Mohammad Reza Shafie , Hamed Khosravi , Sarah Farhadpour , Srinjoy Das , Imtiaz Ahmed
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引用次数: 0
Abstract
This study presents an innovative methodology to predict employee turnover by integrating Artificial Neural Networks (ANN) with clustering techniques. We focus on hyperparameter tuning with various input parameters to obtain optimal ANN models. By segmenting data, the study identifies critical turnover predictors, allowing targeted interventions to be implemented to improve the efficiency and effectiveness of retention policies. Data augmentation using Conditional Generative Adversarial Networks (CTGAN) is performed on clusters with imbalanced data. Following this, the optimized ANN models are applied to these augmented clusters, leading to a notable improvement in their performance. We evaluate our optimized ANN models against five other ANN variants and four traditional machine learning models to demonstrate their superior accuracy and recall. The proposed approach achieves operational advantages by shifting away from generalized strategies to more focused, cluster-based policies, which can optimize resource utilization and reduce costs. Because of its practicality and enhanced ability to predict and manage employee turnover, this method, supported by empirical evidence, is a significant advancement in human resource (HR) analytics
本研究通过将人工神经网络(ANN)与聚类技术相结合,提出了一种预测员工流失率的创新方法。我们的重点是利用各种输入参数进行超参数调整,以获得最佳的人工神经网络模型。通过分割数据,该研究确定了关键的人员流失预测因素,从而可以实施有针对性的干预措施,提高留任政策的效率和效果。使用条件生成对抗网络(Conditional Generative Adversarial Networks,CTGAN)对不平衡数据集群进行数据增强。然后,将优化的 ANN 模型应用于这些增强的集群,从而显著提高其性能。我们将优化后的 ANN 模型与其他五种 ANN 变体和四种传统机器学习模型进行对比评估,以证明其卓越的准确性和召回率。通过从通用策略转向更有针对性、基于集群的策略,所提出的方法实现了运营优势,可以优化资源利用率并降低成本。这种方法实用性强,预测和管理员工流失率的能力也得到了提高,因此在经验证据的支持下,是人力资源(HR)分析领域的一大进步。