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Automatic Discovery of Common and Idiosyncratic Latent Effects in Multilevel Regression

机译:自动发现多级回归中的常见和特质潜在效果

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We present a flexible non-parametric generative model for multilevel regression that strikes an automatic balance between identifying common effects across groups while respecting their idiosyncrasies. The model is built using techniques that are now considered standard in the statistical parameter estimation literature, namely, Hierarchical Dirichlet processes (HDP) and Hierarchical Generalized Linear Models (HGLM), and therefore, we name it "Infinite Mixtures of Hierarchical Generalized Linear Models" (iHGLM). We demonstrate how the use of a HDP prior in local, groupwise GLM modeling of response-covariate densities allows iHGLM to capture latent similarities and differences within and across groups. We demonstrate iHGLM's superior accuracy in comparison to well known competing methods like Generalized Linear Mixed Model (GLMM), Regression Tree, Least Square Regression, Bayesian Linear Regression, Ordinary Dirichlet Process Regression, and several other regression models on several synthetic and real world datasets.
机译:我们为多级回归提供了一种灵活的非参数生成模型,可以在尊重其特质时识别跨组的共同效果之间的自动平衡。该模型使用现在在统计参数估计文献中被视为标准的技术,即分层Dirichlet进程(HDP)和分层通用线性模型(HGLM),因此,我们将其命名为“分层通用线性模型的无限混合物”。 (ihglm)。我们展示了在局部响应 - 协变量密度的局部局部GLM模型中使用HDP的用途允许IHGLM捕获潜在的相似之处和跨组的差异。我们展示IHGLM与广义线性混合模型(GLMM),回归树,最小二乘回归,贝叶斯线性回归,普通Dirichlet进程回归,普通Dirichlet进程回归,以及几个合成和真实世界数据集上的几种其他回归模型等卓越的准确性。

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