从罕见事件中学习:将噪声视为信号

Noise as Signal in Learning from Rare Events

ORGANIZATION SCIENCE · 2018
被引 40
人大 AFT50UTD24ABS 4*

中文导读

研究了企业如何利用公共数据库中其他公司的失败事件报告进行推断性学习,发现学习并非来自模仿他人,而是从通常被视为噪声的失败事件中直接提取新知识。

Abstract

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 possibilities they had not considered. Third, in contrast to vicarious learning, where the referent others and rare events provide the context, repository-based learning requires that actors impose their own context as part of the learning process. Our qualitative and quantitative evidence serve explanatory purposes by showing how firms use a repository of failure events to identify moments of valid learning, and they serve exploratory purposes by investigating how we can demonstrate reliable learning from a repository of failure events. The e-companion is available at https://doi.org/10.1287/orsc.2017.1179 .

组织学习替代学习失败事件公共数据库医疗设备行业