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Fuzzy Data Envelopment Analysis

机译:模糊数据包络分析

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摘要

Data Envelopment Analysis (DEA) is a well-known technique for efficiency analysis of business entities and organizations. While the traditional DEA requires precise input and output data, available data is usually imprecise and vague. "Fuzzy DEA" has emerged as an extension for assession the efficiency under the complex and uncertain environment. It integrates fuzzy set theory with traditional DEA, representing imprecise data with fuzzy sets. However, the fuzzy DEA model takes the form of a fuzzy linear program which is not well defined due to the ambiguity in the ranking of fuzzy sets. in this paper, we review three approaches to resolve the ambiguity, a possibility approach, a necessity approach and a credibility approach. These three approaches transform fuzzy DEA models into well-defined mathematical programming models. The possibility approach transforms fuzzy DEA models into possibility DEA models by using possibility measures of fuzzy events (fuzzy constraints), while the necessity approach transforms fuzzy DA models into necessity DEA models by using necessity measures of fuzzy events. The credibility approach transforms fuzzy DEA models into well-defined credibility programming models, in which fuzzy variables are replaced by "expected values" in terms of credibility measures. For the case in necessity and credibility programming models becomes linear programming models. Numerical examples are given to illustrate the approaches and results are compared with those obtained with alternative approaches.
机译:数据包络分析(DEA)是商业实体和组织效率分析的知名技术。虽然传统的DEA需要精确的输入和输出数据,但可用的数据通常是不精确和模糊的。 “模糊DEA”已成为在复杂和不确定环境下宣传效率的延伸。它与传统的DEA集成了模糊集理论,代表了模糊集的不精确数据。然而,模糊DEA模型采用模糊线性程序的形式,由于模糊集中的歧义,这不是很好地定义的。在本文中,我们审查了三种方法来解决歧义,可能方法,必要性方法和可信度方法。这三种方法将模糊DEA模型转换为明确定义的数学编程模型。这种可能性方法通过使用模糊事件的可能性测量(模糊限制)来将模糊DEA模型变为可能性DEA模型,而必要方法通过使用模糊事件的必要性测量将模糊DA模型转换为必要的DEA模型。可信度方法将模糊DEA模型转换为明确定义的可信度编程模型,其中模糊变量在信誉措施方面被“预期值”所取代。对于必要性而可信地规划模型的情况成为线性编程模型。给出了数值例子来说明与用替代方法获得的方法进行比较和结果。

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