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Variational Bayesian multinomial probit regression with gaussian process priors

机译:高斯过程先验的变分贝叶斯多项式概率回归

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摘要

It is well known in the statistics literature that augmenting binary and polychotomous response models with gaussian latent variables enables exact Bayesian analysis via Gibbs sampling from the parameter posterior. By adopting such a data augmentation strategy, dispensing with priors over regression coefficients in favor of gaussian process (GP) priors over functions, and employing variational approximations to the full posterior, we obtain efficient computational methods for GP classification in the multiclass setting.(1) The model augmentation with additional latent variables ensures full a posteriori class coupling while retaining the simple a priori independent GP covariance structure from which sparse approximations, such as multiclass informative vector machines (IVM), emerge in a natural and straightforward manner. This is the first time that a fully variational Bayesian treatment for multiclass GP classification has been developed without having to resort to additional explicit approximations to the nongaussian likelihood term. Empirical comparisons with exact analysis use Markov Chain Monte Carlo (MCMC) and Laplace approximations illustrate the utility of the variational approximation as a computationally economic alternative to full MCMC and it is shown to be more accurate than the Laplace approximation.
机译:在统计文献中众所周知,利用高斯潜变量增强二元和多变量响应模型,可以通过从参数后验的Gibbs采样进行精确的贝叶斯分析。通过采用这样的数据扩充策略,通过优先于函数的高斯过程(GP)优先于回归系数而不考虑回归系数,并对整个后验采用变分近似,我们获得了在多类环境中进行GP分类的有效计算方法。(1 )具有额外潜在变量的模型扩充可确保完全后验类耦合,同时保留简单的先验独立GP协方差结构,稀疏近似(例如多类信息向量机(IVM))会以自然而直接的方式从中出现。这是首次开发出用于多类GP分类的完全变分贝叶斯方法,而不必诉诸于非高斯似然项的其他显式近似。使用马尔可夫链蒙特卡洛(MCMC)和拉普拉斯逼近进行的精确分析的经验比较表明,变分逼近作为完全MCMC的计算经济替代品是有用的,并且比拉普拉斯逼近更准确。

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