Online Collaborative Prediction of Regional Vote Results

Vincent Etter, M. E. Khan, M. Grossglauser, Patrick Thiran
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引用次数: 3

Abstract

We consider online predictions of vote results, where regions across a country vote on an issue under discussion. Such online predictions before and during the day of the vote are useful to media agencies, polling institutes, and political parties, e.g., to identify regions that are crucial in determining the national outcome of a vote. We analyze a unique dataset from Switzerland. The dataset contains 281 votes from 2352 regions over a period of 34 years. We make several contributions towards improving online predictions. First, we show that these votes exhibit a bi-clustering of the vote results, i.e., regions that are spatially close tend to vote similarly, and issues that discuss similar topics show similar global voting patterns. Second, we develop models that can exploit this bi-clustering, as well as the features associated with the votes and regions. Third, we show that, when combining vote results and features together, Bayesian methods are essential to obtaining good performance. Our results show that Bayesian methods give better estimates of the hyperparameters than non-Bayesian methods such as cross-validation. The resulting models generalize well to many different tasks, produce robust predictions, and are easily interpretable.
区域投票结果的在线协同预测
我们考虑对投票结果的在线预测,即全国各地对正在讨论的问题进行投票。这种在线预测在投票前和投票当天对媒体机构、民调机构和政党都很有用,例如,确定对决定全国投票结果至关重要的地区。我们分析了一个来自瑞士的独特数据集。该数据集包含了34年间2352个地区的281张选票。我们为改进在线预测做出了一些贡献。首先,我们发现这些投票表现出投票结果的双聚类,即空间上接近的区域倾向于投票相似,讨论类似主题的问题表现出类似的全球投票模式。其次,我们开发了可以利用这种双聚类的模型,以及与投票和地区相关的特征。第三,我们表明,当将投票结果和特征结合在一起时,贝叶斯方法对于获得良好的性能至关重要。我们的结果表明,贝叶斯方法比非贝叶斯方法(如交叉验证)给出了更好的超参数估计。由此产生的模型可以很好地推广到许多不同的任务,产生可靠的预测,并且易于解释。
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