In the Bayes paradigm and for a given loss function, we propose the construction of a new type of posterior distributions, that extends the classical Bayes one, for estimating the law of an $n$-sample. The loss functions we have in mind are based on the total variation and Hellinger distances as well as some $\mathbb{L}_{j}$-ones. We prove that, with a probability close to one, this new posterior distribution concentrates its mass in a neighbourhood of the law of the data, for the chosen loss function, provided that this law belongs to the support of the prior or, at least, lies close enough to it. We therefore establish that the new posterior distribution enjoys some robustness properties with respect to a possible misspecification of the prior, or more precisely, its support. For the total variation and squared Hellinger losses, we also show that the posterior distribution keeps its concentration properties when the data are only independent, hence not necessarily i.i.d., provided that most of their marginals or the average of these are close enough to some probability distribution around which the prior puts enough mass. The posterior distribution is therefore also stable with respect to the equidistribution assumption. We illustrate these results by several applications. We consider the problems of estimating a location parameter or both the location and the scale of a density in a nonparametric framework. Finally, we also tackle the problem of estimating a density, with the squared Hellinger loss, in a high-dimensional parametric model under some sparsity conditions. The results established in this paper are non-asymptotic and provide, as much as possible, explicit constants.
翻译:在贝耶斯范式和特定损失函数中,我们建议建造一种新型的后方分布法,将古典贝耶斯一号扩展,用于估算美元样本的定律。我们所想到的损失功能基于总变数和海灵格距离,以及某些美元(mathbbb{L ⁇ j}-ones)的偏差。我们证明,这种新的后方分布法在数据定律的附近集中其质量,用于选定的损失波段功能,前提是这一法律属于前方或至少接近于古典贝亚斯的支撑。因此,我们确定新的后方分布具有一些稳健的特性,因为先前或更精确的偏差以及某些美化距离,对于总变差和平方导损失,我们还证明,当数据模式独立时,后方分布会保持其集中性,因此不一定是i.d.,只要它们的大部分边际或平均值都足够接近于前方的不概率分布,因此,在前方的测序位置上,我们用一个固定的测算结果来说明一个固定的测算。