Human Resource Demand Prediction and Configuration Model Based on Grey Wolf Optimization and Recurrent Neural Network.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

Business development is dependent on a well-structured human resources (HR) system that maximizes the efficiency of an organization's human resources input and output. It is tough to provide adequate instructions for HR's unique task. In a time when the domestic labor market is still maturing, it is difficult for companies to make successful adjustments in HR structures to meet fluctuations in demand for human resources caused by shifting corporate strategies, operations, and size. Data on corporate human resources are often insufficient or inaccurate, which creates substantial nonlinearity and uncertainty when attempting to predict staffing needs, since human resource demand is influenced by numerous variables. The aim of this research is to predict the human resource demand using novel methods. Recurrent neural networks (RNNs) and grey wolf optimization (GWO) are used in this study to develop a new quantitative forecasting method for HR demand prediction. Initially, we collect the dataset and preprocess using normalization. The features are extracted using principal component analysis (PCA) and the proposed RNN with GWO effectively predicts the needs of HR. Moreover, organizations may be able to estimate personnel demand based on current circumstances, making forecasting more relevant and adaptive and enabling enterprises to accomplish their objectives via efficient human resource planning.

Authors

  • Navaneetha Krishnan Rajagopal
    Business Studies, University of Technology and Applied Sciences, Salalah, Oman.
  • Mankeshva Saini
    Department of Management Studies, Government Engineering College Jhalawar, Jhalrapatan, Rajasthan, India.
  • Rosario Huerta-Soto
    Graduate School, Universidad Cesar Vallejo, Lima, Peru.
  • Rosa Vílchez-Vásquez
    Faculty of Science, Universidad Nacional Santiago Antunez de Mayolo, Huaraz, Peru.
  • J N V R Swarup Kumar
    MIEEE, Department of Computer Science and Engineering, SR Gudlavalleru Engineering College, Gudlavalleru, India.
  • Shashi Kant Gupta
    Computer Science Engineering, Integral University, Lucknow, UP, India.
  • Sasikumar Perumal
    Department of Computer Science, Wollo University, Kombolcha Institute of Technology, Kombolcha, Ethiopia Post Box No. 208.