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Learning Gaussian Processes with Bayesian Posterior Optimization

机译:用贝叶斯后验优化学习高斯过程

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Gaussian processes (GPs) are often used as prior distributions in non-parametric Bayesian methods due to their numerical and analytical tractability. GP priors are specified by choosing a covariance function (along with its hyperparameters), a choice that is not only challenging in practice, but also has a profound impact on performance. This issue is typically overcome using hierarchical models, i.e., by learning a distribution over covariance functions/hyperparameters that defines a mixture of GPs. Yet, since choosing priors for hyperparameters can be challenging, maximum likelihood is often used instead to obtain point estimates. This approach, however, involves solving a non-convex optimization problem and is thus prone to overfitting. To address these issues, this work proposes a hybrid Bayesian-optimization solution in which the hyperparameters posterior distribution is obtained not using Bayes rule, but as the solution of a mathematical program. Explicitly, we obtain the hyperparameter distribution that minimizes a risk measure induced by the GP mixture. Previous knowledge, including properties such as sparsity and maximum entropy, is incorporated through (possibly non-convex) penalties instead of a prior. We prove that despite its infinite dimensionality and potential non-convexity, this problem can be solved exactly using duality and stochastic optimization.
机译:高斯过程(GPs)由于其数值和分析易处理性,通常在非参数贝叶斯方法中用作先验分布。 GP先验是通过选择协方差函数(及其超参数)来指定的,该选择不仅在实践中具有挑战性,而且会对性能产生深远的影响。通常使用分层模型来克服该问题,即通过学习定义GP混合的协方差函数/超参数的分布。然而,由于为超参数选择先验可能具有挑战性,因此通常使用最大似然来获取点估计。但是,这种方法涉及解决非凸优化问题,因此容易过度拟合。为了解决这些问题,这项工作提出了一种混合贝叶斯优化解决方案,其中不使用贝叶斯规则来获得超参数的后验分布,而是将其作为数学程序的解决方案。明确地,我们获得了将GP混合物引起的风险度量最小化的超参数分布。先前的知识,包括稀疏性和最大熵等属性,是通过(可能是非凸的)惩罚而不是先验的来合并的。我们证明,尽管它具有无限的维数和潜在的非凸性,但可以使用对偶和随机优化来精确解决此问题。

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