民调预测时的样本量和不确定性:置信区间的缺点

R. Samohyl
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引用次数: 3

摘要

我们提出的程序使用民意调查数据来构建概率模型,该模型从大量模拟选举中重新创建数字结果。在选举预测的某些领域,衡量候选人成功与否的概率指标越来越普遍,不再是基于置信区间的传统程序。在这里,我们表明,使用用于构建置信区间的相同信息,可以计算出对选举结果的更精确预测,从而证明某个候选人赢得选举的概率。该程序可以考虑被申请人对“不知道/拒绝回答”(dk/ref)的不回答。通过计算一位候选人获得更多选票的概率,可以避免置信区间中固有的模糊性及其误差幅度。重要的是,在整篇文章中,我们表明我们的程序需要更小的样本量,并产生更高的预测准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sample size and uncertainty when predicting with polls: the shortcomings of confidence intervals
The procedure we propose uses polling data to construct a probability model that recreates numerical results from a large number of simulated elections. Probabilistic measures of candidate success have become increasingly common in some areas of election prognosis, moving away from traditional procedures based on confidence intervals. Here we show that, with the same information used to construct a confidence interval, a more precise projection of election results can be calculated demonstrating the probability of a certain candidate winning the election. The procedure can take into account respondent nonresponse of “do not know/refuse to answer” (dk/ref). The ambiguities inherent in confidence intervals and their margins of error are avoided by calculating the probability that one candidate receives more votes. Importantly, throughout the article, we show that our procedure requires a smaller sample size and produces more predictive accuracy.
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