反事实思维
组织公民行为
心理学
助人行为
护理部
重症监护
实证研究
公民身份
结果(博弈论)
范式转换
急症护理
医疗保健
价值(数学)
梅德林
倦怠
轮班制
社会心理学
工作(物理)
应用心理学
病历
调度(生产过程)
护理人员
医学
同等条件下
组织文化
病人护理
作者
Zhaohui (Zoey) Jiang,John Silberholz,Yixin (Iris) Wang,Deena Kelly Costa,Michael Sjoding
出处
期刊:Management Science
[Institute for Operations Research and the Management Sciences]
日期:2025-11-21
标识
DOI:10.1287/mnsc.2022.00465
摘要
Employees routinely make valuable contributions at work that are not part of their formal job description, such as helping a struggling coworker. These contributions, termed organizational citizenship behavior, are studied from many angles in the organizational behavior literature. However, the degree to which the past helping behavior of employees scheduled to a shift impacts that shift’s operational outcomes remains an underexplored question. We define two measures of past helping behavior for members of a shift—the total past helping of each employee and the past helping between each pair of employees—and hypothesize that they are associated with shift performance. We empirically confirm our hypotheses with detailed scheduling and patient outcome data from six intensive care units (ICUs) at a large academic medical center, using the hospital’s electronic medical records to identify cases of one nurse helping another. Our empirical results indicate that both measures of past helping are predictive of patient length of stay (LOS), more so than the broadly studied notion of team familiarity. Counterfactual analysis shows that relatively small changes in shift composition can yield significant reduction in total LOS, indicating the managerial significance of the results. Overall, our study suggests the potential value of shift scheduling using data on past helping behaviors, and this may have promise far beyond the selected application to ICU nursing. This paper was accepted by Elena Katok, operations management. Supplemental Material: The online appendix and data files are available at https://doi.org/10.1287/mnsc.2022.00465 .
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