Meluso John, Hébert-Dufresne Laurent
Vermont Complex Systems Center, College of Engineering & Mathematical Sciences, University of Vermont, Burlington, VT 05405.
Department of Computer Science, College of Engineering & Mathematical Sciences, University of Vermont, Burlington, VT 05405.
Proc Natl Acad Sci U S A. 2023 Aug 22;120(34):e2303568120. doi: 10.1073/pnas.2303568120. Epub 2023 Aug 14.
Many models of learning in teams assume that team members can share solutions or learn concurrently. However, these assumptions break down in multidisciplinary teams where team members often complete distinct, interrelated pieces of larger tasks. Such contexts make it difficult for individuals to separate the performance effects of their own actions from the actions of interacting neighbors. In this work, we show that individuals can overcome this challenge by learning from network neighbors through mediating artifacts (like collective performance assessments). When neighbors' actions influence collective outcomes, teams with different networks perform relatively similarly to one another. However, varying a team's network can affect performance on tasks that weight individuals' contributions by network properties. Consequently, when individuals innovate (through "exploring" searches), dense networks hurt performance slightly by increasing uncertainty. In contrast, dense networks moderately help performance when individuals refine their work (through "exploiting" searches) by efficiently finding local optima. We also find that decentralization improves team performance across a battery of 34 tasks. Our results offer design principles for multidisciplinary teams within which other forms of learning prove more difficult.
许多团队学习模型假设团队成员可以共享解决方案或同时学习。然而,在多学科团队中,这些假设就不成立了,因为团队成员通常会完成大型任务中不同但相互关联的部分。在这种情况下,个人很难将自己行动的绩效影响与相互作用的邻人的行动区分开来。在这项研究中,我们表明,个人可以通过中介工件(如集体绩效评估)向网络邻人学习来克服这一挑战。当邻人的行动影响集体成果时,具有不同网络的团队彼此的表现相对相似。然而,改变团队的网络会影响那些根据网络属性衡量个人贡献的任务的绩效。因此,当个人进行创新(通过“探索”性搜索)时,密集网络会因增加不确定性而略微损害绩效。相比之下,当个人通过高效地找到局部最优来完善工作(通过“利用”性搜索)时,密集网络会适度提升绩效。我们还发现,在一系列34项任务中,去中心化都能提高团队绩效。我们的研究结果为多学科团队提供了设计原则,在这类团队中,其他形式的学习会更加困难。