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Influencing elections with statistics: Targeting voters with logistic regression trees

机译:通过统计数据影响选举:使用逻辑回归树定位选民

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In political campaigning substantial resources are spent on voter mobilization, that is, on identifying and influencing as many people as possible to vote. Campaigns use statistical tools for deciding whom to target ("microtargeting"). In this paper we describe a nonpartisan campaign that aims at increasing overall turnout using the example of the 2004 US presidential election. Based on a real data set of 19,634 eligible voters from Ohio, we introduce a modern statistical framework well suited for carrying out the main tasks of voter targeting in a single sweep: predicting an individual's turnout (or support) likelihood for a particular cause, party or candidate as well as data-driven voter segmentation. Our framework, which we refer to as LORET (for LOgistic REgression Trees), contains standard methods such as logistic regression and classification trees as special cases and allows for a synthesis of both techniques. For our case study, we explore various LORET models with different regressors in the logistic model components and different partitioning variables in the tree components; we analyze them in terms of their predictive accuracy and compare the effect of using the full set of available variables against using only a limited amount of information. We find that augmenting a standard set of variables (such as age and voting history) with additional predictor variables (such as the household composition in terms of party affiliation) clearly improves predictive accuracy. We also find that LORET models based on tree induction beat the unpartitioned models. Furthermore, we illustrate how voter segmentation arises from our framework and discuss the resulting profiles from a targeting point of view.
机译:在政治运动中,大量资源用于动员选民,即用于识别和影响尽可能多的投票人。广告系列使用统计工具来确定目标对象(“微观目标”)。在本文中,我们以2004年美国总统大选为例,描述了旨在提高整体投票率的无党派竞选活动。基于来自俄亥俄州的19,634名合格选民的真实数据集,我们引入了一个现代统计框架,非常适合一次完成选民针对性的主要任务:预测个人针对特定原因,政党的投票率(或支持率)或候选人以及数据驱动的选民细分。我们称为LORET(用于逻辑回归树)的框架包含标准方法,例如逻辑回归和分类树(作为特殊情况),并允许这两种技术的综合。对于我们的案例研究,我们探索了多种逻辑模型,这些逻辑模型在逻辑模型组件中具有不同的回归变量,在树组件中具有不同的分区变量。我们根据它们的预测准确性对其进行分析,并比较使用全套可用变量与仅使用有限信息量的效果。我们发现,使用其他预测变量(例如,从党派关系而言的家庭组成)增加标准变量集(例如年龄和投票历史)可以明显提高预测准确性。我们还发现,基于树归纳的LORET模型击败了未分区模型。此外,我们说明了选民细分是如何从我们的框架中产生的,并从定位的角度讨论了生成的配置文件。

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