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Scalable Bayesian nonparametric regression via a Plackett-Luce model for conditional ranks

机译:通过Plackett-Luce模型对条件等级进行可扩展的贝叶斯非参数回归

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We present a novel Bayesian nonparametric regression model for covariates $X$ and continuous response variable $Yinmathbb{R}$. The model is parametrized in terms of marginal distributions for $Y$ and $X$ and a regression function which tunes the stochastic ordering of the conditional distributions $F(y|x)$. By adopting an approximate composite likelihood approach, we show that the resulting posterior inference can be decoupled for the separate components of the model. This procedure can scale to very large datasets and allows for the use of standard, existing, software from Bayesian nonparametric density estimation and Plackett-Luce ranking estimation to be applied. As an illustration, we show an application of our approach to a US Census dataset, with over 1,300,000 data points and more than 100 covariates.
机译:我们为协变量$ X $和连续响应变量$ Y in mathbb {R} $提供了新颖的贝叶斯非参数回归模型。根据$ Y $和$ X $的边际分布以及回归函数调整模型,该函数调整条件分布$ F(y | x)$的随机排序。通过采用一种近似的复合似然方法,我们表明,对于模型的各个组成部分,可以将所得后验推论解耦。此过程可以扩展到非常大的数据集,并允许使用来自贝叶斯非参数密度估计和Plackett-Luce排名估计的标准现有软件。作为说明,我们展示了我们的方法在美国人口普查数据集中的应用,该数据集中有1,300,000个数据点和100多个协变量。

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