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Bayesian perspectives for epidemiological research: I. Foundations and basic methods.

机译:贝叶斯流行病学研究的观点:I.基础和基本方法。

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摘要

One misconception (of many) about Bayesian analyses is that prior distributions introduce assumptions that are more questionable than assumptions made by frequentist methods; yet the assumptions in priors can be more reasonable than the assumptions implicit in standard frequentist models. Another misconception is that Bayesian methods are computationally difficult and require special software. But perfectly adequate Bayesian analyses can be carried out with common software for frequentist analysis. Under a wide range of priors, the accuracy of these approximations is just as good as the frequentist accuracy of the software--and more than adequate for the inaccurate observational studies found in health and social sciences. An easy way to do Bayesian analyses is via inverse-variance (information) weighted averaging of the prior with the frequentist estimate. A more general method expresses the prior distributions in the form of prior data or 'data equivalents', which are then entered in the analysis as a new data stratum. That form reveals the strength of the prior judgements being introduced and may lead to tempering of those judgements. It is argued that a criterion for scientific acceptability of a prior distribution is that it be expressible as prior data, so that the strength of prior assumptions can be gauged by how much data they represent.
机译:关于贝叶斯分析的一个(很多)误解是,先验分布所引入的假设比频频论方法所做出的假设更值得质疑;但是先验中的假设可能比标准常客模型中隐含的假设更为合理。另一个误解是贝叶斯方法计算困难,需要专用软件。但是,可以使用常用软件对频数分析进行完全适当的贝叶斯分析。在各种先验条件下,这些近似值的准确性与该软件的惯常性准确性一样好,并且对于健康和社会科学中发现的不准确的观察性研究来说已经足够了。贝叶斯分析的一种简单方法是通过先验值与逆向估计值的逆方差(信息)加权平均。一种更通用的方法以先验数据或“数据等价物”的形式表示先验分布,然后将其作为新的数据层输入到分析中。这种形式表明了先前作出的判断的力量,并可能导致这些判断的调整。有人认为,先验分布在科学上的可接受性的标准是它可以作为先验数据来表示,因此先验假设的强度可以通过它们代表的数据量来衡量。

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