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'i have a feeling trump will win..................': Forecasting Winners and Losers from User Predictions on Twitter

机译:“我觉得王牌会赢.........”:从Twitter上的用户预测预测赢家和输家

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Social media users often make explicit predictions about upcoming events. Such statements vary in the degree of certainty the author expresses toward the outcome: "Leonardo DiCapno will win Best Actor" vs. "Leonardo DiCaprio may win" or "No way Leonardo wins!" Can popular beliefs on social media predict who will win? To answer this question, we build a corpus of tweets annotated for veridicality on which we train a log-linear classifier that detects positive veridicality with high precision.1 We then forecast uncertain outcomes using the wisdom of crowds, by aggregating users' explicit predictions. Our method for forecasting winners is fully automated, relying only on a set of contenders as input. It requires no training data of past outcomes and outperforms sentiment and tweet volume baselines on a broad range of contest prediction tasks We further demonstrate how our approach can be used to measure the reliability of individual accounts' predictions and retrospectively identify surprise outcomes.
机译:社交媒体用户经常对即将发生的事件做出明确的预测。此类陈述对作者对结果表示的确定程度各不相同:“莱昂纳多·迪卡普诺将赢得最佳男主角”还是“莱昂纳多·迪卡普里奥可能会获胜”或“莱昂纳多不会赢!”社交媒体上的流行信念能否预测谁会赢?为了回答这个问题,我们构建了一组标注为垂直性的推文,我们在其上训练了对数线性分类器,该分类器可以高精度地检测正垂直性。1然后,通过汇总用户的明确预测,使用人群的智慧来预测不确定的结果。我们预测获胜者的方法是完全自动化的,仅依赖一组竞争者作为输入。它不需要过去的结果的训练数据,并且在广泛的比赛预测任务上表现要好于情绪和鸣叫量的基线。我们进一步展示了我们的方法如何可用于衡量个人账户预测的可靠性并回顾性地确定意外结果。

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