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Improving aggregated forecasts of probability

机译:改善概率的综合预测

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The Coherent Approximation Principle (CAP) is a method for aggregating forecasts of probability from a group of judges by enforcing coherence with minimal adjustment. This paper explores two methods to further improve the forecasting accuracy within the CAP framework and proposes practical algorithms that implement them. These methods allow flexibility to add fixed constraints to the coherentization process and compensate for the psychological bias present in probability estimates from human judges. The algorithms were tested on a data set of nearly half a million probability estimates of events related to the 2008 U.S. presidential election (from about 16000 judges). The results show that both methods improve the stochastic accuracy of the aggregated forecasts compared to using simple CAP.
机译:相干近似原理(CAP)是一种通过以最小的调整实施相干性来汇总一组法官的概率预测的方法。本文探索了两种方法来进一步提高CAP框架内的预测准确性,并提出了实现它们的实用算法。这些方法允许灵活地为相干过程添加固定的约束,并补偿人类法官的概率估计中存在的心理偏见。该算法在与2008年美国总统大选有关的事件的概率估计接近一百万的数据集上进行了测试(来自约16000名法官)。结果表明,与使用简单CAP相比,这两种方法均可提高汇总预测的随机准确性。

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