Bibliometric Analysis Impact of Machine Learning on Mental Health in Student Learning

Authors

  • Fadhil Muhammad Basysyar STMIK IKMI Cirebon
  • Dadang Sudrajat STMIK IKMI Cirebon
  • Gifthera Dwilestari STMIK IKMI Cirebon

Keywords:

Machine Learning, Mental Health, student, learning

Abstract

The integration of machine learning in educational settings offers promising avenues for addressing mental health challenges among students [1]. This study conducts a bibliometric analysis to explore the impact of machine learning on mental health within student learning environments. By systematically reviewing peer-reviewed articles, conference papers, and relevant literature from the past decade, this research identifies key trends, challenges, and opportunities in this emerging field. The study focuses on the effectiveness of different machine learning methodologies in detecting, diagnosing, and intervening in mental health issues, highlighting the potential for early identification and personalized support. Furthermore, it addresses critical concerns related to data privacy, ethical considerations, and algorithmic biases, which are paramount for the responsible deployment of these technologies. The findings reveal significant advancements in the application of natural language processing and wearable technology data for mental health monitoring. However, gaps remain in longitudinal studies and the consideration of cultural and contextual factors. This research contributes to the existing body of knowledge by providing a comprehensive overview and identifying directions for future research, ultimately aiming to enhance the well-being and academic performance of students through innovative machine learning solutions.

References

F. Qiu et al., “Predicting students’ performance in e-learning using learning process and behaviour data,” Sci Rep, vol. 12, no. 1, 2022, doi: 10.1038/s41598-021-03867-8.

O. Poquet and M. de Laat, “Developing capabilities: Lifelong learning in the age of AI,” British Journal of Educational Technology, vol. 52, no. 4, 2021, doi: 10.1111/bjet.13123.

K. Wiens et al., “Mental Health among Canadian Postsecondary Students: A Mental Health Crisis?,” Canadian Journal of Psychiatry, vol. 65, no. 1, 2020, doi: 10.1177/0706743719874178.

N. A. Hassan, H. Abdul Majeed, J. Mohd Tajuddin, N. H. Abdullah, and R. Ahmad, “Investigating Mental Health Among Malaysian University Students During Covid-19 Pandemic,” Malaysian Journal of Social Sciences and Humanities (MJSSH), vol. 7, no. 1, 2022, doi: 10.47405/mjssh.v7i1.1224.

M. Pasic, R. Eleftheriades, and C. Fiala, “The challenges and mental health issues of academic trainees,” F1000Res, vol. 9, 2020, doi: 10.12688/f1000research.21066.1.

A. Le Glaz et al., “Machine learning and natural language processing in mental health: Systematic review,” 2021. doi: 10.2196/15708.

N. K. Iyortsuun, S. H. Kim, M. Jhon, H. J. Yang, and S. Pant, “A Review of Machine Learning and Deep Learning Approaches on Mental Health Diagnosis,” 2023. doi: 10.3390/healthcare11030285.

C. Nash, R. Nair, and S. M. Naqvi, “Machine Learning in ADHD and Depression Mental Health Diagnosis: A Survey,” IEEE Access, vol. 11, 2023, doi: 10.1109/ACCESS.2023.3304236.

J. Bharadiya and J. P. Bharadiya, “Machine Learning and AI in Business Intelligence: Trends and Opportunities,” International Journal of Computer (IJC), vol. 48, no. 1, 2023.

L. Koumakis, “Deep learning models in genomics; are we there yet?,” 2020. doi: 10.1016/j.csbj.2020.06.017.

M. Yoosefzadeh Najafabadi, M. Hesami, and M. Eskandari, “Machine Learning-Assisted Approaches in Modernized Plant Breeding Programs,” 2023. doi: 10.3390/genes14040777.

M. Shah, A. Shandilya, K. Patel, M. Mehta, J. Sanghavi, and A. Pandya, “Neuropsychological detection and prediction using machine learning algorithms: a comprehensive review,” Intelligent Medicine, 2023, doi: 10.1016/j.imed.2023.04.003.

X. Wang, L. Li, S. C. Tan, L. Yang, and J. Lei, “Preparing for AI-enhanced education: Conceptualizing and empirically examining teachers’ AI readiness,” Comput Human Behav, vol. 146, 2023, doi: 10.1016/j.chb.2023.107798.

A. Harry, “Role of AI in Education,” Interdiciplinary Journal and Hummanity (INJURITY), vol. 2, no. 3, 2023, doi: 10.58631/injurity.v2i3.52.

J. Kim, H. Lee, and Y. H. Cho, “Learning design to support student-AI collaboration: perspectives of leading teachers for AI in education,” Educ Inf Technol (Dordr), vol. 27, no. 5, 2022, doi: 10.1007/s10639-021-10831-6.

A. Mozo, A. Karamchandani, L. de la Cal, S. Gómez-Canaval, A. Pastor, and L. Gifre, “A Machine-Learning-Based Cyberattack Detector for a Cloud-Based SDN Controller,” Applied Sciences (Switzerland), vol. 13, no. 8, 2023, doi: 10.3390/app13084914.

S. Laato, M. Tiainen, A. K. M. Najmul Islam, and M. Mäntymäki, “How to explain AI systems to end users: a systematic literature review and research agenda,” Internet Research, vol. 32, no. 7, 2021, doi: 10.1108/INTR-08-2021-0600.

