Conference
- Proceedings of Fuzzy Systems, FUZZ-IEEE2009 Conference (Jeju Island, Korea, 20-24 August)
- Publisher
- IEEE
- Number of pages
- 181-184
- Identifiers
- 1408; 991012821994402368
- Academic Unit
- Faculty of Science and Engineering; Information Technology; School of Business and Tourism; Faculty of Business, Law and Arts
- Resource Type
- Conference paper