Litcius/Paper detail

Algorithms for Large-Scale Network Analysis and the NetworKit Toolkit

Eugenio Angriman, Alexander van der Grinten, Michael Hamann, Henning Meyerhenke, Manuel Penschuck

2022Lecture notes in computer science17 citationsDOIOpen Access PDF

Abstract

Abstract The abundance of massive network data in a plethora of applications makes scalable analysis algorithms and software tools necessary to generate knowledge from such data in reasonable time. Addressing scalability as well as other requirements such as good usability and a rich feature set, the open-source software NetworKit has established itself as a popular tool for large-scale network analysis. This chapter provides a brief overview of the contributions to NetworKit made by the SPP 1736. Algorithmic contributions in the areas of centrality computations, community detection, and sparsification are in the focus, but we also mention several other aspects – such as current software engineering principles of the project and ways to visualize network data within a NetworKit -based workflow.

Topics & Concepts

Computer scienceWorkflowScalabilityUsabilitySoftwareSet (abstract data type)Software engineeringData scienceCentralityFocus (optics)Scale (ratio)Data miningDatabaseProgramming languageHuman–computer interactionQuantum mechanicsMathematicsCombinatoricsOpticsPhysicsComplex Network Analysis TechniquesAdvanced Graph Neural NetworksBioinformatics and Genomic Networks