Dev2vec: Representing Domain Expertise of Developers in an Embedding Space

Arghavan Moradi Dakhel, M. Desmarais, Foutse Khomh
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引用次数: 3

Abstract

Accurate assessment of the domain expertise of developers is important for assigning the proper candidate to contribute to a project or to attend a job role. Since the potential candidate can come from a large pool, the automated assessment of this domain expertise is a desirable goal. While previous methods have had some success within a single software project, the assessment of a developer's domain expertise from contributions across multiple projects is more challenging. In this paper, we employ doc2vec to represent the domain expertise of developers as embedding vectors. These vectors are derived from different sources that contain evidence of developers' expertise, such as the description of repositories that they contributed, their issue resolving history, and API calls in their commits. We name it dev2vec and demonstrate its effectiveness in representing the technical specialization of developers. Our results indicate that encoding the expertise of developers in an embedding vector outperforms state-of-the-art methods and improves the F1-score up to 21%. Moreover, our findings suggest that ``issue resolving history'' of developers is the most informative source of information to represent the domain expertise of developers in embedding spaces.
Dev2vec:在嵌入空间中表示开发人员的领域专业知识
对开发人员领域专业知识的准确评估对于分配合适的候选人为项目做出贡献或参加工作角色非常重要。由于潜在的候选人可能来自一个大的库,因此对该领域专业知识的自动评估是一个理想的目标。虽然以前的方法在单个软件项目中取得了一些成功,但是从跨多个项目的贡献中评估开发人员的领域专业知识更具挑战性。在本文中,我们使用doc2vec来表示开发人员的领域专业知识作为嵌入向量。这些向量来自不同的来源,这些来源包含开发人员专业知识的证据,例如他们贡献的存储库的描述,他们的问题解决历史,以及他们提交中的API调用。我们将其命名为dev2vec,并证明它在代表开发人员的技术专门化方面的有效性。我们的研究结果表明,在嵌入向量中编码开发人员的专业知识优于最先进的方法,并将f1得分提高了21%。此外,我们的研究结果表明,开发人员的“问题解决历史”是代表嵌入空间中开发人员领域专业知识的最具信息量的信息来源。
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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