Weibull Processes in Network Degree Distributions
Abstract
This study examines degree distributions in two large collaboration networks: the Microsoft Academic Graph (1800-2020) and Internet Movie Database (1900-2020), comprising and nodes respectively. Statistical comparison using measures showed that Weibull distributions fit the degree distributions better than power-law or log-normal models, especially at later stages in the network evolution. The Weibull shape parameters exhibit notable stability (- for academic, - for entertainment collaborations) despite orders of magnitude growth in network size. While early-stage networks display approximate power-law scaling, mature networks develop characteristic flattening in the low-degree region that Weibull distributions appear to capture better. In the academic network, the cutoff between the flattened region and power-law tail shows a gradual increase from to edges over time, while the entertainment network maintains a distinctive degree structure that may reflect storytelling and cast-size constraints. These patterns suggest the possibility that collaboration network evolution might be influenced more by constraint-based growth than by pure preferential attachment or multiplicative processes.
Keywords
Cite
@article{arxiv.2502.11372,
title = {Weibull Processes in Network Degree Distributions},
author = {Peter R Williams and Zhan Chen},
journal= {arXiv preprint arXiv:2502.11372},
year = {2025}
}