This paper is concerned with regularized extensions of hierarchical non-stationary temporal Gaussian processes (NSGPs) in which the parameters (e.g., length-scale) are modeled as GPs. In particular, we consider two commonly used NSGP constructions which are based on explicitly constructed non-stationary covariance functions and stochastic differential equations, respectively. We extend these NSGPs by including $L^1$-regularization on the processes in order to induce sparseness. To solve the resulting regularized NSGP (R-NSGP) regression problem we develop a method based on the alternating direction method of multipliers (ADMM) and we also analyze its convergence properties theoretically. We also evaluate the performance of the proposed methods in simulated and real-world datasets.
翻译:本文所关注的是非静止的等级性高时程流程(NSGP)的正常扩展,其参数(如长度尺度)以GP为模型,特别是,我们认为两种通用的NSGP建筑分别基于明确建造的非静止共变函数和随机差分方程,我们扩大这些NSGP,在流程中包括1美元固定化,以诱发稀薄。为了解决由此产生的常规化NSGP(R-NSGP)回归问题,我们制定了一种基于乘数交替方向法(ADMM)的方法,我们还从理论上分析了其趋同特性。我们还评估了模拟和现实世界数据集中拟议方法的性能。