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Bayesian Variable Selection and Model Averaging in High-Dimensional Multinomial Nonparametric Regression

机译:高维多项式非参数回归中的贝叶斯变量选择和模型平均

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摘要

This article presents a Bayesian method for estimating nonparametrically a high-dimensional multinomial regression model. The regression functions are expressed as sums of main effects and interactions and our approach is able to select the significant components entering the model. Each of the main effects and interactions is written as a linear combination of basis terms with a variance components type prior on the regression coefficients The conditional class probabilities are estimated using both variable selection and model averaging. Our approach can also be used for classifition and gives results that are comparable to modern classification methods, but at the same time the results are highly interpretable to the practitioner. All computation is carried out using Markov chain Monte Carlo simulation.
机译:本文提出了一种贝叶斯方法,用于非参数地估计高维多项式回归模型。回归函数表示为主要影响和相互作用的总和,我们的方法能够选择进入模型的重要成分。每个主要影响和交互作用都被写为基础项与方差成分类型在回归系数之前的线性组合。使用变量选择和模型平均来估算条件类别概率。我们的方法也可以用于分类,并提供与现代分类方法相当的结果,但同时,结果对于从业人员也具有很高的解释力。所有计算均使用马尔可夫链蒙特卡罗模拟进行。

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