The wide spread use of online recruitment services has led to information explosion in the job market. As a result, the recruiters have to seek the intelligent ways for Person Job Fit, which is the bridge for adapting the right job seekers to the right positions. Existing studies on Person Job Fit have a focus on measuring the matching degree between the talent qualification and the job requirements mainly based on the manual inspection of human resource experts despite of the subjective, incomplete, and inefficient nature of the human judgement. To this end, in this paper, we propose a novel end to end Ability aware Person Job Fit Neural Network model, which has a goal of reducing the dependence on manual labour and can provide better interpretation about the fitting results. The key idea is to exploit the rich information available at abundant historical job application data. Specifically, we propose a word level semantic representation for both job requirements and job seekers' experiences based on Recurrent Neural Network. Along this line, four hierarchical ability aware attention strategies are designed to measure the different importance of job requirements for semantic representation, as well as measuring the different contribution of each job experience to a specific ability requirement. Finally, extensive experiments on a large scale real world data set clearly validate the effectiveness and interpretability of the APJFNN framework compared with several baselines.
翻译:网上招聘服务的广泛使用已导致就业市场的信息爆炸,因此,招聘者必须寻找明智的 " 适合人的工作 " 方法,这是使合适的求职者适应正确职位的桥梁。关于 " 适合人的工作 " 的现有研究侧重于衡量人才资格与工作要求之间的匹配程度,主要依据是对人力资源专家的人工检查,尽管人类判断具有主观性、不完整和低效率的性质。为此,我们提议以新颖的方式结束 " 了解能力的人的工作适合神经网络 " 模式,该模式的目标是减少对体力劳动的依赖,并能够提供对适当结果的更好解释。关键思想是利用丰富的历史工作应用数据中现有的丰富信息。具体地说,我们建议根据《神经网络》对工作要求和求职者的经验进行字级语级语义表达。在这方面,我们设计了四级关注能力战略,以衡量职位要求对语义代表性的不同重要性,以及衡量每项工作经验对具体能力要求的不同贡献。最后,在大规模实验中,用大量真实的世界数据框架比较了几个基准数据,明确验证了工作要求的有效性和基准解释。