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Non-parametric Bayesian mixture of sparse regressions with application towards feature selection for statistical downscaling

机译:稀疏回归的非参数贝叶斯混合及其在特征选择中的应用

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摘要

Climate projections simulated by Global Climate Models (GCMs) are often used for assessing the impacts of climate change. However, the relatively coarse resolutions of GCM outputs often preclude their application to accurately assessing the effects of climate change on finer regional-scale phenomena. Downscaling of climate variables from coarser to finer regional scales using statistical methods is often performed for regional climate projections. Statistical downscaling (SD) is based on the understanding that the regional climate is influenced by two factors – the large-scale climatic state and the regional or local features. A transfer function approach of SD involves learning a regression model that relates these features (predictors) to a climatic variable of interest (predictand) based on the past observations. However, often a single regression model is not sufficient to describe complex dynamic relationships between the predictors and predictand. We focus on the covariate selection part of the transfer function approach and propose a nonparametric Bayesian mixture of sparse regression models based on Dirichlet process (DP) for simultaneous clustering and discovery of covariates within the clusters while automatically finding the number of clusters. Sparse linear models are parsimonious and hence more generalizable than non-sparse alternatives, and lend themselves to domain relevant interpretation. Applications to synthetic data demonstrate the value of the new approach and preliminary results related to feature selection for statistical downscaling show that our method can lead to new insights.
机译:由全球气候模式(GCM)模拟的气候预测通常用于评估气候变化的影响。但是,由于GCM输出的分辨率相对较粗糙,因此通常无法将其用于准确评估气候变化对更精细的区域尺度现象的影响。通常使用统计方法将气候变量从较粗的区域尺度缩减为较细的区域尺度,以进行区域气候预测。统计缩减(SD)是基于以下认识:区域气候受两个因素的影响-大规模的气候状态以及区域或地方特征。 SD的传递函数方法涉及基于过去的观测来学习将这些特征(预测变量)与感兴趣的气候变量(预测变量)相关联的回归模型。然而,通常一个回归模型不足以描述预测变量和预测变量之间的复杂动态关系。我们专注于传递函数方法的协变量选择部分,并提出了一种基于Dirichlet过程(DP)的稀疏回归模型的非参数贝叶斯混合方法,用于同时聚类和发现聚类中的协变量,同时自动找到聚类的数量。稀疏线性模型是简约的,因此比非稀疏的替代方法更具通用性,并且适合于领域相关的解释。合成数据的应用证明了这种新方法的价值,并且与用于统计缩减的特征选择相关的初步结果表明,我们的方法可以带来新的见解。

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