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The impact of mismeasurement in performance benchmarking: A Monte Carlo comparison of SFA and DEA with different multi-period budgeting strategies

机译:错误衡量对绩效基准的影响:不同时间段预算策略下SFA和DEA的蒙特卡洛比较

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Performance-based budgeting has received increasing attention from public and for-profit organizations in an effort to achieve a fair and balanced allocation of funds among their individual producers or operating units for overall system optimization. Although existing frontier estimation models can be used to measure and rank the performance of each producer, few studies have addressed how the mismeasurement by frontier estimation models affects the budget allocation and system performance. There is therefore a need for analysis of the accuracy of performance assessments in performance-based budgeting. This paper reports the results of a Monte Carlo analysis in which measurement errors are introduced and the system throughput in various experimental scenarios is compared. Each scenario assumes a different multi-period budgeting strategy and production frontier estimation model; the frontier estimation models considered are stochastic frontier analysis (SFA) and data envelopment analysis (DEA). The main results are as follows: (1) the selection of a proper budgeting strategy and benchmark model can lead to substantial improvement in the system throughput; (2) a "peanut butter" strategy outperforms a discriminative strategy in the presence of relatively high measurement errors, but a discriminative strategy is preferred for small measurement errors; (3) frontier estimation models outperform models with randomly-generated ranks even in cases with relatively high measurement errors; (4) SFA outperforms DEA for small measurement errors, but DEA becomes increasingly favorable relative to SFA as the measurement errors increase. (C) 2014 Elsevier B.V. All rights reserved,
机译:基于绩效的预算越来越受到公共和营利组织的关注,以期在其各个生产者或运营单位之间实现公平,均衡的资金分配,以进行整体系统优化。尽管可以使用现有的边界估算模型来衡量每个生产者的绩效并对其进行排名,但是很少有研究解决边界估算模型的错误度量如何影响预算分配和系统绩效的问题。因此,需要对基于绩效的预算编制中的绩效评估的准确性进行分析。本文报告了蒙特卡洛分析的结果,其中引入了测量误差并比较了各种实验方案下的系统吞吐量。每个方案都采用不同的多期预算策略和生产前沿估算模型;考虑的边界估计模型是随机边界分析(SFA)和数据包络分析(DEA)。主要结果如下:(1)选择适当的预算策略和基准模型可以大大提高系统的吞吐量; (2)在存在相对较高的测量误差的情况下,“花生酱”策略要优于判别策略,但对于较小的测量误差,最好采用判别策略; (3)即使在测量误差相对较高的情况下,边界估计模型也优于具有随机生成秩的模型。 (4)对于较小的测量误差,SFA优于DEA,但随着测量误差的增加,DEA相对于SFA变得越来越有利。 (C)2014 Elsevier B.V.保留所有权利,

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