2022
DOI: 10.48550/arxiv.2205.11338
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Temporal Network Analysis Using Zigzag Persistence

Abstract: This work presents a framework for studying temporal networks using zigzag persistence, a tool from the field of Topological Data Analysis (TDA). The resulting approach is general and applicable to a wide variety of time-varying graphs. For example, these graphs may correspond to a system modeled as a network with edges whose weights are functions of time, or they may represent a time series of a complex dynamical system. We use simplicial complexes to represent snapshots of the temporal networks that can then… Show more

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“…Advances in TDA have enabled the analysis of data that evolves non-monotonically over time [46,11,27,28], including generalizing PH to zigzag persistence [9,43,4]. These dynamic TDA methods have been applied to analyzing aggregation models, fish swarms, and temporal networks [13,46,37]. Zigzag persistence of dynamic data for larger systems was computationally out of reach until recently [10].…”
mentioning
confidence: 99%
“…Advances in TDA have enabled the analysis of data that evolves non-monotonically over time [46,11,27,28], including generalizing PH to zigzag persistence [9,43,4]. These dynamic TDA methods have been applied to analyzing aggregation models, fish swarms, and temporal networks [13,46,37]. Zigzag persistence of dynamic data for larger systems was computationally out of reach until recently [10].…”
mentioning
confidence: 99%