更小更聪明的群体的智慧

D. Goldstein, R. McAfee, Siddharth Suri
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引用次数: 64

摘要

“群体智慧”指的是一种现象,即一大群人的预测总和可以与专家的预测准确性相媲美,甚至超过专家的预测准确性。在具有大量随机元素的领域,如选股,群体策略(如索引)很难被击败。然而,在一些群体成员明显比其他人更有技能的领域,聪明的子群体可能会比整体表现得更好。这项工作解决的核心问题是,在具有大量技能和运气成分的大规模预测竞赛中,是否可以先验地识别出人群中的这些智能子集。我们用从《梦幻足球》中获得的数据来研究这个问题,在这款游戏中,数百万人选择英超联赛的职业球员加入他们的梦幻足球队。职业球员在现实生活中的表现越好,虚拟球队获得的分数就越多。梦幻足球非常适合这项调查,因为它包含数百万个个人层面的预测,主题内的预测,过去的表现指标,以及测试任意球员选择策略有效性的能力。我们发现,更小、更聪明的人群可以提前被识别出来,他们的智慧胜过更大的人群。我们还表明,许多玩家可以通过简单地模仿过去表现出色的玩家的策略来做得更好。最后,我们提供了一个理论模型来解释我们从实证分析中看到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The wisdom of smaller, smarter crowds
The "wisdom of crowds" refers to the phenomenon that aggregated predictions from a large group of people can rival or even beat the accuracy of experts. In domains with substantial stochastic elements, such as stock picking, crowd strategies (e.g. indexing) are difficult to beat. However, in domains in which some crowd members have demonstrably more skill than others, smart sub-crowds could possibly outperform the whole. The central question this work addresses is whether such smart subsets of a crowd can be identified a priori in a large-scale prediction contest that has substantial skill and luck components. We study this question with data obtained from fantasy soccer, a game in which millions of people choose professional players from the English Premier League to be on their fantasy soccer teams. The better the professional players do in real life games, the more points fantasy teams earn. Fantasy soccer is ideally suited to this investigation because it comprises millions of individual-level, within-subject predictions, past performance indicators, and the ability to test the effectiveness of arbitrary player-selection strategies. We find that smaller, smarter crowds can be identified in advance and that they beat the wisdom of the larger crowd. We also show that many players would do better by simply imitating the strategy of a player who has done well in the past. Finally, we provide a theoretical model that explains the results we see from our empirical analyses.
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