K. C. Lichtendahl, Y. Grushka-Cockayne, R. L. Winkler
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引用次数: 131
摘要
我们考虑了两种使用简单平均数来汇总专家意见的方法:平均概率和平均分位数。我们考察了这些预测的分析性质,并比较了它们利用大众智慧的能力。就位置而言,两个平均预报的平均值相同。平均分位数预测总是更清晰:它的方差低于平均概率预测。即使当平均概率预测过于自信时,平均分位数预测的形状仍然提供了更好预测的可能性。利用《专业预测者调查》(Survey of Professional forecasts)对国内生产总值(gdp)增长和通胀的概率预测,我们提出证据表明,无论是在平均概率预测过于自信还是过于自信时,它的表现都优于平均分位数预测。我们的结果表明,平均分位数是一种可行的替代方案,并指出在某些条件下,它可能比平均概率更有用。这篇论文被决策分析的Peter Wakker接受。
Is it Better to Average Probabilities or Quantiles?
We consider two ways to aggregate expert opinions using simple averages: averaging probabilities and averaging quantiles. We examine analytical properties of these forecasts and compare their ability to harness the wisdom of the crowd. In terms of location, the two average forecasts have the same mean. The average quantile forecast is always sharper: it has lower variance than the average probability forecast. Even when the average probability forecast is overconfident, the shape of the average quantile forecast still offers the possibility of a better forecast. Using probability forecasts for gross domestic product growth and inflation from the Survey of Professional Forecasters, we present evidence that both when the average probability forecast is overconfident and when it is underconfident, it is outperformed by the average quantile forecast. Our results show that averaging quantiles is a viable alternative and indicate some conditions under which it is likely to be more useful than averaging probabilities. This paper was accepted by Peter Wakker, decision analysis.