Home

  Editors

  Ethics

  Submission

  Volumes

  Indexing

  Copyright

  Fees

  Subscription

  Publisher

  Support

  EPPM

 

Journal of Engineering, Project, and Production Management, 2025, 15(4), 2025-132

 

Evaluating Corporate Employee Performance Using Big Data-Enabled KPCA-LSTM Models

 

Hongfang Zhou

Instructor, Business Administration School of Hubei Open University, Wuhan 430074, Hubei, China, E-mail: Zhou1898618@163.com

 

Project Management

 

Received July 10, 2025; revised July 29, 2024; accepted July 29, 2025

 

Available online October 6, 2025

 

Abstract: The long-term growth of the business and the enhancement of the management system are closely tied to enterprise employee performance assessment, a crucial tool for the development of contemporary private firms. The problem of evaluating the performance of employees in an enterprise setting is fundamentally a predictive regression problem; a deterministic optimization algorithm cannot determine the optimal network parameters, and the current approach to evaluating employee performance in an enterprise setting is prone to local optimality. This research presents an employee performance evaluation for enterprises using the Kernel Principal Component Analysis – Spotted Hyena Optimization – Long Short-Term Memory (KPCA-SHO-LSTM) model. This paper describes the method of building a performance evaluation system for enterprise employees. It begins by analyzing the steps involved in constructing the system and selecting the evaluation indices. Next, the Kernel Principal Component Analysis (KPCA) and Spotted Hyena Optimization (SHO) algorithms are employed to search for optimal parameters for the Long Short-Term Memory (LSTM) network and improve the performance evaluation model. Finally, a design is proposed to evaluate the algorithm's performance using optimized covariates and an adaptive segment function. The approach is evaluated against other algorithms in the context of enterprise employee performance evaluation. The findings demonstrate that the proposed method exhibits the lowest error accuracy, as well as the ideal convergence speed and iteration number.

 

Keywords: kernel principal component analysis, corporate employee performance appraisal, LSTM, spotted hyena optimization algorithm

Copyright © Journal of Engineering, Project, and Production Management (EPPM-Journal).

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 3.0 Unported License.

Requests for reprints and permissions at eppm.journal@gmail.com.

Citation: Zhou, H. (2025). Evaluating Corporate Employee Performance Using Big Data-Enabled KPCA-LSTM Models. Journal of Engineering, Project, and Production Management, 15(4), 2025-132.

DOI: 10.32738/JEPPM-2025-132

Full Text


Copyright © EPPM-Journal. All rights reserved.