Published:
2019-10-21
Proceedings:
Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 7
Volume
Issue:
Vol. 7 (2019): Proceedings of the Seventh AAAI Conference on Human Computation and Crowdsourcing
Track:
Technical Papers
Downloads:
Abstract:
In a variety of problem domains, it has been observed that the aggregate opinions of groups are often more accurate than those of the constituent individuals, a phenomenon that has been dubbed the “wisdom of the crowd”. However, due to the varying contexts, sample sizes, methodologies, and scope of previous studies, it has been difficult to gauge the extent to which conclusions generalize. To investigate this question, we carried out a large online experiment to systematically evaluate crowd performance on 1,000 questions across 50 topical domains. We further tested the effect of different types of social influence on crowd performance. For example, in one condition, participants could see the cumulative crowd answer before providing their own. In total, we collected more than 500,000 responses from nearly 2,000 participants. We have three main results. First, averaged across all questions, we find that the crowd indeed performs better than the average individual in the crowd—but we also find substantial heterogeneity in performance across questions. Second, we find that crowd performance is generally more consistent than that of individuals; as a result, the crowd does considerably better than individuals when performance is computed on a full set of questions within a domain. Finally, we find that social influence can, in some instances, lead to herding, decreasing crowd performance. Our findings illustrate some of the subtleties of the wisdom-of-crowds phenomenon, and provide insights for the design of social recommendation platforms.
DOI:
10.1609/hcomp.v7i1.5271
HCOMP
Vol. 7 (2019): Proceedings of the Seventh AAAI Conference on Human Computation and Crowdsourcing
ISBN 978-1-57735-820-6