Variational Gaussian process (GP) approximations have become a standard tool in fast GP inference. This technique requires a user to select variational features to increase efficiency. So far the common choices in the literature are disparate and lacking generality. We propose to view the GP as lying in a Banach space which then facilitates a unified perspective. This is used to understand the relationship between existing features and to draw a connection between kernel ridge regression and variational GP approximations.
翻译:变式高斯进程近似值已成为快速GP推断的标准工具。 这一技术要求用户选择变式特征以提高效率。 到目前为止,文献中的共同选择是不同的,缺乏一般性。 我们提议将GP视为位于一个Banach空间,从而便利统一视角。 这被用来理解现有特征之间的关系,并在内核脊回归和变式GP近似值之间牵线搭桥。