A composite likelihood is a non-genuine likelihood function that allows to make inference on limited aspects of a model, such as marginal or conditional distributions. Composite likelihoods are not proper likelihoods and need therefore calibration for their use in inference, from both a frequentist and a Bayesian perspective. The maximizer to the composite likelihood can serve as an estimator and its variance is assessed by means of a suitably defined sandwich matrix. In the Bayesian setting, the composite likelihood can be adjusted by means of magnitude and curvature methods. Magnitude methods imply raising the likelihood to a constant, while curvature methods imply evaluating the likelihood at a different point by translating, rescaling and rotating the parameter vector. Some authors argue that curvature methods are more reliable in general, but others proved that magnitude methods are sufficient to recover, for instance, the null distribution of a test statistic. We propose a simple calibration for the marginal posterior distribution of a scalar parameter of interest which is invariant to monotonic and smooth transformations. This can be enough for instance in medical statistics, where a single scalar effect measure is often the target.
翻译:复合可能性是一种非真实的可能性功能,它允许对模型的有限方面作出推断,例如边际分布或有条件分布。复合可能性不是适当的可能性,因此从常客和巴伊西亚角度需要对其使用的推断进行校准。复合可能性的最大化可以用作估计值,其差异则通过适当定义的三明治矩阵来评估。在贝亚西亚环境,复合可能性可以通过量度和曲度方法加以调整。磁度方法意味着提高常数的可能性,而曲线方法意味着通过翻译、调整和旋转参数矢量在不同点评估可能性。一些作者认为,曲线方法一般比较可靠,但另一些作者则证明,规模方法足以恢复,例如试验统计的无效分布。我们建议对利息的边远后方参数分布进行简单的校准,该参数可不易于单调和平稳的转换。这在医学统计中就足够了,因为单弧效应往往是目标。