Comprehensive Rules-Based and Preferences Induced Weights Allocation in Group Decision-Making with BUI

被引:0
作者
GePeng Li
Ronald R. Yager
XinXing Zhang
Radko Mesiar
Humberto Bustince
LeSheng Jin
机构
[1] Nanjing Normal University,Business School
[2] King Abdulaziz University,Faculty of Science
[3] Iona College,Machine Intelligence Institute
[4] Slovak University of Technology,Faculty of Civil Engineering
[5] Palacký University,Department of Algebra and Geometry, Faculty of Science
[6] Public University of Navarre,Department of Statistics, Computer Science and Mathematics
来源
International Journal of Computational Intelligence Systems | / 15卷
关键词
Aggregation operators; Basic uncertain information; Decision-making; Information fusion; Preference modeling;
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摘要
Decision-makers’ subjective preferences can be well modeled using preference aggregation operators and related induced weights allocation mechanisms. However, when several different types of preferences occur in some decision environment with more complex uncertainties, repeated uses of preferences induced weights allocation sometimes become unsuitable or less reasonable. In this work, we discuss a common decision environment where several invited experts will offer their respective evaluation values for a certain object. There are three types of preferences which will significantly affect the weights allocations from experts. Instead of unsuitably performing preference induced weights allocation three times independently and then merging the results together using convex combination as some literatures recently did, in this work, we propose some organic and comprehensive rules-based screen method to first rule out some unqualified experts and then take preference induced weights allocation for the refined group of experts. A numerical example in business management and decision-making is presented to show the cognitive reasonability and practical feasibility.
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