A Hierarchical Career-Path-Aware Neural Network for Job Mobility Prediction

Qingxin Meng, Hengshu Zhu, Keli Xiao, Le Zhang, Hui Xiong
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引用次数: 43

Abstract

The understanding of job mobility can benefit talent management operations in a number of ways, such as talent recruitment, talent development, and talent retention. While there is extensive literature showing the predictability of the organization-level job mobility patterns (e.g., in terms of the employee turnover rate), there are no effective solutions for supporting the understanding of job mobility at an individual level. To this end, in this paper, we propose a hierarchical career-path-aware neural network for learning individual-level job mobility. Specifically, we aim at answering two questions related to individuals in their career paths: 1) who will be the next employer? 2) how long will the individual work in the new position? Specifically, our model exploits a hierarchical neural network structure with embedded attention mechanism for characterizing the internal and external job mobility. Also, it takes personal profile information into consideration in the learning process. Finally, the extensive results on real-world data show that the proposed model can lead to significant improvements in prediction accuracy for the two aforementioned prediction problems. Moreover, we show that the above two questions are well addressed by our model with a certain level of interpretability. For the case studies, we provide data-driven evidence showing interesting patterns associated with various factors (e.g., job duration, firm type, etc.) in the job mobility prediction process.
面向职业流动预测的分层职业路径感知神经网络
对工作流动性的理解可以在人才招聘、人才发展和人才保留等方面有利于人才管理运作。虽然有大量的文献显示了组织层面的工作流动模式的可预测性(例如,在员工流动率方面),但没有有效的解决方案来支持对个人层面的工作流动的理解。为此,本文提出了一种分层的职业路径感知神经网络来学习个人层面的工作流动性。具体来说,我们的目标是回答与个人职业道路相关的两个问题:1)谁将是下一个雇主?2)个人将在新岗位上工作多久?具体而言,我们的模型利用具有嵌入式注意机制的分层神经网络结构来表征内部和外部的工作流动性。此外,它还在学习过程中考虑了个人资料信息。最后,在实际数据上的大量结果表明,所提出的模型可以显著提高上述两个预测问题的预测精度。此外,我们表明,我们的模型很好地解决了上述两个问题,并具有一定程度的可解释性。在案例研究中,我们提供了数据驱动的证据,显示了在工作流动性预测过程中与各种因素(如工作持续时间、公司类型等)相关的有趣模式。
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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