基于异构神经网络的GitHub欺诈推广检测

Zexin Ning, Pengtao Pu, Jiashen Lin
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引用次数: 0

摘要

GitHub中存在欺诈性的推广行为,它为特定的存储库推广Stars和Forks。它对开源社区的环境是有害的,而GitHub还没有有效地检测到它。本文应用异构神经网络来检测涉嫌欺诈促销行为的存储库。提出了一种具有注意机制和超图生成的异构微图神经网络来检测存在作弊行为的存储库。注意机制可以动态平衡异构信息网络中语义的权重。超图生成方法可以解决数据集中小图过多导致的连通性差的问题。实验结果表明,该模型能够有效地检测出这种作弊行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraudulent promotion detection on GitHub using heterogeneous neural network
There are fraudulent promotion behaviors in GitHub, which promotes Stars and Forks for specific repositories. It is harmful to the environment of the open source community, while it is not effectively detected by GitHub yet. This paper applies a heterogeneous neural network to detect repositories that are suspected of fraudulent promotion behavior. A heterogenous mini-graph neural network with attention mechanism and hyper-graph generation is proposed to detect repositories with cheating behaviors. Attention mechanism can dynamically balance the weight of semantics in heterogeneous information networks. Hyper-graph generation method can solve the problem of poor connectivity caused by many small graphs in the dataset. The experimental result shows that the model can effectively detect this kind of cheating behavior.
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