GRU-based capsule network with an improved loss for personnel performance prediction
作者:Xia Xue, Yi Gao, Meng Liu, Xia Sun, Wenyu Zhang, Jun Feng
摘要
Personnel performance is a key factor to maintain core competitive advantages. Thus, predicting personnel future performance is a significant research domain in human resource management (HRM). In this paper, to improve the performance, we propose a novel method for personnel performance prediction which helps decision-makers select high-potential talents. Specifically, for modeling the personnel performance, we first devise a GRU model to learn sequential information from personnel performance data without any expertise. Then, to better cluster the features, we exploit capsule network. Finally, to precisely make predictions, we further design one strategy, i.e., an improved loss function, and embed it into the capsule network. In addition, by introducing this strategy, our proposed model can well deal with the imbalanced data problem. Extensive experiments on real-world data clearly demonstrate the effectiveness of the proposed approach.
论文关键词:Personnel performance prediction, Capsule network, Improved loss function, Gated recurrent unit
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10489-020-02039-x