Hierarchical Non-Stationary Temporal Gaussian Processes With $L^1$-Regularization
Zheng Zhao,
Rui Gao,
Simo Särkkä
Abstract: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 regularize… Show more
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