友善消弭混乱:在不确定的情况下,友善能提高团队绩效

Soo Ling Lim, P. Bentley, R. Peterson, Xiaoran Hu, JoEllyn Prouty McLaren
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引用次数: 2

摘要

团队是人类成就的核心。在过去的半个世纪里,心理学家已经确定了五大跨文化有效的人格变量:神经质、外向性、开放性、尽责性和宜人性。前四项与团队绩效的关系是一致的。然而,亲和性(和谐、利他、谦逊和合作)与团队绩效之间的关系不显著,且变化很大。我们通过计算建模来解决这种不一致。一个基于主体的模型(ABM)被用来预测人格特质对团队合作的影响,然后一个遗传算法被用来探索ABM的极限,以发现哪些特质与不同程度的不确定性(噪音)问题中表现最好和最差的团队相关。通过分析迄今为止最大的团队绩效数据集之一的以前未见过的数据,该数据集包括593个团队的3698名个人,他们在不确定和不确定的情况下完成了5000多个小组任务,这些数据收集于10年期间。我们的研究发现,团队绩效与亲和性之间的依赖关系受到任务不确定性的调节。以这种方式将进化计算与ABMs相结合,为团队合作的科学研究提供了一种新的方法,可以做出新的预测,提高我们对人类行为的理解。我们的研究结果证实了计算机建模在发展理论方面的潜在用处,同时也揭示了随着工作环境变得越来越不稳定和不确定,团队的未来。
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Kill chaos with kindness: Agreeableness improves team performance under uncertainty
Teams are central to human accomplishment. Over the past half-century, psychologists have identified the Big-Five cross-culturally valid personality variables: Neuroticism, Extraversion, Openness, Conscientiousness, and Agreeableness. The first four have shown consistent relationships with team performance. Agreeableness (being harmonious, altruistic, humble, and cooperative), however, has demonstrated a non-significant and highly variable relationship with team performance. We resolve this inconsistency through computational modelling. An agent-based model (ABM) is used to predict the effects of personality traits on teamwork, and a genetic algorithm is then used to explore the limits of the ABM in order to discover which traits correlate with best and worst performing teams for a problem with different levels of uncertainty (noise). New dependencies revealed by the exploration are corroborated by analyzing previously unseen data from one of the largest datasets on team performance to date comprising 3698 individuals in 593 teams working on more than 5000 group tasks with and without uncertainty, collected over a 10-year period. Our finding is that the dependency between team performance and Agreeableness is moderated by task uncertainty. Combining evolutionary computation with ABMs in this way provides a new methodology for the scientific investigation of teamwork, making new predictions, and improving our understanding of human behaviors. Our results confirm the potential usefulness of computer modelling for developing theory, as well as shedding light on the future of teams as work environments are becoming increasingly fluid and uncertain.
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