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量化机器对人类预测者的影响。

Quantifying machine influence over human forecasters.

机构信息

Information Sciences Institute, University of Southern California, Marina del Rey, CA, USA.

出版信息

Sci Rep. 2020 Sep 29;10(1):15940. doi: 10.1038/s41598-020-72690-4.

Abstract

Crowdsourcing human forecasts and machine learning models each show promise in predicting future geopolitical outcomes. Crowdsourcing increases accuracy by pooling knowledge, which mitigates individual errors. On the other hand, advances in machine learning have led to machine models that increase accuracy due to their ability to parameterize and adapt to changing environments. To capitalize on the unique advantages of each method, recent efforts have shown improvements by "hybridizing" forecasts-pairing human forecasters with machine models. This study analyzes the effectiveness of such a hybrid system. In a perfect world, independent reasoning by the forecasters combined with the analytic capabilities of the machine models should complement each other to arrive at an ultimately more accurate forecast. However, well-documented biases describe how humans often mistrust and under-utilize such models in their forecasts. In this work, we present a model that can be used to estimate the trust that humans assign to a machine. We use forecasts made in the absence of machine models as prior beliefs to quantify the weights placed on the models. Our model can be used to uncover other aspects of forecasters' decision-making processes. We find that forecasters trust the model rarely, in a pattern that suggests they treat machine models similarly to expert advisors, but only the best forecasters trust the models when they can be expected to perform well. We also find that forecasters tend to choose models that conform to their prior beliefs as opposed to anchoring on the model forecast. Our results suggest machine models can improve the judgment of a human pool but highlight the importance of accounting for trust and cognitive biases involved in the human judgment process.

摘要

众包人类预测和机器学习模型在预测未来地缘政治结果方面都显示出了潜力。众包通过汇集知识来提高准确性,从而减轻了个体的错误。另一方面,机器学习的进步导致了机器模型的准确性提高,因为它们能够参数化并适应不断变化的环境。为了利用每种方法的独特优势,最近的努力表明,通过“混合”预测——将人类预测员与机器模型配对,可以提高预测的准确性。本研究分析了这种混合系统的有效性。在理想情况下,预测员的独立推理与机器模型的分析能力相结合,应该相辅相成,从而得出最终更准确的预测。然而,有大量文献记录的偏见描述了人类在预测中如何经常不信任和低估这些模型。在这项工作中,我们提出了一个可以用来估计人类对机器信任程度的模型。我们使用没有机器模型的预测作为先验信念,来量化对模型的重视程度。我们的模型可以用来揭示预测者决策过程的其他方面。我们发现,预测者很少信任模型,这表明他们将机器模型与专家顾问同等对待,但只有最好的预测者才会在模型表现良好时信任模型。我们还发现,预测者倾向于选择符合其先验信念的模型,而不是锚定在模型预测上。我们的研究结果表明,机器模型可以改善人类群体的判断,但同时也强调了在人类判断过程中考虑信任和认知偏见的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8128/7524768/2ad63121b701/41598_2020_72690_Fig1_HTML.jpg

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