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Inicio  /  Information  /  Vol: 10 Par: 7 (2019)  /  Artículo
ARTÍCULO
TITULO

Multiple Goal Linear Programming-Based Decision Preference Inconsistency Recognition and Adjustment Strategies

Jian-Zhang Wu    
Li Huang    
Rui-Jie Xi and Yi-Ping Zhou    

Resumen

The purpose of this paper is to enrich the decision preference information inconsistency check and adjustment method in the context of capacity-based multiple criteria decision making. We first show that almost all the preference information of a decision maker can be represented as a collection of linear constraints. By introducing the positive and negative deviations, we construct the the multiple goal linear programming (MGLP)-based inconsistency recognition model to find out the redundant and contradicting constraints. Then, based on the redundancy and contradiction degrees, we propose three types of adjustment strategies and accordingly adopt some explicit and implicit indices w.r.t. the capacity to test the implementation effect of the adjustment strategy. The empirical analyses verify that all the strategies are competent in the adjustment task, and the second strategy usually costs relatively less effort. It is shown that the MGLP-based inconsistency recognition and adjustment method needs less background knowledge and is applicable for dealing with some complicated decision preference information.

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