A Frequency-Structure Approach for Link Stream Analysis
Esteban Bautista, Matthieu Latapy

TL;DR
This paper introduces a novel linear matrix framework for analyzing link streams, enabling the application of signal processing techniques to understand their temporal and structural properties.
Contribution
It develops a new basis and filters for graphs and link streams, allowing multi-resolution structural analysis within a frequency-structure domain.
Findings
Link streams can be represented in a frequency-structure domain.
Many transformations like aggregation and embedding are interpretable as filters.
The framework bridges signal processing and structural analysis of link streams.
Abstract
A link stream is a set of triplets indicating that and interacted at time . Link streams model numerous datasets and their proper study is crucial in many applications. In practice, raw link streams are often aggregated or transformed into time series or graphs where decisions are made. Yet, it remains unclear how the dynamical and structural information of a raw link stream carries into the transformed object. This work shows that it is possible to shed light into this question by studying link streams via algebraically linear graph and signal operators, for which we introduce a novel linear matrix framework for the analysis of link streams. We show that, due to their linearity, most methods in signal processing can be easily adopted by our framework to analyze the time/frequency information of link streams. However, the availability of linear graph methods to…
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Taxonomy
TopicsData Visualization and Analytics · Complex Network Analysis Techniques
