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Big data would not lie: prediction of the 2016 Taiwan election via online heterogeneous information

机译:大数据不会撒谎:通过在线异构信息预测2016台选举

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The prevalence of online media has attracted researchers from various domains to explore human behavior and make interesting predictions. In this research, we leverage heterogeneous data collected from various online platforms to predict Taiwan’s 2016 general election. In contrast to most existing research, we take a “signal” view of heterogeneous information and adopt the Kalman filter to fuse multiple signals into daily vote predictions for the candidates. We also consider events that influenced the election in a quantitative manner based on the so-called event study model that originated in the field of financial research. We obtained the following interesting findings. First, public opinions in online media dominate traditional polls in Taiwan election prediction in terms of both predictive power and timeliness. But offline polls can still function on alleviating the sample bias of online opinions. Second, although online signals converge as election day approaches, the simple Facebook “Like” is consistently the strongest indicator of the election result. Third, most influential events have a strong connection to cross-strait relations, and the Chou Tzu-yu flag incident followed by the apology video one day before the election increased the vote share of Tsai Ing-Wen by 3.66%. This research justifies the predictive power of online media in politics and the advantages of information fusion. The combined use of the Kalman filter and the event study method contributes to the data-driven political analytics paradigm for both prediction and attribution purposes.
机译:在线媒体的普遍性吸引了各个领域的研究人员来探索人类行为并制作有趣的预测。在这项研究中,我们利用各种在线平台收集的异质数据预测台湾2016年大选。与大多数现有的研究相比,我们采用异构信息的“信号”观点,采用卡尔曼滤波器熔断多个信号,进入候选人的日常投票预测。我们还考虑了根据源于金融研究领域的所谓事件研究模型,以定量方式影响选举的事件。我们获得了以下有趣的调查结果。首先,在网上媒体中的公众意见在台湾选举预测中占据了传统民意调查,这方面都是预测的力量和及时性。但离线民意调查仍然可以减轻在线意见的样本偏见。其次,虽然在线信号融合为选举日方法,但简单的Facebook“喜欢”是始终如一的选举结果的最强大指标。第三,大多数有影响力的事件具有与两岸关系的强大联系,以及围慈宇旗战的事件随后是在选举前一天的道歉视频提高了Tsai Ing-wen的投票份额3.66%。这项研究证明了在政治上的在线媒体的预测力度和信息融合的优势。 Kalman滤波器的组合使用和事件研究方法有助于数据驱动的政治分析范例,用于两种预测和归属目的。

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