Sponsored By Acm's Special Interest Group On Electronic Commerce (sigecom) With Support From Combinenet And Yahoo! Research Labs. Acm Order Number 619050--t.p. Verso. Includes Bibliographical References And Author Index. Also Issued Online Via The Acm Digital Library.
[ACM Press the 6th ACM conference - Vancouver, BC, Canada (2005.06.05-2005.06.08)] Proceedings of the 6th ACM conference on Electronic commerce - EC '05 - Information markets vs. opinion pools
โ Scribed by Chen, Yiling; Chu, Chao-Hsien; Mullen, Tracy; Pennock, David M.
- Book ID
- 120594982
- Publisher
- ACM Press
- Year
- 2005
- Tongue
- English
- Weight
- 238 KB
- Edition
- 2005
- Category
- Article
- ISBN-13
- 9781595930491
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โฆ Synopsis
In this paper, we examine the relative forecast accuracy of information markets versus expert aggregation. We leverage a unique data source of almost 2000 people's subjective probability judgments on 2003 US National Football League games and compare with the "market probabilities" given by two different information markets on exactly the same events. We combine assessments of multiple experts via linear and logarithmic aggregation functions to form pooled predictions. Prices in information markets are used to derive market predictions. Our results show that, at the same time point ahead of the game, information markets provide as accurate predictions as pooled expert assessments. In screening pooled expert predictions, we find that arithmetic average is a robust and efficient pooling function; weighting expert assessments according to their past performance does not improve accuracy of pooled predictions; and logarithmic aggregation functions offer bolder predictions than linear aggregation functions. The results provide insights into the predictive performance of information markets, and the relative merits of selecting among various opinion pooling methods.
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