论文标题

社会学习和人群智慧的准确性风险权衡

Social Learning and the Accuracy-Risk Trade-off in the Wisdom of the Crowd

论文作者

Adjodah, Dhaval, Leng, Yan, Chong, Shi Kai, Krafft, P. M., Moro, Esteban, Pentland, Alex

论文摘要

我们如何设计和部署众包的预测平台,以实现风险是预测性能的重要方面的现实应用程序?为了回答这个问题,我们对参与者进行了巨大的在线智慧,参与者预测了实际金融资产的价格(例如标准普尔500指数)。我们观察到预测和风险的准确性之间的帕累托前沿,发现这种权衡是通过社会学习来介导的,即社交学习越来越杠杆化,这会导致较低的准确性,但也降低了风险。我们还观察到,在英国脱欧投票的高市场不确定性期间,社会学习在我们发生的一轮比赛中提高了卓越的准确性。我们的结果对众包预测平台的设计有影响:例如,他们认为,人群的表现应通过使用准确性和风险来更全面地表征(根据财务和统计预测的标准),而与先前的预测风险相比,人们应该忽略了预测风险。

How do we design and deploy crowdsourced prediction platforms for real-world applications where risk is an important dimension of prediction performance? To answer this question, we conducted a large online Wisdom of the Crowd study where participants predicted the prices of real financial assets (e.g. S&P 500). We observe a Pareto frontier between accuracy of prediction and risk, and find that this trade-off is mediated by social learning i.e. as social learning is increasingly leveraged, it leads to lower accuracy but also lower risk. We also observe that social learning leads to superior accuracy during one of our rounds that occurred during the high market uncertainty of the Brexit vote. Our results have implications for the design of crowdsourced prediction platforms: for example, they suggest that the performance of the crowd should be more comprehensively characterized by using both accuracy and risk (as is standard in financial and statistical forecasting), in contrast to prior work where risk of prediction has been overlooked.

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