Harnessing the Wisdom of Crowds

成果类型:
Article
署名作者:
Da, Zhi; Huang, Xing
署名单位:
University of Notre Dame; Washington University (WUSTL)
刊物名称:
MANAGEMENT SCIENCE
ISSN/ISSBN:
0025-1909
DOI:
10.1287/mnsc.2019.3294
发表日期:
2020
页码:
1847-1867
关键词:
wisdom of crowds herding naive learning social learning Group decision making Earnings forecast
摘要:
When will a large group provide an accurate answer to a question involving quantity estimation? We empirically examine this question on a crowd-based corporate earnings forecast platform (Estimize.com). By tracking user activities, we monitor the amount of public information a user views before making an earnings forecast. We find that the more public information users view, the less weight they put on their own private information. Although this improves the accuracy of individual forecasts, it reduces the accuracy of the group consensus forecast because useful private information is prevented from entering the consensus. To address endogeneity concerns related to a user's information acquisition choice, we collaborate with Estimize.com to run experiments that restrict the information available to randomly selected stocks and users. The experiments confirm that independent forecasts result in a more accurate consensus. Estimize.com was convinced to switch to a blind platform from November 2015 on. The findings suggest that the wisdom of crowds can be better harnessed by encouraging independent voices from among group members and that more public information disclosure may not always improve group decision making.