Study on the relationship between students’ behavioral health and biomechanical indexes based on data mining

  • Ping Pan School of Mathematics and Computer Science, Shaanxi University of Technology, Hanzhong 723001, China
Keywords: student behavior; health monitoring system; big data mining; decision support
Article ID: 657

Abstract

There is an interaction between behavior and health, and behavior monitoring information plays a role in reminding people of the need to maintain healthy behaviors or change unhealthy behaviors. Behavior monitoring information can explain the universality of behavior, analyze relevant influencing factors, determine specific actions to be followed, and carry out health education and publicity. It can also be used to trigger behavioral change trends, and evaluate and review health education and promotion programs. Behavioral monitoring information helps to explain changes in health status related to behavior. Because students are in a special period of physical and psychological development, their behavior is different from other periods. With the development of social culture, science and technology, the concept of modern health has changed from simple physical health to psychological and behavioral health. Based on this, this paper first investigated the definition and influencing factors of student behavior, focused on the definition of student behavior, expounded the classification and manifestation of student behavior, and analyzed the influencing factors and indicator system of student behavior. Then, from the construction of the student behavior monitoring system, it discussed the analysis and collection technology of student behavior data and the analysis and prediction model of student behavior, put forward the visualization model of student behavior big data, and discussed the design of the student behavior monitoring system based on data mining from two aspects, namely, the system functional requirements analysis and the overall system architecture design. Then the decision support algorithm was used to strengthen the detection of students’ health behavior. According to experiments and surveys, big data mining and decision support algorithms strengthen the construction of student behavior health monitoring system, and build a new student behavior health monitoring system, which is 33% more satisfied than the traditional student behavior health monitoring system.

References

1. Wienen AW, Reijnders I, van Aggelen MH, et al. The relative impact of school‐wide positive behavior support on teachers’ perceptions of student behavior across schools, teachers, and students. Psychology in the Schools. 56.2 (2019): 232–241.

2. Jackson CK. The full measure of a teacher: Using value-added to assess effects on student 001 behavior. Education Next. 19.1 (2019): 62–69.

3. Liebowitz DD, and Lorna P. The effect of principal behaviors on student, teacher, and school outcomes: A systematic review and meta-analysis of the empirical literature. Review of Educational Research 89.5 (2019): 785–827.

4. Ichsan IZ, Rahmayanti H, Purwanto A, et al. PEB-COVID-19: Analysis of Students Behavior and ILMIZI Model in Environmental Learning. Online Submission 5.1 (2020): 1–11.

5. Raza SA, Qazi W, Yousufi SQ. The influence of psychological, motivational, and behavioral factors on university students’ achievements: the mediating effect of academic adjustment. Journal of Applied Research in Higher Education 13.3 (2021): 849–870.

6. Hott BL, Jones BA, Rodriguez J, et al. Are rural students receiving FAPE? A descriptive review of IEPs for students with social, emotional, or behavioral needs. Behavior modification 45.1 (2021): 13–38.

7. Hollo A, Chow JC, Wehby JH. Profiles of language and behavior in students with emotional disturbance. Behavioral Disorders 44.4 (2019): 195–204.

8. Campisi SC, Carducci B, Akseer N, et al. Suicidal behaviours among adolescents from 90 countries: a pooled analysis of the global school-based student health survey. BMC public health 20.1 (2020): 1–11.

9. Di Nuzzo F, Brunelli D, Polonelli T, Benini L. Structural health monitoring system with narrowband IoT and MEMS sensors. IEEE Sensors Journal 21.14 (2021): 16371–16380.

10. Wu T, Wu F, Qiu C, et al. A rigid-flex wearable health monitoring sensor patch for IoT-connected healthcare applications. IEEE Internet of Things Journal 7.8 (2020): 6932–6945.

11. Park S-m, Won DD, Lee BJ, et al. A mountable toilet system for personalized health monitoring via the analysis of excreta. Nature biomedical engineering 4.6 (2020): 624–635.

12. Qi W, Hang S, Andrea A. A smartphone-based adaptive recognition and real-time monitoring system for human activities. IEEE Transactions on Human-Machine Systems 50.5 (2020): 414–423.

13. Wu Q, Chen X, Zhou Z, Zhang J. Fedhome: Cloud-edge based personalized federated learning for in-home health monitoring. IEEE Transactions on Mobile Computing 21.8 (2020): 2818–2832.

14. Melcher J, Hays R, Torous J. Digital phenotyping for mental health of college students: a clinical review. BMJ Ment Health 23.4 (2020): 161–166.

15. Javaid M, and Khan IK. Internet of Things (IoT) enabled healthcare helps to take the challenges of COVID-19 Pandemic. Journal of Oral Biology and Craniofacial Research 11.2 (2021): 209–214.

Published
2025-02-07
How to Cite
Pan, P. (2025). Study on the relationship between students’ behavioral health and biomechanical indexes based on data mining. Molecular & Cellular Biomechanics, 22(2), 657. https://doi.org/10.62617/mcb657
Section
Article