从罕见事件中学习的噪声信号

D. Maslach, O. Branzei, Claus Rerup, Mark J. Zbaracki
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引用次数: 23

摘要

企业越来越多地可以通过公共存储库访问有关其他企业失败事件的信息。我们研究了一个这样的存储库,它积累了医疗器械行业不良事件的报告。我们提供定性证据,表明公司如何选择不良事件样本,然后进行推理学习。我们表明,企业利用他人的报告,从其他企业的不良事件中提取新的有效知识。我们使用定量证据来探索如何使用公共存储库来提供替代学习的更直接证据。我们的发现挑战了一些关于替代学习的标准假设。首先,我们展示了存储库中的学习不是来自其他参考对象。相反,它直接出现在通常可能被视为噪音的失败事件中。其次,我们表明学习不是来自模仿他人。相反,它是由公司成员在汇总单个失败事件以识别可能的失败事件时构建的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise as Signal in Learning from Rare Events
Firms increasingly have access to information about the failure events of other firms through public repositories. We study one such repository that accumulates reports of adverse events in the medical device industry. We provide qualitative evidence that shows how firms select a sample of adverse events and then engage in inferential learning. We show that firms use the reports of others to extract new valid knowledge from the adverse events in other firms. We use quantitative evidence to explore how a public repository can be used to provide more direct evidence of vicarious learning. Our findings challenge some standard assumptions about vicarious learning. First, we show that the learning in a repository does not come from referent others. Instead, it emerges directly from failure events that might ordinarily be dismissed as noise. Second, we show that the learning does not come from copying others. Instead, it is constructed by firm members as they assemble individual failure events to identify possi...
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