Multi-cycle forecasting of congressional elections with social media

PLEAD '13 Pub Date : 2013-10-28 DOI:10.1145/2508436.2508439
M. Huberty
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引用次数: 32

Abstract

Twitter has become a controversial medium for election forecasting. We provide further evidence that simplistic forecasting methods do not perform well on forward-looking forecasts. We introduce a new estimator that models the language of campaign-relevant Twitter messages. We show that this algorithm out-performs incumbency in out-of-sample tests for the 2010 election on which it was trained. That success, however, collapses when the same algorithm is used to forecast the 2012 election. We further demonstrate that volume-based and sentiment-based alternatives also fail to forecast future elections, despite promising performance in back-casting tests. We suggest that whatever information these simplistic forecasts capture above and beyond incumbency, that information is highly ephemeral and thus a weak performer for future election forecasts.
利用社交媒体对国会选举进行多周期预测
推特已经成为一个有争议的选举预测媒介。我们提供了进一步的证据,证明简单的预测方法在前瞻性预测中表现不佳。我们引入了一个新的估计器来模拟与竞选相关的Twitter消息的语言。我们表明,该算法在2010年选举的样本外测试中优于在职者。然而,当同样的算法被用来预测2012年大选时,这种成功就不复存在了。我们进一步证明,尽管在反向测试中表现良好,但基于数量和基于情绪的替代方案也无法预测未来的选举。我们认为,无论这些简单的预测所捕捉到的信息是在任期内还是在任期内的,这些信息都是非常短暂的,因此在未来的选举预测中表现不强。
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