Bots Don’t Mind Waiting, Do They? Comparing the Interaction With Automatically and Manually Created Pull Requests

Marvin Wyrich, Raoul Ghit, T. Haller, Christiana Müller
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引用次数: 19

Abstract

As a maintainer of an open source software project, you are usually happy about contributions in the form of pull requests that bring the project a step forward. Past studies have shown that when reviewing a pull request, not only its content is taken into account, but also, for example, the social characteristics of the contributor. Whether a contribution is accepted and how long this takes therefore depends not only on the content of the contribution. What we only have indications for so far, however, is that pull requests from bots may be prioritized lower, even if the bots are explicitly deployed by the development team and are considered useful. One goal of the bot research and development community is to design helpful bots to effectively support software development in a variety of ways. To get closer to this goal, in this GitHub mining study, we examine the measurable differences in how maintainers interact with manually created pull requests from humans compared to those created automatically by bots. About one third of all pull requests on GitHub currently come from bots. While pull requests from humans are accepted and merged in 72.53% of all cases, this applies to only 37.38% of bot pull requests. Furthermore, it takes significantly longer for a bot pull request to be interacted with and for it to be merged, even though they contain fewer changes on average than human pull requests. These results suggest that bots have yet to realize their full potential.
机器人不介意等待,是吗?比较自动和手动创建的拉取请求的交互
作为开源软件项目的维护者,您通常会对以pull请求形式的贡献感到高兴,这些贡献使项目向前迈进了一步。过去的研究表明,在审查拉请求时,不仅会考虑其内容,还会考虑贡献者的社会特征等。因此,一个贡献是否被接受以及需要多长时间不仅取决于贡献的内容。然而,到目前为止,我们仅有的迹象是,来自机器人的拉取请求可能优先级较低,即使机器人被开发团队明确部署并且被认为是有用的。机器人研究和开发社区的一个目标是设计有用的机器人,以各种方式有效地支持软件开发。为了更接近这个目标,在这个GitHub挖掘研究中,我们研究了维护者与人工创建的拉请求交互方式与机器人自动创建的拉请求交互方式的可测量差异。目前,GitHub上大约三分之一的拉取请求来自机器人。虽然来自人类的拉取请求在所有情况下被接受和合并的比例为72.53%,但这只适用于37.38%的机器人拉取请求。此外,机器人拉取请求与之交互和合并所需的时间要长得多,尽管它们平均包含的更改比人工拉取请求少。这些结果表明,机器人尚未充分发挥其潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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