Sample entropy for graph signals: An approach to nonlinear analysis of graph signals

Abstract

We introduce a graph-signal generalisation of Sample Entropy, denoted SampEnG, to quantify irregularity of graph signals on a continuous state space, complementing existing methods on symbolic dynamics. Our approach replaces the temporal delay embedding of classical SampEn with a multi-hop graph-based embedding: for each node, we aggregate patterns from local walk-weighted neighbourhood averages computed via powers of the graph shift operator. We show empirically that SampEnG reduces to classical 1D SampEn on directed path graphs, and validate its nonlinear sensitivity using the logistic map. Experiments on directed Erdos--R\'enyi graph signals further characterise its behaviour with connectivity and pattern length m, with practical runtimes on the order of thousands of nodes. We expect SampEnG to open up new ways to analyse graph signals, generalising SampEn and the concept of conditional entropy to extending nonlinear analysis to a wide variety of network data.

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