贝叶斯多元等渗回归中可信区间的覆盖

Kangkang Wang, S. Ghosal
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引用次数: 3

摘要

我们考虑非参数多元等渗回归问题,其中回归函数被假设为相对于每个预测因子的非递减。我们的目标是构造函数值在给定的限定频率覆盖点处的贝叶斯可信区间。我们对不受限制的阶跃函数设置了先验,但通过从不受限制的函数空间到多元单调函数空间的“浸入映射”,利用诱导后验测度进行推理。这允许后验抽样保持自然共轭。自然的沉浸式地图是通过距离的投影,但在目前的情况下,块等同化地图被认为更有用。利用诱导的“浸入后验”测度代替原始后验测度进行推理的方法是对贝叶斯范式的有益扩展,尤其在模型空间受到一些复杂关系限制的情况下非常有用。我们用多指标高斯过程的某些泛函建立了函数在某点的后验分布的一个关键弱收敛结果,从而得到贝叶斯可信区间的极限覆盖表达式。与最近的单变量单调函数的结果类似,我们发现极限覆盖略高于可信度,这与平滑问题中观察到的现象相反。有趣的是,可信度和极限覆盖率之间的关系不涉及任何未知参数。因此,通过重新校准过程,我们可以通过选择一个比目标覆盖率小的合适的可信度水平来获得预定的渐近覆盖率,从而也缩短了可信区间。
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Coverage of credible intervals in Bayesian multivariate isotonic regression
We consider the nonparametric multivariate isotonic regression problem, where the regression function is assumed to be nondecreasing with respect to each predictor. Our goal is to construct a Bayesian credible interval for the function value at a given interior point with assured limiting frequentist coverage. We put a prior on unrestricted step-functions, but make inference using the induced posterior measure by an"immersion map"from the space of unrestricted functions to that of multivariate monotone functions. This allows maintaining the natural conjugacy for posterior sampling. A natural immersion map to use is a projection via a distance, but in the present context, a block isotonization map is found to be more useful. The approach of using the induced"immersion posterior"measure instead of the original posterior to make inference provides a useful extension of the Bayesian paradigm, particularly helpful when the model space is restricted by some complex relations. We establish a key weak convergence result for the posterior distribution of the function at a point in terms of some functional of a multi-indexed Gaussian process that leads to an expression for the limiting coverage of the Bayesian credible interval. Analogous to a recent result for univariate monotone functions, we find that the limiting coverage is slightly higher than the credibility, the opposite of a phenomenon observed in smoothing problems. Interestingly, the relation between credibility and limiting coverage does not involve any unknown parameter. Hence by a recalibration procedure, we can get a predetermined asymptotic coverage by choosing a suitable credibility level smaller than the targeted coverage, and thus also shorten the credible intervals.
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