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Dea Game Cross-efficiency Approach To Olympic Rankings

机译:Dea比赛跨效率方法在奥运排名中

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A number of studies have used data envelopment analysis (DEA) to evaluate the performance of the countries in Olympic games. While competition exists among the countries in Olympic games/rankings, all these DEA studies do not model competition among peer decision making units (DMUs) or countries. These DEA studies find a set of weights/multipliers that keep the efficiency scores of all DMUs at or below unity. Although cross efficiency goes a further step by providing an efficiency measure in terms of the best multiplier bundle for the unit and all the other DMUs, it is not always unique. This paper presents a new and modified DEA game cross-efficiency model where each DMU is viewed as a competitor via non-cooperative game. For each competing DMU, a multiplier bundle is determined that optimizes the efficiency score for that DMU, with the additional constraint that the resulting score should be at or above that DMU 's estimated best performance. The problem, of course, arises that we will not know this best performance score for the DMU under evaluation until the best performances of all other DMUs are known. To combat this "chicken and egg" phenomenon, an iterative approach leading to the Nash equilibrium is presented. The current paper provides a modified variable returns to scale (VRS) model that yields non-negative cross-efficiency scores. The approach is applied to the last six Summer Olympic Games. Our results may indicate that our game cross-efficiency model implicitly incorporates the relative importance of gold, silver and bronze medals without the need for specifying the exact assurance regions.
机译:许多研究使用数据包络分析(DEA)评估了各国在奥运会中的表现。尽管在奥运会/排名中各国之间存在竞争,但所有这些DEA研究都无法为同级决策单位(DMU)或国家之间的竞争建模。这些DEA研究发现了一组权重/乘数,使所有DMU的效率得分保持在或低于1。尽管交叉效率通过提供针对该设备和所有其他DMU的最佳乘数捆绑器的效率度量来走得更远,但它并不总是唯一的。本文提出了一种新的和改进的DEA博弈交叉效率模型,其中每个DMU通过非合作博弈被视为竞争者。对于每个竞争DMU,确定一个乘数捆绑包,以优化该DMU的效率得分,并附加约束,即所得得分应等于或高于DMU的最佳估计性能。当然,问题出在,除非知道所有其他DMU的最佳性能,否则我们将不知道被评估DMU的最佳性能得分。为了对抗这种“鸡鸡蛋”现象,提出了一种导致纳什均衡的迭代方法。当前的论文提供了一个修正的可变规模收益(VRS)模型,该模型得出了非负的交叉效率得分。该方法适用于最近的六届夏季奥运会。我们的结果可能表明,我们的游戏交叉效率模型隐含了金牌,银牌和铜牌的相对重要性,而无需指定确切的保证区域。

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