团队效能
时间轴
构造(python库)
知识管理
领域知识
知识体系
团队构成
实证研究
任务(项目管理)
知识整合
系统回顾
心理学
计算机科学
工程类
历史
认识论
哲学
考古
程序设计语言
法学
系统工程
政治学
梅德林
作者
Jessica L. Wildman,Amanda L. Thayer,Davin Pavlas,Eduardo Salas,John E. Stewart,William R. Howse
出处
期刊:Human Factors
[SAGE Publishing]
日期:2011-12-02
卷期号:54 (1): 84-111
被引量:78
标识
DOI:10.1177/0018720811425365
摘要
OBJECTIVE: This article provides a systematic review of the team knowledge literature and guidance for further research. BACKGROUND: Recent research has called attention to the need for the improved study and understanding of team knowledge. Team knowledge refers to the higher level knowledge structures that emerge from the interactions of individual team members. METHOD: We conducted a systematic review of the team knowledge literature, focusing on empirical work that involves the measurement of team knowledge constructs. For each study, we extracted author degree area, study design type, study setting, participant type, task type, construct type, elicitation method, aggregation method, measurement timeline, and criterion domain. RESULTS: Our analyses demonstrate that many of the methodological characteristics of team knowledge research can be linked back to the academic training of the primary author and that there are considerable gaps in our knowledge with regard to the relationships between team knowledge constructs, the mediating mechanisms between team knowledge and performance, and relationships with criteria outside of team performance, among others. We also identify categories of team knowledge not yet examined based on an organizing framework derived from a synthesis of the literature. CONCLUSION: There are clear opportunities for expansion in the study of team knowledge; the science of team knowledge would benefit from a more holistic theoretical approach. APPLICATION: Human factors researchers are increasingly involved in the study of teams. This review and the resulting organizing framework provide researchers with a summary of team knowledge research over the past 10 years and directions for improving further research.
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