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Deep Neural Ranking for Crowdsourced Geopolitical Event Forecasting

机译:深度神经网络用于众包地缘政治事件预测

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There are many examples of 'wisdom of the crowd' effects in which the large number of participants imparts confidence in the collective judgment of the crowd. But how do we form an aggregated judgment when the size of the crowd is limited? Whose judgments do we include, and whose do we accord the most weight? This paper considers this problem in the context of geopolitical event forecasting, where volunteer analysts are queried to give their expertise, confidence, and predictions about the outcome of an event. We develop a forecast aggregation model that integrates topical information about a question, meta-data about a pair of forecasters, and their predictions in a deep Siamese neural network that decides which forecasters' predictions are more likely to be close to the correct response. A ranking of the forecasters is induced from a tournament of pair-wise forecaster comparisons, with the ranking used to create an aggregate forecast. Preliminary results find the aggregate prediction of the best forecasters ranked by our deep Siamese network model consistently beats typical aggregation techniques by Brier score.
机译:有许多“群众智慧”效应的例子,其中大量参与者对群众的集体判断赋予了信心。但是,当人群规模有限时,我们如何形成汇总判断?我们包括谁的判断,我们最重视谁?本文在地缘政治事件预测的背景下考虑了这个问题,在此情况下,志愿者分析员被要求提供其专业知识,信心以及对事件结果的预测。我们开发了一个预测汇总模型,该模型将有关问题的主题信息,有关一对预测者的元数据以及他们的预测整合到一个深层的暹罗神经网络中,该神经网络决定哪些预测者的预测更可能接近正确的响应。预测器的排名是从成对的预测器比较锦标赛中得出的,该排名用于创建汇总预测。初步结果发现,通过我们的深层暹罗网络模型排名的最佳预测者的总体预测在Brier得分方面始终胜过典型的聚合技术。

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