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Laplace approximation and natural gradient for Gaussian process regression with heteroscedastic student-f model

机译:高斯过程回归的异方差student-f模型的拉普拉斯逼近和自然梯度

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We propose the Laplace method to derive approximate inference for Gaussian process (GP) regression in the location and scale parameters of the student-t probabilistic model. This allows both mean and variance of data to vary as a function of covariates with the attractive feature that the student-t model has been widely used as a useful tool for robustifying data analysis. The challenge in the approximate inference for the model, lies in the analytical intractability of the posterior distribution and the lack of concavity of the log-likelihood function. We present the natural gradient adaptation for the estimation process which primarily relies on the property that the student-t model naturally has orthogonal parametrization. Due to this particular property of the model the Laplace approximation becomes significantly more robust than the traditional approach using Newton's methods. We also introduce an alternative Laplace approximation by using model's Fisher information matrix. According to experiments this alternative approximation provides very similar posterior approximations and predictive performance to the traditional Laplace approximation with model's Hessian matrix. However, the proposed Laplace-Fisher approximation is faster and more stable to calculate compared to the traditional Laplace approximation. We also compare both of these Laplace approximations with the Markov chain Monte Carlo (MCMC) method. We discuss how our approach can, in general, improve the inference algorithm in cases where the probabilistic model assumed for the data is not log-concave.
机译:我们提出了Laplace方法来推导学生t概率模型的位置和尺度参数中高斯过程(GP)回归的近似推断。这使数据的均值和方差随协变量而变化,具有吸引人的功能,即学生t模型已广泛用作增强数据分析的有用工具。该模型的近似推断所面临的挑战在于后验分布的解析难处理性以及对数似然函数的缺乏凹性。我们提出了估计过程的自然梯度自适应方法,该方法主要依赖于Student-t模型自然具有正交参数化的属性。由于模型的这一特殊特性,与使用牛顿法的传统方法相比,拉普拉斯近似法变得更加健壮。我们还通过使用模型的Fisher信息矩阵来介绍替代性Laplace逼近。根据实验,这种替代逼近提供了与使用模型的Hessian矩阵的传统拉普拉斯逼近非常相似的后验逼近和预测性能。但是,与传统的Laplace逼近相比,拟议的Laplace-Fisher逼近计算更快,更稳定。我们还将这两个拉普拉斯近似值与马尔可夫链蒙特卡罗(MCMC)方法进行比较。我们讨论了在假定数据的概率模型不是对数凹形的情况下,通常该方法如何改进推理算法。

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