贝叶斯多变量与单变量正态回归预测模型的比较

Xun Li, Joyee Ghosh, G. Villarini
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引用次数: 1

摘要

在许多中等维度的应用中,我们有多个响应变量,这些变量与一组共同的预测因子相关联。当主要目标是预测响应变量时,一个自然的问题是:与单变量模型相比,适应响应变量之间依赖关系的多变量回归模型是否能改善预测?请注意,在本文中,单变量回归模型和多变量回归模型分别是指具有单个响应变量和多个响应变量的回归模型。我们假设在这两种情况下,都有多个协变量。我们的问题是由气候科学中的一个应用程序引起的,它涉及到对飓风季节的活动、强度、严重程度等多个指标的预测。在文献中,飓风季节的平均海面温度(SSTs)在单独的单变量回归模型中被用作这些指标的预测因子。由于在预测过程中尚未观测到真实的海温,因此通常将其来自多个气候模式的预测用作预测因子。一些气候模型有一些缺失值,因此我们开发了贝叶斯单变量/多变量正态回归模型,可以处理缺失的协变量和变量选择的不确定性。贝叶斯多元正态回归模型与单变量回归模型相比,是否能提高预测能力尚不清楚,在这项工作中,我们试图填补这一空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Bayesian Multivariate Versus Univariate Normal Regression Models for Prediction
Abstract In many moderate dimensional applications we have multiple response variables that are associated with a common set of predictors. When the main objective is prediction of the response variables, a natural question is: do multivariate regression models that accommodate dependency among the response variables improve prediction compared to their univariate counterparts? Note that in this article, by univariate versus multivariate regression models we refer to regression models with a single versus multiple response variables, respectively. We assume that under both scenarios, there are multiple covariates. Our question is motivated by an application in climate science, which involves the prediction of multiple metrics that measure the activity, intensity, severity etc. of a hurricane season. Average sea surface temperatures (SSTs) during the hurricane season have been used as predictors for each of these metrics, in separate univariate regression models, in the literature. Since the true SSTs are yet to be observed during prediction, typically their forecasts from multiple climate models are used as predictors. Some climate models have a few missing values so we develop Bayesian univariate/multivariate normal regression models, that can handle missing covariates and variable selection uncertainty. Whether Bayesian multivariate normal regression models improve prediction compared to their univariate counterparts is not clear from the existing literature, and in this work we try to fill this gap.
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