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Employees recruitment: A prescriptive analytics approach via machine learning and mathematical programming

机译:员工招聘:通过机器学习和数学规划的规定分析方法

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In this paper, we propose a comprehensive analytics framework that can serve as a decision support tool for HR recruiters in real-world settings in order to improve hiring and placement decisions. The proposed framework follows two main phases: a local prediction scheme for recruitments' success at the level of a single job placement, and a mathematical model that provides a global recruitment optimization scheme for the organization, taking into account multilevel considerations. In the first phase, a key property of the proposed prediction approach is the interpretability of the machine learning (ML) model, which in this case is obtained by applying the Variable-Order Bayesian Network (VOBN) model to the recruitment data. Specifically, we used a uniquely large dataset that contains recruitment records of hundreds of thousands of employees over a decade and represents a wide range of heterogeneous populations. Our analysis shows that the VOBN model can provide both high accuracy and interpretability insights to HR professionals. Moreover, we show that using the interpretable VOBN can lead to unexpected and sometimes counter-intuitive insights that might otherwise be overlooked by recruiters who rely on conventional methods.We demonstrate that it is feasible to predict the successful placement of a candidate in a specific position at a pre-hire stage and utilize predictions to devise a global optimization model. Our results show that in comparison to actual recruitment decisions, the devised framework is capable of providing a balanced recruitment plan while improving both diversity and recruitment success rates, despite the inherent trade-off between the two.
机译:在本文中,我们提出了一个全面的分析框架,可以作为现实世界环境中的人力资源招聘人员决策支持工具,以提高招聘和放置决策。拟议的框架遵循两个主要阶段:当地预测方案,用于招聘单一工作安置级别的成功,以及为组织提供全球招聘优化方案的数学模型,考虑到多级考虑因素。在第一阶段中,所提出的预测方法的关键特性是机器学习(ML)模型的可解释性,在这种情况下,通过将可变级贝叶斯网络(VOBN)模型应用于招聘数据来获得。具体而言,我们使用了一个独特的大型数据集,其中包含数十万人的招聘记录,超过十年员工,代表了广泛的异构人群。我们的分析表明,VOBN模型可以为人力资源专业人员提供高精度和可解释性洞察力。此外,我们表明,使用可解释的VOBN可能导致意外,有时可能会被依赖传统方法的招聘人员忽视的反直观的见解。我们证明预测在特定位置的成功安置候选人的成功安置是可行的在预租用阶段并利用预测来设计全球优化模型。我们的研究结果表明,与实际招聘决策相比,设计的框架能够提供平衡的招聘计划,同时尽管两者之间固有的权衡,但是在改善多样性和招聘成功率的同时。

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