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Sensitivity analyses for sparse-data problems - Using weakly informative Bayesian priors

机译:稀疏数据问题的灵敏度分析-使用弱信息的贝叶斯先验

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Sparse-data problems are common, and approaches are needed to evaluate the sensitivity of parameter estimates based on sparse data. We propose a Bayesian approach that uses weakly informative priors to quantify sensitivity of parameters to sparse data. The weakly informative prior is based on accumulated evidence regarding the expected magnitude of relationships using relative measures of disease association. We illustrate the use of weakly informative priors with an example of the association of lifetime alcohol consumption and head and neck cancer. When data are sparse and the observed information is weak, a weakly informative prior will shrink parameter estimates toward the prior mean. Additionally, the example shows that when data are not sparse and the observed information is not weak, a weakly informative prior is not influential. Advancements in implementation of Markov Chain Monte Carlo simulation make this sensitivity analysis easily accessible to the practicing epidemiologist.
机译:稀疏数据问题很常见,需要基于稀疏数据的方法来评估参数估计的敏感性。我们提出了一种贝叶斯方法,该方法使用信息量较弱的先验值来量化参数对稀疏数据的敏感性。信息不充分的先验是基于使用疾病关联的相对度量得出的有关预期关系大小的累积证据。我们以一生中饮酒与头颈癌的关联为例,说明了弱信息先验的使用。当数据稀疏且观察到的信息较弱时,信息量较弱的先验将使参数估计值朝先验均值收缩。此外,该示例显示,当数据不稀疏且观察到的信息不弱时,信息量较弱的先验条件就没有影响力。马尔可夫链蒙特卡罗模拟的实施进展使该流行病学家可以轻松进行此敏感性分析。

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