Shared language in the team network-performance association: Reconciling conflicting views of the network centralization effect on team performance

R. Reagans, Hagay C. Volvovsky, R. Burt
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Abstract

We reconcile two conflicting views of the network centralization effect on team performance. In one view, a centralized network is problematic because it limits knowledge transfer, making it harder for team members to discover productive combinations of their know-how and expertise. In the alternative view, the limits on knowledge transfer encourage search and experimentation, leading to the discovery of more valuable ideas. We maintain the two sides are not opposed but reflect two distinct ways centralization can affect a team’s shared problem-solving framework. The shared framework in our research is a shared language. We contend that team network centralization affects both how quickly a shared language emerges and the performance implications of the shared language that develops. We analyze the performance of 77 teams working to identify abstract symbols for 15 trials. Teams work under network conditions that vary with respect to centralization. Results indicate that centralized teams take longer to develop a shared language, but centralized teams also create a shared language that is more beneficial for performance. The findings also indicate that the highest performing teams are assigned to networks that combine elements of a centralized and a decentralized network.
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团队网络绩效关联中的共享语言:协调网络集中化对团队绩效影响的不同观点
我们调和了网络集中化对团队绩效影响的两种相互矛盾的观点。一种观点认为,集中式网络是有问题的,因为它限制了知识转移,使团队成员更难发现他们的知识和专业知识的有效组合。在另一种观点中,对知识转移的限制鼓励了搜索和实验,从而导致发现更有价值的想法。我们认为,这两方面并不对立,而是反映了集中化影响团队共同解决问题框架的两种截然不同的方式。我们研究中的共享框架是一种共享语言。我们认为,团队网络集中化既会影响共享语言出现的速度,也会影响开发的共享语言的性能。我们分析了77个团队在15次试验中识别抽象符号的表现。团队在网络条件下工作,这些网络条件随集中化程度的不同而变化。结果表明,集中式团队需要更长的时间来开发共享语言,但是集中式团队也可以创建更有利于性能的共享语言。研究结果还表明,表现最好的团队被分配到集中和分散网络元素相结合的网络中。
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