DevFlair: A Framework to Automate the Pre-screening Process of Software Engineering Job Candidates

Ravihari Jayasekara, K.A.N.D Kudarachchi, K. Kariyawasam, Dilini Sewwandi Rajapaksha, S.L Jayasinghe, S. Thelijjagoda
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Abstract

The HR department of a technology company receives hundreds of job applications for each Software Engineering related vacancy. Evaluating a candidate by looking at the curriculum vitae may appear to be easy during the pre-screening process. However, an automated pre-screening process using Natural Language Processing and Machine Learning methodologies would help the recruiter to obtain a more accurate and deeper understanding of the candidate. In this paper we propose “DevFlair”, a framework to automate pre-screening Software Engineering job candidates. DevFlair uses data from social media, GitHub, and open-ended questionnaires to predict the Big-Five personality traits, analyze technical skill expertise, and analyze the experience in using industry-related online platforms. After analysis, the candidates are ranked according to their personality and technical skill levels. We conduct the personality prediction experiments using a social media posts dataset annotated with gold-standard Big-Five personality labels. We train FastText classification models and compare their accuracy against other state of the art classification models. The comparisons conclude that the FastText classification models substantially outperform the state of the art classification models when predicting Openness, Conscientiousness, and Agreeableness personality traits.
DevFlair:一个框架,自动预筛选过程的软件工程工作候选人
一家科技公司的人力资源部门收到数百份与软件工程相关的职位申请。在预筛选过程中,通过查看简历来评估候选人似乎很容易。然而,使用自然语言处理和机器学习方法的自动预筛选过程将有助于招聘人员更准确、更深入地了解候选人。在本文中,我们提出了“DevFlair”,一个自动预筛选软件工程工作候选人的框架。DevFlair使用来自社交媒体、GitHub和开放式问卷的数据来预测大五人格特征,分析技术技能专长,分析使用行业相关在线平台的经验。经过分析,候选人根据他们的个性和技术水平进行排名。我们使用带有金标准大五人格标签注释的社交媒体帖子数据集进行人格预测实验。我们训练FastText分类模型,并将其准确性与其他最先进的分类模型进行比较。比较得出结论,FastText分类模型在预测开放性、严谨性和亲和性人格特征时,显著优于目前最先进的分类模型。
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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