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Gaussian variational approximate inference for generalized linear mixed models

机译:广义线性混合模型的高斯变分近似推断

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摘要

Variational approximation methods have become a mainstay of contemporary machine learning methodology, but currently have little presence in statistics. We devise an effective variational approximation strategy for fitting generalized linear mixed models (GLMMs) appropriate for grouped data. It involves Gaussian approximation to the distributions of random effects vectors, conditional on the responses. We show that Gaussian variational approximation is a relatively simple and natural alternative to Laplace approximation for fast, non-Monte Carlo, GLMM analysis. Numerical studies show Gaussian variational approximation to be very accurate in grouped data GLMM contexts. Finally, we point to some recent theory on consistency of Gaussian variational approximation in this context. Supplemental materials are available online.
机译:变分逼近方法已成为当代机器学习方法的主体,但目前在统计学中很少出现。我们设计了一种有效的变分近似策略,用于拟合适合分组数据的广义线性混合模型(GLMM)。它涉及随机效应矢量分布的高斯近似,其条件是响应。我们表明,对于快速的非蒙特卡洛GLMM分析,高斯变分逼近是拉普拉斯逼近的相对简单自然的替代方法。数值研究表明,在分组数据GLMM上下文中,高斯变分逼近非常准确。最后,我们指出了一些有关高斯变分逼近一致性的最新理论。补充材料可在线获得。

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