GitHub协作网络上的社区形成和检测

Behnaz Moradi-Jamei, Brandon L. Kramer, J. Bayo´an, Santiago Calder´on, Gizem Korkmaz
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引用次数: 2

摘要

本文研究了OSS协作网络中的社区形成。虽然目前的大多数工作都是研究小规模OSS项目的出现,但我们的方法利用了180万GitHub用户及其存储库贡献的大规模历史数据集。OSS协作的特点是紧密合作的小用户组,导致底层网络结构中由短周期定义的社区的存在。为了理解这种现象的影响,我们在实施Louvain方法来识别网络中的社区之前,应用了一个预处理步骤,通过使用更新-非回溯随机行走(RNBRW)和成对协作的强度来解释循环网络结构。为Louvain配备RNBRW和贡献强度提供了一种更自信的方法来检测小规模团队,并揭示了社区检测中的重要差异,例如用户倾向于优先依恋更成熟的协作社区。利用这种方法,我们还确定了影响社区形成的关键因素,包括用户位置和主要编程语言的影响,这是通过贡献活动的比较方法确定的。总的来说,本文为开源软件专家和对研究团队形成感兴趣的网络学者提供了一些有前途的方法论见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community formation and detection on GitHub collaboration networks
This paper studies community formation in OSS collaboration networks. While most current work examines the emergence of small-scale OSS projects, our approach draws on a large-scale historical dataset of 1.8 million GitHub users and their repository contributions. OSS collaborations are characterized by small groups of users that work closely together, leading to the presence of communities defined by short cycles in the underlying network structure. To understand the impact of this phenomenon, we apply a pre-processing step that accounts for the cyclic network structure by using Renewal-Nonbacktracking Random Walks (RNBRW) and the strength of pairwise collaborations before implementing the Louvain method to identify communities within the network. Equipping Louvain with RNBRW and the contribution strength provides a more assertive approach for detecting small-scale teams and reveals nontrivial differences in community detection such as users' tendencies toward preferential attachment to more established collaboration communities. Using this method, we also identify key factors that affect community formation, including the effect of users' location and primary programming language, which was determined using a comparative method of contribution activities. Overall, this paper offers several promising methodological insights for both open-source software experts and network scholars interested in studying team formation.
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