Informational Diversity and Affinity Bias in Team Growth Dynamics
Hoda Heidari, Solon Barocas, Jon Kleinberg, and Karen Levy

TL;DR
This paper models team formation dynamics to understand how affinity bias and informational diversity influence team composition and performance, revealing path-dependent behaviors and potential limitations of utility-driven diversity efforts.
Contribution
It introduces a sequential model of team growth that captures how initial compositions and biases affect the pursuit of informational diversity and team performance.
Findings
Teams can get stuck at suboptimal diversity levels.
Majority groups may crowd out minority opinions.
Initial team composition influences long-term diversity and performance.
Abstract
Prior work has provided strong evidence that, within organizational settings, teams that bring a diversity of information and perspectives to a task are more effective than teams that do not. If this form of informational diversity confers performance advantages, why do we often see largely homogeneous teams in practice? One canonical argument is that the benefits of informational diversity are in tension with affinity bias. To better understand the impact of this tension on the makeup of teams, we analyze a sequential model of team formation in which individuals care about their team's performance (captured in terms of accurately predicting some future outcome based on a set of features) but experience a cost as a result of interacting with teammates who use different approaches to the prediction task. Our analysis of this simple model reveals a set of subtle behaviors that team-growth…
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Taxonomy
TopicsBusiness Strategy and Innovation · Evolutionary Game Theory and Cooperation · Complex Systems and Decision Making
