Eliciting Human Judgment for Prediction Algorithms

Rouba Ibrahim, Song-Hee Kim, Jordan D. Tong
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引用次数: 32

Abstract

Even when human point forecasts are less accurate than data-based algorithm predictions, they can still help boost performance by being used as algorithm inputs. Assuming one uses human judgment indirectly in this manner, we propose changing the elicitation question from the traditional direct forecast (DF) to what we call the private information adjustment (PIA): how much the human thinks the algorithm should adjust its forecast to account for information the human has that is unused by the algorithm. Using stylized models with and without random error, we theoretically prove that human random error makes eliciting the PIA lead to more accurate predictions than eliciting the DF. However, this DF-PIA gap does not exist for perfectly consistent forecasters. The DF-PIA gap is increasing in the random error that people make while incorporating public information (data that the algorithm uses) but is decreasing in the random error that people make while incorporating private information (data that only the human can use). In controlled experiments with students and Amazon Mechanical Turk workers, we find support for these hypotheses. This paper was accepted by Charles Corbett, operations management.
引出人类对预测算法的判断
即使人类的点预测不如基于数据的算法预测准确,它们仍然可以作为算法输入来帮助提高性能。假设一个人以这种方式间接地使用人类的判断,我们建议将启发问题从传统的直接预测(DF)改变为我们所谓的私人信息调整(PIA):人类认为算法应该在多大程度上调整其预测,以考虑人类拥有的算法未使用的信息。使用有随机误差和没有随机误差的风格化模型,我们从理论上证明了人为随机误差使得引出PIA比引出DF产生更准确的预测。然而,对于完全一致的预测者,这种DF-PIA差距并不存在。DF-PIA差距在纳入公共信息(算法使用的数据)时出现的随机误差上呈增大趋势,但在纳入私人信息(只有人类才能使用的数据)时出现的随机误差上呈减小趋势。在对学生和亚马逊土耳其机器人员工的对照实验中,我们发现了对这些假设的支持。这篇论文被运营管理的Charles Corbett接受。
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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