Abstract / truncated to 115 words (read the full abstract)

Inference and data analysis over networks have become significant areas of research due to the increasing prevalence of interconnected systems and the growing volume of data they produce. Many of these systems generate data in the form of multivariate time series, which are collections of time series data that are observed simultaneously across multiple variables. For example, EEG measurements of the brain produce multivariate time series data that record the electrical activity of different brain regions over time. Cyber-physical systems generate multivariate time series that capture the behaviour of physical systems in response to cybernetic inputs. Similarly, financial time series reflect the dynamics of multiple financial instruments or market indices over time. Through the analysis ... toggle 4 keywords

graph learning nonlinear online multivariate time series


Rohan Money
University of Agder, Norway
Publication Year
Upload Date
Oct. 17, 2023

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