CDLIB: a python library to extract, compare and evaluate communities from complex networks
Academic Article
Publication Date:
2019
abstract:
Community Discovery is among the most studied problems in complex network analysis. During the last decade, many algorithms have been proposed to address such task; however, only a few of them have been integrated into a common framework, making it hard to use and compare different solutions. To support developers, researchers and practitioners, in this paper we introduce a python library - namely CDlib - designed to serve this need. The aim of CDlib is to allow easy and standardized access to a wide variety of network clustering algorithms, to evaluate and compare the results they provide, and to visualize them. It notably provides the largest available collection of community detection implementations, with a total of 39 algorithms.
Iris type:
01.01 Articolo in rivista
Keywords:
Community detection framework; Community discovery library; Social network analysis
List of contributors:
Milli, Letizia; Rossetti, Giulio
Full Text:
Published in: