一种利用时间感知民意测验改进选举民意预测的新方法

Alexandru Topîrceanu, R. Precup
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引用次数: 2

摘要

随着时间的推移,基于统计和经济指数的多种民意调查预测解决方案已经被提出,但是,随着我们更好地理解扩散现象,我们知道时间特征提供了更多的不确定性。因此,目前的文献还不能为政治观点、市场偏好或社会动荡的演变定义真正可靠的模型。受微观尺度意见动态的启发,我们开发了一种原始的时间感知(TA)方法,该方法能够通过将意见建模为一个函数来改进意见分布的预测,当意见被表达时,意见会飙升,否则会慢慢减弱。经过参数分析,我们对2012年和2016年美国总统选举的调查数据验证了我们的TA方法。通过将我们的时间感知方法(TA)与经典调查平均(SA)和累积投票计数(CC)进行比较,我们发现我们的方法实质上更接近真实的选举结果。平均而言,我们测量到SA与最终登记的选举结果相差6.3%,CC相差5.6%,而TA仅相差1.5%;这一差异转化为我们的TA方法的预测提高了约75%。由于我们的工作与社会网络微观时间动态的研究一致,我们发现了如何利用时间意识改进宏观预测的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Methodology for Improving Election Poll Prediction Using Time-Aware Polling
Multiple poll forecasting solutions, based on statistics and economic indices, have been proposed over time, but, as we better understand diffusion phenomena, we know that temporal characteristics provide even more uncertainty. As such, current literature is not yet able to define truly reliable models for the evolution of political opinion, marketing preferences, or social unrest. Inspired by micro-scale opinion dynamics, we develop an original time-aware (TA) methodology which is able to improve the prediction of opinion distribution, by modeling opinion as a function which spikes up when opinion is expressed, and slowly dampens down otherwise. After a parametric analysis, we validate our TA method on survey data from the US presidential elections of 2012 and 2016. By comparing our time-aware method (TA) with classic survey averaging (SA), and cumulative vote counting (CC), we find our method is substantially closer to the real election outcomes. On average, we measure that SA is 6.3% off, CC is 5.6% off, while TA is only 1.5% off from the final registered election outcomes; this difference translates into an ≈ 75% prediction improvement of our TA method. As our work falls in line with studies on the microscopic temporal dynamics of social networks, we find evidence of how macroscopic prediction can be improved using time-awareness.
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