We examine the general problem of inter-domain Gaussian Processes (GPs): problems where the GP realization and the noisy observations of that realization lie on different domains. When the mapping between those domains is linear, such as integration or differentiation, inference is still closed form. However, many of the scaling and approximation techniques that our community has developed do not apply to this setting. In this work, we introduce the hierarchical inducing point GP (HIP-GP), a scalable inter-domain GP inference method that enables us to improve the approximation accuracy by increasing the number of inducing points to the millions. HIP-GP, which relies on inducing points with grid structure and a stationary kernel assumption, is suitable for low-dimensional problems. In developing HIP-GP, we introduce (1) a fast whitening strategy, and (2) a novel preconditioner for conjugate gradients which can be helpful in general GP settings. Our code is available at https: //github.com/cunningham-lab/hipgp.
翻译:我们研究高山间进程(GPs)的一般问题:GP的实现和对实现的杂音观测存在于不同领域的问题。当这些领域之间的绘图是线性,例如整合或区分,推断仍然是封闭的形式。然而,我们社区开发的许多缩放和近似技术并不适用于这一环境。我们在此工作中引入了等级引导点GP(HIP-GP),这是一种可伸缩的跨部GP推断方法,通过增加数百万引出点的数量来提高近似准确性。HIP-GP依靠电网结构和固定内核假设的导点,适合低维度问题。在开发HIP-GP时,我们引入了(1) 快速白化战略,和(2) 类似梯度的新型先决条件,在一般GP环境中可以有所帮助。我们的代码可在https:/github.com/cunningham-lab/higgp上查阅。