An improvement of recommender system to find appropriate candidate for recruitment with colloborative filtering

Chanawee Chanavaltada, Panpaporn Likitphanitkul, M. Phankokkruad
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引用次数: 7

Abstract

Recruitment is a significant process that affects to organizational performance. Recruiters expect to meet the most appropriate employee for the right job, but a large number of resumes make more difficult to their decision. For this reason, this paper proposed the recommender system to support recruiter in the decision and manage recruitments. The two techniques include matching and collaborative filtering. In the matching process, it compares the profile data and takes a score in order to rank the candidates. However, the scoring remains some problem that candidate scores are low dispersion. Therefore, the collaborative filtering technique was used to solve scoring problem. By applying this technique, the results shown that the scores were adjusted the distinction. Thus, the collaborative filtering could improve the score dispersion and easy to identify the most appropriate candidates, who had the best required qualification.
基于协同过滤的招聘推荐系统改进
招聘是影响组织绩效的一个重要过程。招聘人员希望能找到最适合自己工作的人,但是大量的简历让他们更难做出决定。为此,本文提出了推荐系统,以支持招聘者的决策和招聘管理。这两种技术包括匹配和协同过滤。在匹配过程中,它比较配置文件数据并进行评分,以便对候选人进行排名。然而,评分仍然存在考生分数分散度低的问题。因此,采用协同过滤技术来解决评分问题。应用该技术,结果表明,分数调整的区别。因此,协同过滤可以改善分数的分散性,并易于识别出最合适的候选人,这些候选人具有最佳的所需资格。
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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