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引用次数: 0
摘要
当一个生产系统执行两个或多个功能,其中一些功能共享相同的投入时,往往会出现共享投入。传统的数据包络分析(DEA)模型允许每个决策单元(DMU)选择最有利的值,以获得最高的效率得分。其结果是,许多 DMU 为同一功能分配了不同约束值的比例,这并不合理。本文提出了一种折中解决方案,即汇总所有 DMU 的观点,就各功能使用的共享输入比例达成共识。该方法实际上是一种构建生产函数的参数 DEA 方法。为了增加解释力,考虑了超越函数。以旅游酒店为例进行说明,其中住宿和餐饮职能共享管理员工的投入。结果表明,超越函数具有更强的解释力,并得到了管理员工在两个职能上投入精力比例的合理折衷值。
A compromise solution approach for efficiency measurement with shared input: The case of tourist hotels in Taiwan
Shared input occurs often when a production system performs two or more functions and some of the functions share the same input. To determine the proportion of the shared input devoted to each function, the conventional data envelopment analysis (DEA) models that allow each decision making unit (DMU) to select the most favorable value to attain the highest efficiency score is usually used. The result is that many DMUs assign proportions of different bound values to the same function, which is not reasonable. This paper proposes a compromise solution approach that aggregates the viewpoints of all DMUs to obtain a consensus regarding the proportion of the shared input used by each function. The approach is actually a parametric DEA approach for constructing the production function. To increase the explanation power, transcendental functions are considered. The tourist hotel, where the accommodation and catering functions share the input of management employees is used for illustration. The results show that a transcendental function has stronger explanation power, and reasonable compromised values for the proportions of the effort of the management employees devoted to the two functions are obtained.
期刊介绍:
The European Journal of Operational Research (EJOR) publishes high quality, original papers that contribute to the methodology of operational research (OR) and to the practice of decision making.