The Variance Learning Curve

Hessam Bavafa, J. Jónasson
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引用次数: 7

Abstract

The expansive learning curve literature in operations management has established how various facets of prior experience improve average performance. In this paper, we explore how increased cumulative experience affects performance variability or consistency. We use a two-stage estimation method of a heteroskedastic learning curve model to examine the relationship between experience and performance variability among paramedics at the London Ambulance Service. We find that, for paramedics with lower experience, an increase in experience of 500 jobs reduces the variance of task completion time by 8.7%, in addition to improving average completion times by 2.7%. Similar to prior results on the average learning curve, we find a diminishing impact of additional experience on the variance learning curve. We provide an evidence base for how to model the learning benefits of cumulative experience on performance in service systems. Our findings imply that the benefits of learning are substantially underestimated if the consistency effect is ignored. Specifically, our estimates indicate that queue lengths (or wait times) might be overestimated by as much as 4% by ignoring the impact of the variance learning curve in service systems. Furthermore, our results suggest that previously established drivers of productivity should be revisited to examine how they affect consistency, in addition to average performance. This paper was accepted by Charles Corbett, operations management.
方差学习曲线
在运营管理方面,广泛的学习曲线文献已经确定了先前经验的各个方面如何提高平均绩效。在本文中,我们探讨了增加的累积经验如何影响性能的可变性或一致性。我们使用异方差学习曲线模型的两阶段估计方法来检验伦敦救护车服务护理人员之间的经验和绩效变异性之间的关系。我们发现,对于经验较低的护理人员,500个工作经验的增加减少了8.7%的任务完成时间方差,除了提高2.7%的平均完成时间。与平均学习曲线上的先前结果类似,我们发现额外经验对方差学习曲线的影响逐渐减小。我们为如何模拟服务系统中累积经验对绩效的学习效益提供了一个证据基础。我们的研究结果表明,如果忽视一致性效应,学习的好处就会被大大低估。具体来说,我们的估计表明,由于忽略了服务系统中方差学习曲线的影响,队列长度(或等待时间)可能被高估了4%。此外,我们的研究结果表明,除了平均绩效外,应该重新审视以前建立的生产力驱动因素,以检查它们如何影响一致性。这篇论文被运营管理的Charles Corbett接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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