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Bayesian density regression for discrete outcomes

机译:离散结果的贝叶斯密度回归

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摘要

We develop Bayesian models for density regression with emphasis on discrete outcomes. The problem of density regression is approached by considering methods for multivariate density estimation of mixed scale variables, and obtaining conditional densities from the multivariate ones. The approach to multivariate mixed scale outcome density estimation that we describe represents discrete variables, either responses or covariates, as discretised versions of continuous latent variables. We present and compare several models for obtaining these thresholds in the challenging context of count data analysis where the response may be over- and/or under-dispersed in some of the regions of the covariate space. We utilise a nonparametric mixture of multivariate Gaussians to model the directly observed and the latent continuous variables. The paper presents a Markov chain Monte Carlo algorithm for posterior sampling, sufficient conditions for weak consistency, and illustrations on density, mean and quantile regression utilising simulated and real datasets.
机译:我们开发贝叶斯模型,以强调离散结果强调。通过考虑混合比变量的多变量密度估计,并获得来自多元变量的条件密度的方法,接近密度回归问题。我们描述的多变量混合尺度结果密度估计的方法代表离散变量,任一响应或协变量,作为连续潜在变量的离散版本。我们展示并比较了在计数数据分析的具有挑战性上下文中获取这些阈值的若干模型,其中响应可能在协变量空间的一些区域中过度和/或欠分散。我们利用多元高斯的非参数混合物来模拟直接观察到的和潜在的连续变量。本文提出了一种用于后部采样的马尔可夫链蒙特卡罗算法,弱稠度的充分条件,以及利用模拟和实时数据集的密度,均值和量子回归的图示。

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