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A Bayesian method for estimating prevalence in the presence of a hidden sub-population

机译:在存在隐藏子种群的情况下估计患病率的贝叶斯方法

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摘要

When estimating the prevalence of a binary trait in a population, the presence of a hidden sub-population that cannot be sampled will lead to nonidentifiability and potentially biased estimation. We propose a Bayesian model of trait prevalence for a weighted sample from the non-hidden portion of the population, by modeling the relationship between prevalence and sampling probability. We studied the behavior of the posterior distribution on population prevalence, with the large-sample limits of posterior distributions obtained in simple analytical forms that give intuitively expected properties. We performed MCMC simulations on finite samples to evaluate the effectiveness of statistical learning. We applied the model and the results to two illustrative datasets arising from weighted sampling. Our work confirms that sensible results can be obtained using Bayesian analysis, despite the nonidentifiability in this situation.
机译:在估计种群中二元性状的流行时,无法采样的隐藏亚种群的存在将导致不可识别性和潜在的估计偏差。我们通过对流行率和抽样概率之间的关系进行建模,为来自人口中非隐藏部分的加权样本提出了一种特征流行率的贝叶斯模型。我们研究了人口分布普遍性的后验分布行为,并通过简单的分析形式获得了后验分布的大样本限制,这些分析形式给出了直观的预期特性。我们对有限样本执行了MCMC模拟,以评估统计学习的有效性。我们将模型和结果应用于加权采样产生的两个说明性数据集。我们的工作证实,尽管在这种情况下无法识别,但仍可以使用贝叶斯分析获得明智的结果。

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