集体行动
集体智慧
搭便车问题
搭便车
社会困境
社会心理学
投票
公共物品
社会智力
动作(物理)
心理学
多样性(政治)
认知心理学
微观经济学
计算机科学
知识管理
经济
社会学
政治学
物理
量子力学
激励
政治
人类学
法学
作者
Ofer Tchernichovski,Seth Frey,Nori Jacoby,Dalton Conley
标识
DOI:10.1073/pnas.2311497120
摘要
Collective intelligence challenges are often entangled with collective action problems. For example, voting, rating, and social innovation are collective intelligence tasks that require costly individual contributions. As a result, members of a group often free ride on the information contributed by intrinsically motivated people. Are intrinsically motivated agents the best participants in collective decisions? We embedded a collective intelligence task in a large-scale, virtual world public good game and found that participants who joined the information system but were reluctant to contribute to the public good (free riders) provided more accurate evaluations, whereas participants who rated frequently underperformed. Testing the underlying mechanism revealed that a negative rating bias in free riders is associated with higher accuracy. Importantly, incentivizing evaluations amplifies the relative influence of participants who tend to free ride without altering the (higher) quality of their evaluations, thereby improving collective intelligence. These results suggest that many of the currently available information systems, which strongly select for intrinsically motivated participants, underperform and that collective intelligence can benefit from incentivizing free riding members to engage. More generally, enhancing the diversity of contributor motivations can improve collective intelligence in settings that are entangled with collective action problems.
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