Interdisciplinarity, Gender Diversity, and Network Structure Predict the Centrality of AI Organizations

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Abstract

Artificial intelligence (AI) research plays an increasingly important role in society, impacting key aspects of human life. From face recognition algorithms aiding national security in airports, to software that advises judges in criminal cases, and medical staff in healthcare, AI research is shaping critical facets of our experience in the world. But who are the people and institutional bodies behind this influential research? What are the predictors of influence of AI researchers and research organizations? We study this question using social network analysis, in an exploration of the structural characteristics, i.e., network topology, of research organizations that shape modern AI. In a sample of 149 organizations with 9,987 affiliated authors of published papers in a major AI conference (NeurIPS) and two major conferences that specifically focus on societal impacts of AI (FAccT and AIES), we find that both industry and academic research organizations with influential authors are more interdisciplinary, more gender diverse, more hierarchical, and less clustered, even when controlling for the size of the organizations. Here, authors’ betweenness centrality in co-authorship networks is used as a measure of their influence. We also find that gender minorities (e.g., women) have less influence in the AI community, determined as lower betweenness centrality in co-authorship networks. These results suggest that while diversity adds significant value to AI research organizations, the individuals contributing to the increased diversity are marginalized in the AI field. We discuss these results in the context of current events with important societal implications.

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License: CC-BY-4.0