Prediction and Empirical Research on Matching Values of Person-Job Measurement Based on EfficientNet
DOI:
https://doi.org/10.31449/inf.v48i21.6567Abstract
In today's social environment, person-job matching is of significant importance for enhancing employee satisfaction, reducing turnover rate and improving organizational performance. However, traditional job matching methods rely on manual assessment and questionnaire surveys, which not only consume a lot of time and energy, but are also susceptible to the influence of subjective factors, resulting in a significant reduction in the accuracy of the assessment results. In order to overcome these challenges, the study proposes an EfficientNet-based job matching prediction model. After 300 epochs of iterations, the highest classification accuracy of this model can reach 0.844, indicating that the model has excellent data classification ability. When the quantity of training samples is increased to 16000, the accuracy of the model prediction increases and reaches 0.844, and the fitting error is reduced to 0.413. By adaptively adjusting the network structure and parameters, the model significantly improves its performance while keeping its size constant. The study shows that the model improves the accuracy and efficiency of person-job matching, which has important research and application value for modern organizational management.翻译搜索复制Downloads
Published
How to Cite
Issue
Section
License
I assign to Informatica, An International Journal of Computing and Informatics ("Journal") the copyright in the manuscript identified above and any additional material (figures, tables, illustrations, software or other information intended for publication) submitted as part of or as a supplement to the manuscript ("Paper") in all forms and media throughout the world, in all languages, for the full term of copyright, effective when and if the article is accepted for publication. This transfer includes the right to reproduce and/or to distribute the Paper to other journals or digital libraries in electronic and online forms and systems.
I understand that I retain the rights to use the pre-prints, off-prints, accepted manuscript and published journal Paper for personal use, scholarly purposes and internal institutional use.
In certain cases, I can ask for retaining the publishing rights of the Paper. The Journal can permit or deny the request for publishing rights, to which I fully agree.
I declare that the submitted Paper is original, has been written by the stated authors and has not been published elsewhere nor is currently being considered for publication by any other journal and will not be submitted for such review while under review by this Journal. The Paper contains no material that violates proprietary rights of any other person or entity. I have obtained written permission from copyright owners for any excerpts from copyrighted works that are included and have credited the sources in my article. I have informed the co-author(s) of the terms of this publishing agreement.
Copyright © Slovenian Society Informatika