使用机器学习和眼球追踪数据来预测招聘人员是否会批准一份简历

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Angel Pina, Corbin Petersheim, Josh Cherian, J. Lahey, Gerianne Alexander, T. Hammond
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引用次数: 0

摘要

当求职者找不到工作的时候,他们通常不会得到反馈,告诉他们如何在未来更好地申请工作。因此,为了帮助求职者,我们非常有必要了解招聘人员看重哪些资质。为了满足这一需求,我们利用眼动仪来测量和记录招聘人员筛选简历的视觉数据,以深入了解哪些兴趣领域(AOIs)对招聘人员的决定影响最大。仅使用这些眼球追踪数据,我们训练了一个机器学习分类器来预测招聘人员是否会将简历转移到招聘流程的下一个阶段,AUC为0.767。我们发现,与招聘人员看简历内容之外的特征有关的特征,以及看简历的总时间和花在经历和教育方面的时间,最能预测他们的决定。我们假设这种行为表明招聘人员对简历的内容进行了反思。这些初步结果表明,求职者应该专注于设计清晰简洁的简历,以便招聘人员容易吸收和思考,同时还要注意工作经历和教育背景部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Machine Learning with Eye-Tracking Data to Predict if a Recruiter Will Approve a Resume
When job seekers are unsuccessful in getting a position, they often do not get feedback to inform them on how to develop a better application in the future. Therefore, there is a critical need to understand what qualifications recruiters value in order to help applicants. To address this need, we utilized eye-trackers to measure and record visual data of recruiters screening resumes to gain insight into which Areas of Interest (AOIs) influenced recruiters’ decisions the most. Using just this eye-tracking data, we trained a machine learning classifier to predict whether or not a recruiter would move a resume on to the next level of the hiring process with an AUC of 0.767. We found that features associated with recruiters looking outside the content of a resume were most predictive of their decision as well as total time viewing the resume and time spent on the Experience and Education sections. We hypothesize that this behavior is indicative of the recruiter reflecting on the content of the resume. These initial results show that applicants should focus on designing clear and concise resumes that are easy for recruiters to absorb and think about, with additional attention given to the Experience and Education sections.
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来源期刊
CiteScore
6.30
自引率
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审稿时长
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