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An Evaluation Tool for Backbone Extraction Techniques in Weighted Complex Networks

Social and Information Networks 2025-03-21 v1 Software Engineering

Abstract

Networks are essential for analyzing complex systems. However, their growing size necessitates backbone extraction techniques aimed at reducing their size while retaining critical features. In practice, selecting, implementing, and evaluating the most suitable backbone extraction method may be challenging. This paper introduces netbone, a Python package designed for assessing the performance of backbone extraction techniques in weighted networks. Its comparison framework is the standout feature of netbone. Indeed, the tool incorporates state-of-the-art backbone extraction techniques. Furthermore, it provides a comprehensive suite of evaluation metrics allowing users to evaluate different backbones techniques. We illustrate the flexibility and effectiveness of netbone through the US air transportation network analysis. We compare the performance of different backbone extraction techniques using the evaluation metrics. We also show how users can integrate a new backbone extraction method into the comparison framework. netbone is publicly available as an open-source tool, ensuring its accessibility to researchers and practitioners. Promoting standardized evaluation practices contributes to the advancement of backbone extraction techniques and fosters reproducibility and comparability in research efforts. We anticipate that netbone will serve as a valuable resource for researchers and practitioners enabling them to make informed decisions when selecting backbone extraction techniques to gain insights into the structural and functional properties of complex systems.

Keywords

Cite

@article{arxiv.2503.16350,
  title  = {An Evaluation Tool for Backbone Extraction Techniques in Weighted Complex Networks},
  author = {Ali Yassin and Abbas Haidar and Hocine Cherifi and Hamida Seba and Olivier Togni},
  journal= {arXiv preprint arXiv:2503.16350},
  year   = {2025}
}
R2 v1 2026-06-28T22:28:32.373Z