Abteilung Datenbanken Leipzig (https://old.dbs.uni-leipzig.de)

Evolution of Degree Metrics in Large Temporal Graphs

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Google Scholar [2]

publication icon [3]Rost, C. [4]; Gomez, K. [5]; Christen, P. [6]; Rahm, E. [7]
Evolution of Degree Metrics in Large Temporal Graphs [8]
Conference on Database Systems for Business, Technology and Web (BTW) 2023
2023 [9]

Beschreibung

Graph metrics, such as the simple but popular vertex degree and others based on it, are well-defined for static graphs. However, adapting static metrics for temporal graphs is still part of current research. In this paper, we propose a set of temporal extensions of four degree-dependent metrics, as well as aggregations like minimum, maximum, and average degree of (i) a vertex over a time interval and (ii) a graph at a specific point in time. We show why using the static degree can lead to wrong assumptions about the relevance of a vertex in a temporal graph and highlight the need to include time as a dimension in the metric. We propose a baseline algorithm to calculate the degree evolution of all vertices in a temporal graph and show its implementation in a distributed in-memory dataflow system. Using real-world and synthetic datasets containing up to 462 million vertices and 1.7 billion edges, we show the scalability of our algorithm on a distributed cluster achieving a speedup of around 12 on 16 machines.


URL:
https://old.dbs.uni-leipzig.de/de/publication/title/evolution_of_degree_metrics_in_large_temporal_graphs