EigenNetworks
Jonathan Mei, Jos\'e M.F. Moura

TL;DR
This paper introduces a method to approximate and analyze time-varying networks in multivariate time series data using eigennetworks, enabling efficient tracking and changepoint detection.
Contribution
It proposes a novel eigennetwork-based framework for modeling dynamic networks, including algorithms for learning, analysis, and changepoint detection from data.
Findings
Effective in capturing network dynamics in simulated data
Provides meaningful interpretations in real-world datasets
Detects structural network shifts accurately
Abstract
Many applications donot have the benefit of the laws of physics to derive succinct descriptive models for observed data. In alternative, interdependencies among time series are nowadays often captured by a graph or network that in practice may be very large. The network itself may change over time as well (i.e., as ). Tracking brute force the changes of time varying networks presents major challenges, including the associated computational problems. Further, a large set of networks may not lend itself to useful analysis. This paper approximates the time varying networks as weighted linear combinations of eigennetworks. The eigennetworks are fixed building blocks that are estimated by first learning the time series of graphs from the data , followed by a Principal Network Analysis…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Machine Learning in Healthcare · Advanced Graph Neural Networks
