使用 JAGS 对组合预测因子进行贝叶斯线性回归的教程

Yunli Liu, Xin Tong
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摘要

本教程探讨了用于组合数据分析的高级贝叶斯方法,特别是贝叶斯拉索(Bayesian Lasso)和贝叶斯尖峰-斜线拉索(Bayesian Spike-and-Slab Lasso,SSL)技术。我们的重点是一种新颖的贝叶斯方法,该方法将 Lasso 和 SSL 先验整合在一起,增强了参数估计和变量选择的能力,适用于带有组合预测因子的线性回归。本教程的结构简化了学习过程,将复杂的分析分解为一系列简单明了的步骤。我们使用 R 和 JAGS 演示了这些方法,并使用模拟数据集来说明关键概念。我们的目标是让读者对这些复杂的贝叶斯技术有一个清晰而全面的了解,为他们在自己的成分数据分析工作中熟练地掌握和应用这些方法做好准备。
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A Tutorial on Bayesian Linear Regression with Compositional Predictors Using JAGS
This tutorial offers an exploration of advanced Bayesian methodologies for compositional data analysis, specifically the Bayesian Lasso and Bayesian Spike-and-Slab Lasso (SSL) techniques. Our focus is on a novel Bayesian methodology that integrates Lasso and SSL priors, enhancing both parameter estimation and variable selection for linear regression with compositional predictors. The tutorial is structured to streamline the learning process, breaking down complex analyses into a series of straightforward steps. We demonstrate these methods using R and JAGS, employing simulated datasets to illustrate key concepts. Our objective is to provide a clear and comprehensive understanding of these sophisticated Bayesian techniques, preparing readers to adeptly navigate and apply these methods in their own compositional data analysis endeavors.
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