Mining and Analyzing Occupational Characteristics from Job Postings

Dena F. Mujtaba, N. Mahapatra
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引用次数: 1

Abstract

Hiring/recruitment is key to an organization’s ability to position itself for success by attracting the right talent. Similarly, job search enables workers to connect to the right jobs in the right organizations. To assist in the hiring and job search processes, many technology solutions such as interest inventories, job recommendation models, job boards, and career pathway planning tools have been developed. However, solutions for preparing job postings are lacking. Job postings/ads play an essential role in hiring the right talent since they signal to the jobseeker the knowledge, skills, abilities, and other occupation-related characteristics (KSAOs) needed for a job. If the job ad does not convey the correct occupational characteristics, it is less likely that a well-qualified candidate will apply. Therefore, we present an interactive job ad visualization tool that analyzes the text in a job ad and matches phrases in it to a large occupational taxonomy of KSAOs. We combine O*NET, an occupational taxonomy, with natural language processing to perform semantic similarity matching between KSAOs for an occupation and ad text, and thereby assist jobseekers in their search process and recruiters in preparing job ads.
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从招聘信息中挖掘和分析职业特征
雇佣/招聘是一个组织通过吸引合适的人才来定位自己走向成功的关键。同样,工作搜索使员工能够在合适的组织中找到合适的工作。为了帮助招聘和求职过程,许多技术解决方案,如兴趣清单、工作推荐模型、工作公告板和职业道路规划工具已经开发出来。然而,目前还缺乏准备招聘信息的解决方案。招聘广告在招聘合适的人才方面起着至关重要的作用,因为它们向求职者发出了工作所需的知识、技能、能力和其他与职业相关的特征(KSAOs)的信号。如果招聘广告没有传达正确的职业特征,那么一个合格的候选人申请的可能性就会降低。因此,我们提出了一个交互式招聘广告可视化工具,该工具可以分析招聘广告中的文本,并将其中的短语与KSAOs的大型职业分类相匹配。我们将职业分类法O*NET与自然语言处理相结合,在职业和广告文本的ksao之间进行语义相似度匹配,从而帮助求职者在搜索过程中帮助招聘者准备招聘广告。
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