Loukas Andreas, Perraudin Nathanaël
1Laboratoire de Traitement des Signaux 2, École Polytechnique Fédérale Lausanne, Lausanne, 1015 Switzerland.
2Swiss Data Science Center, Eidgenössische Technische Hochschule Zürich, Universitätstrasse 25, Zürich, 8006 Switzerland.
EURASIP J Adv Signal Process. 2019;2019(1):36. doi: 10.1186/s13634-019-0631-7. Epub 2019 Aug 20.
This paper considers regression tasks involving high-dimensional multivariate processes whose structure is dependent on some known graph topology. We put forth a new definition of time-vertex wide-sense stationarity, or for short, that goes beyond product graphs. Joint stationarity helps by reducing the estimation variance and recovery complexity. In particular, for any jointly stationary process (a) one reliably learns the covariance structure from as little as a single realization of the process and (b) solves MMSE recovery problems, such as interpolation and denoising, in computational time nearly linear on the number of edges and timesteps. Experiments with three datasets suggest that joint stationarity can yield accuracy improvements in the recovery of high-dimensional processes evolving over a graph, even when the latter is only approximately known, or the process is not strictly stationary.
本文考虑涉及高维多元过程的回归任务,这些过程的结构依赖于某些已知的图拓扑结构。我们提出了一种时间顶点广义平稳性的新定义,简称为TVWS,它超越了乘积图。联合平稳性通过降低估计方差和恢复复杂度来提供帮助。特别地,对于任何联合平稳过程,(a)仅从该过程的单个实现中就能可靠地学习协方差结构,并且(b)在计算时间上以几乎与边数和时间步长呈线性关系的方式解决MMSE恢复问题,例如插值和去噪。对三个数据集的实验表明,即使图只是近似已知,或者过程不是严格平稳的,联合平稳性也能在恢复图上演变的高维过程时提高准确性。