Recruiting Hay to Find Needles: Recursive Incentives and Innovation in Social Networks

Erik P. Duhaime, Brittany M. Bond, Qi Yang, P. D. Boer, T. Malone
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引用次数: 2

Abstract

Finding innovative solutions to complex problems is often about finding people who have access to novel information and alternative viewpoints. Research has found that most people are connected to each other through just a few degrees of separation, but successful social search is often difficult because it depends on people using their weak ties to make connections to distant social networks. Recursive incentive schemes have shown promise for social search by motivating people to use their weak ties to find distant targets, such as specific people or even weather balloons placed at undisclosed locations. Here, we report on a case study of a similar recursive incentive scheme for finding innovative ideas. Specifically, we implemented a competition to reward individuals(s) who helped refer Grand Prize winner(s) in MIT's Climate CoLab, an open innovation platform for addressing global climate change. Using data on over 78,000 CoLab members and over 36,000 people from over 100 countries who engaged with the referral contest, we find that people who are referred using this method are more likely than others to submit proposals and to submit high quality proposals. Furthermore, we find suggestive evidence that among the contributors referred via the contest, those who had more than one degree of separation from a pre-existing CoLab member were more likely to submit high quality proposals. Thus, the results from this case study are consistent the theory that people from distant networks are more likely to provide innovative solutions to complex problems. More broadly, the results suggest that rewarding indirect intermediaries in addition to final finders may promote effective social network recruitment.
招聘干草找针:递归激励和创新的社会网络
为复杂问题寻找创新的解决方案往往需要找到能够接触到新信息和不同观点的人。研究发现,大多数人通过几度的分离来联系彼此,但成功的社交搜索通常是困难的,因为它依赖于人们利用他们的弱关系来建立与遥远的社交网络的联系。通过激励人们利用自己的弱关系来寻找遥远的目标,比如特定的人,甚至是放置在秘密地点的气象气球,递归激励方案在社交搜索方面显示出了希望。在这里,我们报告了一个类似的寻找创新想法的递归激励方案的案例研究。具体来说,我们实施了一项竞赛,奖励那些帮助推荐麻省理工学院气候合作实验室(一个应对全球气候变化的开放式创新平台)大奖得主的个人。通过使用来自100多个国家的78,000多名CoLab成员和36,000多名参与推荐竞赛的人的数据,我们发现使用这种方法被推荐的人比其他人更有可能提交提案,并且提交高质量的提案。此外,我们发现,在通过竞赛推荐的贡献者中,那些与先前的CoLab成员有一个以上程度分离的人更有可能提交高质量的提案。因此,本案例研究的结果与来自遥远网络的人更有可能为复杂问题提供创新解决方案的理论是一致的。更广泛地说,结果表明,除了最终发现者之外,奖励间接中介可能会促进有效的社会网络招聘。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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