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A Practical Common Weight Scaling Function Approach for Technology Selection

机译:一种实用的通用权重缩放函数技术选择方法

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A practical common weight scaling function methodology with an improved discriminating power for technology selection is introduced. The proposed scaling function methodology enables the evaluation of the relative efficiency of decision-making units (DMUs) with respect to multiple outputs and a single exact input with common weights.Its robustness and discriminating power are illustrated via a previously reported robot evaluation problem by comparing the ranking obtained by the proposed scaling function framework with that obtained by the DEA classic model (CCR model) and Minimax method (Karsak & Ahiska, 2005). Because the number of efficient DMUs is reduced so discriminating power of our approach is higher than previous approaches and because Spearman’s rank correlation between the ranks obtained from our approach and Minimax approach is high therefore robustness of our approach is justified.
机译:介绍了一种实用的通用权重缩放函数方法,该方法具有用于技术选择的改进的识别能力。所提出的缩放函数方法论能够评估决策单元(DMU)相对于多个输出和具有相同权重的单个精确输入的相对效率,通过先前报告的机器人评估问题通过比较来说明其鲁棒性和区分能力。拟议的缩放函数框架获得的排名与DEA经典模型(CCR模型)和Minimax方法获得的排名(Karsak和Ahiska,2005年)。因为减少了有效DMU的数量,所以我们的方法的辨别力比以前的方法高,并且由于从我们的方法和Minimax方法获得的等级之间的Spearman等级相关性很高,因此我们的方法的鲁棒性是合理的。

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