Symbolic Higher-Order Analysis of Multivariate Time Series

May 31, 2025 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Andrea Civilini, Fabrizio de Vico Fallani, Vito Latora arXiv ID 2506.00508 Category physics.soc-ph Cross-listed cs.SI, physics.app-ph, physics.data-an Citations 1 Venue arXiv.org Last Checked 4 months ago
Abstract
Identifying patterns of relations among the units of a complex system from measurements of their activities in time is a fundamental problem with many practical applications. Here, we introduce a method that detects dependencies of any order in multivariate time series data. The method first transforms a multivariate time series into a symbolic sequence, and then extract statistically significant strings of symbols through a Bayesian approach. Such motifs are finally modelled as the hyperedges of a hypergraph, allowing us to use network theory to study higher-order interactions in the original data. When applied to neural and social systems, our method reveals meaningful higher-order dependencies, highlighting their importance in both brain function and social behaviour.
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