TF-IDF和相似角的调和方法在招聘环境中识别潜在申请人

Ronie C. Bituin, Ronielle B. Antonio, James A. Esquivel
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引用次数: 1

摘要

招聘行业比以往任何时候都更好、更大。不可否认,技术在帮助招聘人员跟上全球招聘步伐方面发挥了重要作用。随着人口的不断增长,对人力的需求已经相对于招聘人员的增长和挑战性需求;无论是在线还是传统的外包方式。在这项研究中,我们提出了角度或相似度和术语频率逆文档频率的组合,以方便地分类潜在的求职者。结果表明,这两个模型是相对于彼此的,价值明智和调和均值。它们的值根据我们的查询在一定程度上是同步的。这很有帮助,因为招聘人员可以节省大量的时间来分类潜在的申请人。两种模型结合,谐波相似是可行的。作为未来的工作,可以开发一个功能齐全的应用程序,并将其部署到生产环境中。
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Harmonic Means between TF-IDF and Angle of Similarity to Identify Prospective Applicants in a Recruitment Setting
Recruitment industry is better and bigger than ever. There is no denying that technology plays a major role in helping recruiters evolve and adopt with the pace of recruitment on a global scale. With the increasing population, the demand for manpower has been relative to the growth and challenging needs of recruiters; be it online or traditional way of outsourcing. In this study, we propose a combination of angle or similarity and term frequency–inverse document frequency to easily classify prospective job applicants. The results show that the two models are relative to each other, value-wise and harmonic means. Their values are synchronized to a certain extent based on our query. This is helpful because recruiters may save a lot of time in classifying prospective applicants. It can also be concluded that harmonic similarity is viable in combining the two models. As a future work, it is possible to develop a full featured application to be deployed in a production setting.
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