利用来自多个存储库的预测来改进Bot检测

Natarajan Chidambaram, Alexandre Decan, M. Golzadeh
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引用次数: 4

摘要

像GitHub这样的当代社交编码平台促进了协作式分布式软件开发。从事这些平台的开发人员经常使用机器帐户(bot)来自动化工作量大或重复的活动。在社会技术研究中,确定一个贡献者是否对应于机器人或人类账户是很重要的,例如,评估使用机器人的积极和消极影响,分析机器人的发展及其使用情况,确定顶级人类贡献者等等。BoDeGHa是文献中提出的机器人检测工具之一。它依赖于单个存储库中的评论活动来预测一个帐户是由机器人还是由人类驱动的。本文介绍了如何通过结合从多个库中获得的预测来提高BoDeGHa的有效性的初步结果。我们发现,这样做不仅增加了可以做出预测的案例数量,而且许多不同的预测都可以通过这种方式进行修正。这些有希望的初步结果表明,“群体智慧”原则可以提高机器人检测工具的有效性。
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Leveraging Predictions From Multiple Repositories to Improve Bot Detection
Contemporary social coding platforms such as GitHub facilitate collaborative distributed software development. Developers engaged in these platforms often use machine accounts (bots) for automating effort-intensive or repetitive activities. Determining whether a contributor corresponds to a bot or a human account is important in socio-technical studies, for example to assess the positive and negative impact of using bots, analyse the evolution of bots and their usage, identify top human contributors, and so on. BoDeGHa is one of the bot detection tools that have been proposed in the literature. It relies on comment activity within a single repository to predict whether an account is driven by a bot or by a human. This paper presents preliminary results on how the effectiveness of BoDeGHa can be improved by combining the predictions obtained from many repositories at once. We found that doing this not only increases the number of cases for which a prediction can be made, but that many diverging predictions can be fixed this way. These promising, albeit preliminary, results suggest that the “wisdom of the crowd” principle can improve the effectiveness of bot detection tools.
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