Joint Representation Learning with Relation-Enhanced Topic Models for Intelligent Job Interview Assessment

Dazhong Shen, Chuan Qin, Hengshu Zhu, Tong Xu, Enhong Chen, Hui Xiong
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引用次数: 10

Abstract

The job interview is considered as one of the most essential tasks in talent recruitment, which forms a bridge between candidates and employers in fitting the right person for the right job. While substantial efforts have been made on improving the job interview process, it is inevitable to have biased or inconsistent interview assessment due to the subjective nature of the traditional interview process. To this end, in this article, we propose three novel approaches to intelligent job interview by learning the large-scale real-world interview data. Specifically, we first develop a preliminary model, named Joint Learning Model on Interview Assessment (JLMIA), to mine the relationship among job description, candidate resume, and interview assessment. Then, we further design an enhanced model, named Neural-JLMIA, to improve the representative capability by applying neural variance inference. Last, we propose to refine JLMIA with Refined-JLMIA (R-JLMIA) by modeling individual characteristics for each collection, i.e., disentangling the core competences from resume and capturing the evolution of the semantic topics over different interview rounds. As a result, our approaches can effectively learn the representative perspectives of different job interview processes from the successful job interview records in history. In addition, we exploit our approaches for two real-world applications, i.e., person-job fit and skill recommendation for interview assessment. Extensive experiments conducted on real-world data clearly validate the effectiveness of our models, which can lead to substantially less bias in job interviews and provide an interpretable understanding of job interview assessment.
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基于关系增强主题模型的联合表征学习智能面试评估
求职面试被认为是人才招聘中最重要的任务之一,它在求职者和雇主之间架起了一座桥梁,让合适的人适合合适的工作。虽然在改进工作面试过程方面做出了大量努力,但由于传统面试过程的主观性,不可避免地会出现偏见或不一致的面试评估。为此,在本文中,我们通过学习大规模的真实面试数据,提出了三种新的智能面试方法。具体而言,我们首先建立了一个初步的模型,称为面试评估联合学习模型(JLMIA),以挖掘职位描述、候选人简历和面试评估之间的关系。然后,我们进一步设计了一个增强模型neural - jlmia,通过神经方差推理来提高表征能力。最后,我们提出用精细化的JLMIA (R-JLMIA)来改进JLMIA,方法是对每个集合的个人特征进行建模,即从简历中分离出核心竞争力,并捕捉语义主题在不同面试回合中的演变。因此,我们的方法可以有效地从历史上成功的面试记录中学习到不同面试过程的代表性视角。此外,我们将我们的方法用于两个现实世界的应用,即面试评估的个人-工作契合度和技能推荐。在现实世界数据上进行的大量实验清楚地验证了我们模型的有效性,这可以大大减少面试中的偏见,并为面试评估提供可解释的理解。
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