Implementing Gated Recurrent Units and Generative Adversarial Networks to Enhance Effectiveness in Human Resource Management and Organizational Efficiency
International Journal of Computer Science and Engineering |
© 2024 by SSRG - IJCSE Journal |
Volume 11 Issue 10 |
Year of Publication : 2024 |
Authors : E. Kesavulu Reddy |
How to Cite?
E. Kesavulu Reddy, "Implementing Gated Recurrent Units and Generative Adversarial Networks to Enhance Effectiveness in Human Resource Management and Organizational Efficiency," SSRG International Journal of Computer Science and Engineering , vol. 11, no. 10, pp. 40-45, 2024. Crossref, https://doi.org/10.14445/23488387/IJCSE-V11I10P105
Abstract:
This study investigates the implementation of Gated Recurrent Units (GRU) and Generative Adversarial Networks (GAN) to enhance effectiveness in Human Resource Management (HRM) and organizational efficiency. Across 10 experimental trials, the GRU model achieved an average accuracy of 85.7%, with precision, recall, and F1 score values averaging 0.86, 0.82, and 0.84, respectively. Meanwhile, the GAN model demonstrated an average accuracy of 93.2%, with precision, recall, and F1 score values averaging 0.93, 0.90, and 0.91, respectively. These results highlight the potential of neural network technologies to optimize HRM processes, including recruitment, performance evaluation, and workforce planning. By providing more accurate predictions and insights, GRU and GAN offer valuable decision support tools for organizations aiming to improve HRM practices and enhance organizational performance. This study contributes to the growing body of literature on the application of artificial intelligence in HRM. It underscores the importance of leveraging advanced technologies to drive innovation and efficiency in modern workplaces.
Keywords:
Neural networks, Human resource management, Organizational efficiency, Gated Recurrent Units (GRU), Generative Adversarial Networks (GAN).
References:
[1] Lian He et al., “Learning Resource Management Based on Knowledge Points and Semantic Web,” 2011 International Conference on Internet Technology and Applications, Wuhan, China, pp. 1-4, 2011.
[CrossRef] [Google Scholar] [Publisher Link]
[2] Maria Jesús Coma del Corral et al., “Utility of a Thematic Network in Primary Health Care: A Controlled Interventional Study in a Rural Area,” Human Resources for Health, vol. 3, pp. 1-7, 2005.
[CrossRef] [Google Scholar] [Publisher Link]
[3] Wei Jiang, “A Machine Vision Anomaly Detection System to Industry 4.0 Based on Variational Fuzzy Autoencoder,” Computational Intelligence and Neuroscience, vol. 2022, no. 1, pp. 1-10, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[4] Nikitas Nikitakos, George Tsaganos, and Dimitrios Papachristos, “Autonomous Robotic Platform in Harm Environment Onboard of Ships,” IFAC-PapersOnLine, vol. 51, no. 30, pp. 390-395, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[5] Ruichang Mao et al., “Characterizing the Generation and Management of a New Construction Waste in China: Glass Curtain Wall,” Procedia Environmental Sciences, vol. 31, pp. 204-210, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[6] Alcides Arruda Junior, Tonny José Araújo da Silva, and Sérgio Plens Andrade, “Smart IoT Lysimetry System by Weighing with Automatic Cloud Data Storage,” Smart Agricultural Technology, vol. 4, pp. 1-11, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[7] Qi Zhang et al., “A Crop Variety Yield Prediction System Based on Variety Yield Data Compensation,” Computers and Electronics in Agriculture, vol. 203, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[8] M. Sujatha et al., “IoT and Machine Learning-Based Smart Automation System for Industry 4.0 Using Robotics and Sensors,” Journal of Nanomaterials, vol. 2022, no. 1, pp. 1-6, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[9] M. Ramesh, K. Palanikumar, and K. Hemachandra Reddy, “Plant Fibre Based Bio-Composites: Sustainable and Renewable Green Materials,” Renewable and Sustainable Energy Reviews, vol. 79, pp. 558-584, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[10] Fatima Belmehdi, Samira Otmani, and Mourad Taha-Janan, “Global Trends of Solar Desalination Research: A Bibliometric Analysis during 2010–2021 and Focus on Morocco,” Desalination, vol. 555, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[11] Amutha Balakrishnan et al., “A Personalized Eccentric Cyber-Physical System Architecture for Smart Healthcare,” Security and Communication Networks, vol. 2021, no. 1, pp. 1-36, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[12] Nafiu Ishaq Adamu et al., “Performance Analysis of Solar Desalination System with Thermal Energy Storage Materials,” Materials Today: Proceedings, vol. 74, no. 4, pp. 801-807, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[13] Jeffrey W. Tweedale, and Dion Gonano, “Enhancing the Dgree of Autonomy on a ‘Tier 1’ Unmanned Aerial Vehicle Using a Visual Landing Framework,” Procedia Computer Science, vol. 35, pp. 1033-1042, 2014.
