基于机器学习的简历排名系统的设计与开发

Tejaswini K , Umadevi V , Shashank M Kadiwal , Sanjay Revanna
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引用次数: 17

摘要

为空缺职位找到合适的求职者可能是一个困难的过程,尤其是当有很多候选人的时候。手动筛选简历的过程可能会阻碍团队在合适的时间找到合适的人选。这种费力的筛选可以通过筛选和排序申请人的自动化技术得到极大的帮助。在我们的工作中,可能会使用基于内容的建议对排名靠前的申请人进行评级,该建议使用余弦相似性来找到与所提供的职位描述最具可比性的简历,并使用KNN算法根据大量的职位描述来挑选和排名简历(CV)。实验结果表明,该系统的平均文本解析准确率为85%,排序准确率为92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and development of machine learning based resume ranking system

Finding acceptable applicants for a vacant job might be a difficult process, especially when there are many prospects. The manual process of screening resumes could stymie the team's efforts to locate the right individual at the right moment. The laborious screening may be greatly aided by an automated technique for screening and ranking applicants. In our work, the top applicants might be rated using content-based suggestion, which uses cosine similarity to find the curriculum vitae that are the most comparable to the job description supplied and KNN algorithm is used to pick and rank Curriculum Vitaes (CV) based on job descriptions in huge quantities. Experimental results indicate the performance of the proposed system as an average text parsing accuracy of 85% and a ranking accuracy of 92%.

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