A Study on the Implementation of Big Data for Suicide Prevention Programs

  • Authors

    • Hye-Jung Chang
    • . .
    https://doi.org/10.14419/ijet.v7i3.33.21183

    Received date: October 7, 2018

    Accepted date: October 7, 2018

    Published date: April 19, 2026

  • Big data, Data classification, Suicide Prevention, Safety Data Analysis, Safety Data Pool, WHO Safety community
  • Abstract

    In a rapidly changing environment, big data is becoming important as a response capability through rapid situational awareness. The purpose of this study is to propose a suicide prevention safety program that responds to the latest increases in suicides through big data collection and analysis. To this end, I will study the process of creating a pool of big data, selecting data items that discover suicide syndrome, and developing suicide prevention programs. When I designed the suicide prevention program, the necessary data was defined and the analysis process was proposed. For this study, the big data 7 step methodology is applied. I created a big data pool for suicide prevention programs. The data used in the big data pool can be categorized into structured and unstructured data. The overviews of city, disaster, situation of injuries, and injury details use structured data, whereas injury factor can utilize either unstructured or structured data. To set up a suicide prevention program, first, the high-risk group is derived, second, the priority control target is derived, and finally, the detailed program is implemented. I suggested utilizing structured and unstructured data for effective analysis and selection of suicide prevention programs.

  • References

    1. Chae SB, Ahn SH, Jeon SI (2012),Big data - industrial epicenter of cataclysm, SERI CEO Information, Vol.851, pp.1-20, available online:
    2. http://www.seri.org/db/dbReptV.html?g_menu=02&s_menu=0202&pubkey=db20120430001, last visit: 18.07.2018
    3. Min GY, Jeong DH(2013), Research on assessment of impact of big data attributes to disaster response decision-making process, CALSEC,Vol.18, No.3, pp22-25, available online: http://www.jsebs.org/jsebs/index.php/jsebs/article/viewFile/39/47, last visit: 18.08.2018
    4. Chang HJ (2017), Implementation of the safe community in per-spective of big data in smart city, SungKyunKwan University, available online:
    5. http://dcollection.skku.edu/public_resource/pdf/000000102832_20180809210607.pdf, last visit: 10.07.2018.
    6. Choi BM (2011), A study on setting up the concept of smart city through analysis on the term 'smart'. The Journal of the Korea Con-tents Association, Vol.11, No.12, pp943-949, available online: http://www.riss.kr/search/detail/DetailView.do?p_mat_type=1a0202e37d52c72d&control_no=4bfeff13727eaeffc85d2949c297615a, last visit: 15.08.2018.
    7. Renata PD, