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Approximate integrated likelihood via ABC methods

机译:通过ABC方法的近似积分似然

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摘要

We propose a novel use of a recent new computational tool for Bayesian inference, namely the Approximate Bayesian Computation (ABC) methodology. ABC is a way to handle models for which the likelihood function may be intractable or even unavailable and/or too costly to evaluate; in particular, we consider the problem of eliminating the nuisance parameters from a complex statistical model in order to produce a likelihood function depending on the quantity of interest only. Given a proper prior for the entire vector parameter, we propose to approximate the integrated likelihood by the ratio of kernel estimators of the marginal posterior and prior for the quantity of interest. We present several examples.
机译:我们建议对贝叶斯推理使用一种新的最新计算工具,即近似贝叶斯计算(ABC)方法。 ABC是一种处理似然函数可能难以处理甚至无法使用和/或评估成本过高的模型的方法;特别是,我们考虑从复杂的统计模型中消除扰动参数的问题,以便仅根据关注的数量产生似然函数。给定整个矢量参数的先验值,我们建议通过边缘后验和先验值的核估计量之比来近似积分似然。我们举几个例子。

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