成本分配与凸数据包络

J. Hougaard, J. Tind
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引用次数: 9

摘要

本文考虑分配规则。首先,我们证明了Aumann-Shapley和Friedman-Moulin成本分配规则的成本分配在实践中是容易确定的,使用注册成本数据的凸包络和参数规划。其次,从所涉及的线性规划问题中可以清楚地看出,从技术上讲,分配规则将对凸性约束的对偶变量的非零值分配给输出向量。因此,分配规则也可用于分配非参数效率度量模型(如数据包络分析(DEA))中的低效率。BCC模型的凸性约束在乘数问题的目标函数中引入了一个非零松弛,我们表明本文讨论的成本分配规则可以作为候选规则,将该松弛值分配给输入(或输出)变量,从而像CCR模型一样,将低效率完全分配给输入(或输出)变量。
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Cost Allocation and Convex Data Envelopment
This paper considers allocation rules. First, we demonstrate that costs allocated by the Aumann-Shapley and the Friedman-Moulin cost allocation rules are easy to determine in practice using convex envelopment of registered cost data and parametric programming. Second, from the linear programming problems involved it becomes clear that the allocation rules, technically speaking, allocate the non-zero value of the dual variable for a convexity constraint on to the output vector. Hence, the allocation rules can also be used to allocate inefficiencies in non-parametric efficiency measurement models such as Data Envelopment Analysis (DEA). The convexity constraint of the BCC model introduces a non-zero slack in the objective function of the multiplier problem and we show that the cost allocation rules discussed in this paper can be used as candidates to allocate this slack value on to the input (or output) variables and hence enable a full allocation of the inefficiency on to the input (or output) variables as in the CCR model.
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