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Bayesian structured additive distributional regression for multivariate responses

机译:多变量响应的贝叶斯结构加性分布回归

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摘要

We propose a unified Bayesian approach for multivariate structured additive distributional regression analysis comprising a huge class of continuous, discrete and latent multivariate response distributions, where each parameter of these potentially complex distributions is modelled by a structured additive predictor. The latter is an additive composition of different types of covariate effects, e.g. non-linear effects of continuous covariates, random effects, spatial effects or interaction effects. Inference is realized by a generic, computationally efficient Markov chain Monte Carlo algorithm based on iteratively weighted least squares approximations and with multivariate Gaussian priors to enforce specific properties of functional effects. Applications to illustrate our approach include a joint model of risk factors for chronic and acute childhood undernutrition in India and ecological regressions studying the drivers of election results in Germany.
机译:我们为多元结构化加性分布回归分析提出了统一的贝叶斯方法,该方法包括一类巨大的连续,离散和潜在的多元响应分布,其中这些潜在复杂分布的每个参数都由结构化加性预测变量建模。后者是不同类型协变量效应(例如,连续协变量的非线性效应,随机效应,空间效应或相互作用效应。通过基于迭代加权最小二乘近似并使用多元高斯先验来强制执行功能效果的特定属性的通用,计算效率高的马尔可夫链蒙特卡洛算法来实现推理。用于说明我们的方法的应用包括印度慢性和急性儿童营养不良的风险因素联合模型以及德国研究选举结果驱动因素的生态回归。

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