Existing online recruitment platforms depend on automatic ways of conducting the person-job fit, whose goal is matching appropriate job seekers with job positions. Intuitively, the previous successful recruitment records contain important information, which should be helpful for the current person-job fit. Existing studies on person-job fit, however, mainly focus on calculating the similarity between the candidate resumes and the job postings on the basis of their contents, without taking the recruiters' experience (i.e., historical successful recruitment records) into consideration. In this paper, we propose a novel neural network approach for person-job fit, which estimates person-job fit from candidate profile and related recruitment history with co-attention neural networks (named PJFCANN). Specifically, given a target resume-job post pair, PJFCANN generates local semantic representations through co-attention neural networks and global experience representations via graph neural networks. The final matching degree is calculated by combining these two representations. In this way, the historical successful recruitment records are introduced to enrich the features of resumes and job postings and strengthen the current matching process. Extensive experiments conducted on a large-scale recruitment dataset verify the effectiveness of PJFCANN compared with several state-of-the-art baselines. The codes are released at: https://github.com/CCIIPLab/PJFCANN.
翻译:现有的在线征聘平台取决于进行适合人职的自动方式,其目标在于将适当的求职者与职位匹配。直观地说,以往成功的征聘记录包含重要信息,对当前适合人职的情况应有所帮助。但是,关于适合人职的现有研究主要侧重于根据候选人的简历和职位公布内容来计算候选人的相似性,而没有考虑征聘者的经验(即历史上成功的征聘记录)来计算最后的匹配程度。在本文件中,我们提出了一个新的适合人职的神经网络方法,根据候选人的简历和相关征聘历史,与共同留任的神经网络(名为PJFCANN)估计适合人职和相关征聘历史。具体地说,鉴于目标的复职后对配,PJFCAN通过共同留任的神经网络和通过图表神经网络的全球经验介绍产生当地的语界代表。最后的匹配程度是通过合并这两种表述来计算的。在此过程中,引入了历史成功的征聘记录,以丰富简历和职位安排的特点,并加强当前匹配进程。在大规模征聘守则上进行的大规模实验:在大规模征聘基准/养恤基金数据库中,对若干次的征聘标准进行了比较。