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Bayesian Extended Redundancy Analysis: A Bayesian Approach to Component-based Regression with Dimension Reduction

机译:贝叶斯延长冗余分析:贝叶斯对尺寸减少的基于组件的回归方法

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Extended redundancy analysis (ERA) combines linear regression with dimension reduction to explore the directional relationships between multiple sets of predictors and outcome variables in a parsimonious manner. It aims to extract a component from each set of predictors in such a way that it accounts for the maximum variance of outcome variables. In this article, we extend ERA into the Bayesian framework, called Bayesian ERA (BERA). The advantages of BERA are threefold. First, BERA enables to make statistical inferences based on samples drawn from the joint posterior distribution of parameters obtained from a Markov chain Monte Carlo algorithm. As such, it does not necessitate any resampling method, which is on the other hand required for (frequentist's) ordinary ERA to test the statistical significance of parameter estimates. Second, it formally incorporates relevant information obtained from previous research into analyses by specifying informative power prior distributions. Third, BERA handles missing data by implementing multiple imputation using a Markov Chain Monte Carlo algorithm, avoiding the potential bias of parameter estimates due to missing data. We assess the performance of BERA through simulation studies and apply BERA to real data regarding academic achievement.
机译:扩展冗余分析(ERA)将线性回归与尺寸减少相结合,以探索多套预测器和结果变量之间的定向关系。它旨在以这样的方式从每组预测器中提取组件,使其考虑结果变量的最大方差。在本文中,我们将时代扩展到贝叶斯架构,称为贝叶斯时代(Bera)。 Bera的优点是三倍。首先,Bera能够基于从从马尔可夫链蒙特卡罗算法获得的参数的关节后部分布所吸引的样本来进行统计推断。因此,它不需要任何重采样方法,该方法是(频率的)普通时代所需的另一方面以测试参数估计的统计学意义。其次,它通过指定信息性发电前分布来正式地纳入从先前的研究中获得的相关信息。第三,Bera通过使用Markov链蒙特卡罗算法实现多重估算来处理缺失的数据,避免由于缺失数据引起的参数估计的潜在偏差。我们通过模拟研究评估BERA的表现,并将BERA应用于关于学术成果的实际数据。

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