TY - EJOUR
AB - The goal of this paper is to improve learning for multivariate processes whose structure is dependent on some known graph topology. Typically, the graph information is incorporated to the learning process via a smoothness assumption postulating that the values supported on well connected vertices exhibit small variations. We argue that smoothness is not enough. To capture the behavior of complex interconnected systems, such as transportation and biological networks, it is important to train expressive models, being able to reproduce a wide range of graph and temporal behaviors. Motivated by this need, this paper puts forth a novel definition of time-vertex wide-sense stationarity, or joint stationarity for short. We believe that the proposed definition is natural, at it elegantly relates to existing definitions of stationarity in the time and vertex domains. We use joint stationarity to regularize learning and to reduce computational complexity in both estimation and recovery tasks. In particular, we show that for any jointly stationary process: (a) one can learn the covariance structure from O(1) samples, and (b) can solve MMSE recovery problems, such as interpolation, denoising, forecasting, in complexity that is linear to the edges and timesteps. Experiments with three datasets suggest that joint stationarity can yield significant accuracy improvements in the reconstruction effort.
T1 - Stationary time-vertex signal processing
AU - Loukas, Andreas
AU - Perraudin, NathanaĆ«l
JF - IEEE Transactions on Signal Processing
ID - 222804
KW - stationarity
KW - ultivariate time-vertex processes
KW - harmonic analysis
KW - graph signal processing
KW - PSD estimation
UR - http://infoscience.epfl.ch/record/222804/files/perraudin-note-016_1.pdf
ER -