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Laplace Variational Approximation for Semiparametric Regression in the Presence of Heteroscedastic Errors

机译:存在异方差误差时半参数回归的拉普拉斯变分逼近

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Variational approximations provide fast, deterministic alternatives to Markov chain Monte Carlo for Bayesian inference on the parameters of complex, hierarchical models. Variational approximations are often limited in practicality in the absence of conjugate posterior distributions. Recent work has focused on the application of variational methods to models with only partial conjugacy, such as in semiparametric regression with heteroscedastic errors. Here, both the mean and log variance functions are modeled as smooth functions of covariates. For this problem, we derive a mean field variational approximation with an embedded Laplace approximation to account for the nonconjugate structure. Empirical results with simulated and real data show that our approximate method has significant computational advantages over traditional Markov chain Monte Carlo; in this case, a delayed rejection adaptive Metropolis algorithm. The variational approximation is much faster and eliminates the need for tuning parameter selection, achieves good fits for both the mean and log variance functions, and reasonably reflects the posterior uncertainty. We apply the methods to log-intensity data from a small angle X-ray scattering experiment, in which properly accounting for the smooth heteroscedasticity leads to significant improvements in posterior inference for key physical characteristics of an organic molecule.
机译:对于复杂层次结构模型的参数的贝叶斯推断,变分近似提供了马尔可夫链蒙特卡洛的快速,确定性替代方法。在没有共轭后验分布的情况下,变分近似在实用性上通常受到限制。最近的工作集中于将变分方法应用于仅具有部分共轭的模型,例如在具有异方差误差的半参数回归中。在这里,均值和对数方差函数都被建模为协变量的平滑函数。对于这个问题,我们推导了一个平均场变分近似和一个嵌入式Laplace近似来说明非共轭结构。模拟和真实数据的经验结果表明,与传统的马尔可夫链蒙特卡洛相比,我们的近似方法具有明显的计算优势。在这种情况下,采用延迟拒绝自适应大都会算法。变分逼近速度更快,并且不需要调整参数,可以很好地拟合均值和对数方差函数,并且可以合理地反映后验不确定性。我们将这些方法应用于来自小角度X射线散射实验的对数强度数据,其中适当考虑平滑的异方差会导致对有机分子的关键物理特征进行后验推断的显着改进。

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