Improving the Wisdom of Crowds with Analysis of Variance of Predictions of Related Outcomes

Ville A. Satopää
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引用次数: 4

Abstract

Abstract Decision-makers often collect and aggregate experts’ point predictions about continuous outcomes, such as stock returns or product sales. In this article, we model experts as Bayesian agents and show that means, including the (weighted) arithmetic mean, trimmed means, median, geometric mean, and essentially all other measures of central tendency, do not use all information in the predictions. Intuitively, they assume idiosyncratic differences to arise from error instead of private information and hence do not update the prior with all available information. Updating means in terms of unused information improves their expected accuracy but depends on the experts’ prior and information structure that cannot be estimated based on a single prediction per expert. In many applications, however, experts consider multiple stocks, products, or other related items at the same time. For such contexts, we introduce ANOVA updating – an unsupervised technique that updates means based on experts’ predictions of multiple outcomes from a common population. The technique is illustrated on several real-world datasets.
用相关结果预测方差分析提高群体智慧
决策者经常收集和汇总专家对连续结果(如股票收益或产品销售)的点预测。在本文中,我们将专家建模为贝叶斯代理,并表明,包括(加权)算术平均值、修剪平均值、中位数、几何平均值以及基本上所有其他集中趋势度量在内的平均值并没有在预测中使用所有信息。直观地,他们假设特殊性差异是由错误而不是私人信息引起的,因此不会用所有可用的信息更新先验。基于未使用信息的更新手段提高了其预期精度,但依赖于专家的先验和信息结构,无法基于每个专家的单一预测来估计。然而,在许多应用程序中,专家同时考虑多个股票、产品或其他相关项目。对于这种情况,我们引入方差分析更新-一种无监督技术,根据专家对普通人群的多个结果的预测更新means。该技术在几个真实世界的数据集上进行了说明。
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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