[CrossRef] [Google Scholar] [Publisher Link]
[14] Mahesh S. Patil et al., “Effective Deep Learning Data Augmentation Techniques for Diabetic Retinopathy Classification,” Procedia Computer Science, vol. 218, pp. 1156-1165, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[15] Amit Sharma, Pradeep Kumar Singh, and Yugal Kumar, “An Integrated Fire Detection System Using IoT and Image Processing Technique for Smart Cities,” Sustainable Cities and Society, vol. 61, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[16] Elliot Mbunge, Itai Chitungo, and Tafadzwa Dzinamarira, “Unbundling the Significance of Cognitive Robots and Drones Deployed to Tackle COVID-19 Pandemic: A Rapid Review to Unpack Emerging Opportunities to Improve Healthcare in Sub-Saharan Africa,” Cognitive Robotics, vol. 1, pp. 205-213, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[17] C.J.M, M.J, and R.J.B, “Successful Implementation of a Reflective Practice Curriculum in an Internal Medicine Residency Training Program,” Journal of General Internal Medicine, vol. 34, no. 2, pp. S847-S848, 2019.
[Google Scholar]
[18] Sabitri Poudel, and Sangman Moh, “Task Assignment Algorithms for Unmanned Aerial Vehicle Networks: A Comprehensive Survey,” Vehicular Communications, vol. 35, pp. 1-29, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[19] Akshatha Prasanna et al., “Cloud Based Solutions for Genome Informatics: Challenges and Applications,” Materials Today: Proceedings, vol. 5, no. 4, pp. 10652-10659, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[20] David F. Parks et al., “IoT Cloud Laboratory: Internet of Things Architecture for Cellular Biology,” Internet of Things, vol. 20, pp. 1 11, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[21] László Horváth, “Virtual Research Laboratory for Smart Engineering in the Cloud,” 2019 IEEE 13th International Symposium on Applied Computational Intelligence and Informatics (SACI), Timisoara, Romania, pp. 179-184, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[22] Stephan Werner et al., “Cloud-Based Remote Virtual Prototyping Platform for Embedded Control Applications: Cloud-Based Infrastructure for Large-Scale Embedded Hardware-Related Programming Laboratories,” 2016 13th International Conference on Remote Engineering and Virtual Instrumentation (REV), Madrid, Spain, pp. 168-175, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[23] N. Shivaji Rao, and Malathi Karunakaran, “Cloud Computing Emerging Mobile Cloud Apps,” International Journal of Pharmacy & Technology, vol. 8, no. 4, pp. 19633-19640, 2016.
[Google Scholar]
[24] Khalid Mohiuddin et al., “Mobile Learning Evolution and Emerging Computing Paradigms: An Edge-Based Cloud Architecture for Reduced Latencies and Quick Response Time,” Array, vol. 16, pp. 1-9, 2022.
[CrossRef] [Google Scholar] [Publisher Link]