BDGOA:用于GitHub OAuth应用程序的bot检测方法

Zhifang Liao;Xuechun Huang;Bolin Zhang;Jinsong Wu;Yu Cheng
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引用次数: 0

摘要

随着各种软件机器人在开源软件库中被广泛使用,一些缺点也逐渐暴露出来,比如给新手非正反馈和误导软件工程研究人员的实证研究。研究人员已经提出了几种进行bot检测的技术,但大多数技术仅限于识别执行特定活动的bot,更不用说区分GitHub App和OAuth App了。在本文中,我们提出了一种OAuth App的bot检测技术,名为BDGOA。BDGOA使用了24个特征,可以分为三个维度:账户信息、账户活跃度和文本相似度。为了更好地探索行为特征,我们定义了行为事件的细粒度分类,并引入自相似性来量化行为序列的可重复性。我们利用5个机器学习分类器在基准数据集上进行bot检测,最终选择random forest作为分类器,其f1得分最高,达到95.83%。实验结果与现有方法的比较也证明了BDGOA的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BDGOA: A bot detection approach for GitHub OAuth Apps
As various software bots are widely used in open source software repositories, some drawbacks are coming to light, such as giving newcomers non-positive feedback and misleading empirical studies of software engineering researchers. Several techniques have been proposed by researchers to perform bot detection, but most of them are limited to identifying bots performing specific activities, let alone distinguishing between GitHub App and OAuth App. In this paper, we propose a bot detection technique for OAuth App, named BDGOA. 24 features are used in BDGOA, which can be divided into three dimensions: account information, account activity, and text similarity. To better explore the behavioral features, we define a fine-grained classification of behavioral events and introduce self-similarity to quantify the repeatability of behavioral sequence. We leverage five machine learning classifiers on the benchmark dataset to conduct bot detection, and finally choose random forest as the classifier, which achieves the highest F1-score of 95.83%. The experimental results comparing with the state-of-the-art approaches also demonstrate the superiority of BDGOA.
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