Z. Bahroun, C. Anane, V. Ahmed, and A. Zacca, “Transforming Education: A Comprehensive Review of Generative Artificial Intelligence in Educational Settings through Bibliometric and Content Analysis,” 2023. doi: 10.3390/su151712983.

M. Plass et al., “Explainability and causability in digital pathology,” 2023. doi: 10.1002/cjp2.322.

A. Hill, Á. MacNamara, D. Collins, and S. Rodgers, “Examining the role of mental health and clinical issues within talent development,” Front Psychol, vol. 6, no. JAN, 2016, doi: 10.3389/fpsyg.2015.02042.

G. Vos, K. Trinh, Z. Sarnyai, and M. Rahimi Azghadi, “Ensemble machine learning model trained on a new synthesized dataset generalizes well for stress prediction using wearable devices,” J Biomed Inform, vol. 148, 2023, doi: 10.1016/j.jbi.2023.104556.

S. Khor, E. C. Haupt, E. E. Hahn, L. J. L. Lyons, V. Shankaran, and A. Bansal, “Racial and Ethnic Bias in Risk Prediction Models for Colorectal Cancer Recurrence When Race and Ethnicity Are Omitted as Predictors,” JAMA Netw Open, vol. 6, no. 6, 2023, doi: 10.1001/jamanetworkopen.2023.18495.

F. Mulisa, “When Does a Researcher Choose a Quantitative, Qualitative, or Mixed Research Approach?,” Interchange, vol. 53, no. 1, 2022, doi: 10.1007/s10780-021-09447-z.

T. M. Wyllie, “Qualitative and Quantitative Research Approaches,” Unicaf University, no. April, 2021.

J. W. Creswell, “Research design Qualitative quantitative and mixed methods approaches,” Research design Qualitative quantitative and mixed methods approaches, 2003, doi: 10.3109/08941939.2012.723954.

M. H. Mehrad, A., Tahriri Zangeneh, “Comparison between Qualitative and Quantitative Research Approaches Social Sciences,” International Journal For Research In Educational Studies , vol. 5, no. 7, 2019.

E. Weyant, “Research Design: Qualitative, Quantitative, and Mixed Methods Approaches, 5th Edition,” Journal of Electronic Resources in Medical Libraries, vol. 19, no. 1–2, 2022, doi: 10.1080/15424065.2022.2046231.

L. Zhang, J. Ling, and M. Lin, “Artificial intelligence in renewable energy: A comprehensive bibliometric analysis,” 2022. doi: 10.1016/j.egyr.2022.10.347.

A. Janik, A. Ryszko, and M. Szafraniec, “Exploring the social innovation research field based on a comprehensive bibliometric analysis,” Journal of Open Innovation: Technology, Market, and Complexity, vol. 7, no. 4, 2021, doi: 10.3390/joitmc7040226.

E. R. Khairullina, N. N. Kosarenko, A. A. Chistyakov, G. Erkiada, L. B. Vaskova, and V. P. Kotina, “A comprehensive bibliometric analysis of information and communication technologies in science education,” Eurasia Journal of Mathematics, Science and Technology Education, vol. 19, no. 10, 2023, doi: 10.29333/ejmste/13652.

L. Zhang, J. Ling, and M. Lin, “Carbon neutrality: a comprehensive bibliometric analysis,” 2023. doi: 10.1007/s11356-023-25797-w.

B. Li and Z. Xu, “A comprehensive bibliometric analysis of financial innovation,” 2022. doi: 10.1080/1331677X.2021.1893203.

A. Xiao, Y. Qin, Z. Xu, and M. Skare, “A Comprehensive Bibliometric Analysis of Big Data in Entrepreneurship Research,” Engineering Economics, vol. 34, no. 2, 2023, doi: 10.5755/j01.ee.34.2.30643.

A. Nazzal, M. V. Sánchez-Rebull, and A. Niñerola, “Foreign direct investment by multinational corporations in emerging economies: a comprehensive bibliometric analysis,” International Journal of Emerging Markets, 2023, doi: 10.1108/IJOEM-12-2021-1878.

A. Thieme, D. Belgrave, and G. Doherty, “Machine Learning in Mental Health: A systematic review of the HCI literature to support the development of effective and implementable ML Systems,” 2020. doi: 10.1145/3398069.

A. B. R. Shatte, D. M. Hutchinson, and S. J. Teague, “Machine learning in mental health: A scoping review of methods and applications,” 2019. doi: 10.1017/S0033291719000151.

P. Tolochko and A. B. M. Vadrot, “Selective world-building: Collaboration and regional specificities in the marine biodiversity field,” Environ Sci Policy, vol. 126, 2021, doi: 10.1016/j.envsci.2021.09.003.

B. X. Tran et al., “Global evolution of research in artificial intelligence in health and medicine: A bibliometric study,” J Clin Med, vol. 8, no. 3, 2019, doi: 10.3390/jcm8030360.

Downloads

Published

2024-10-28

How to Cite

Fadhil Muhammad Basysyar, Dadang Sudrajat, & Gifthera Dwilestari. (2024). Bibliometric Analysis Impact of Machine Learning on Mental Health in Student Learning. Prosiding SISFOTEK, 8(1), 472 - 479. Retrieved from http://seminar.iaii.or.id/index.php/SISFOTEK/article/view/536

Issue

Section

Sistem Informasi dan Teknologi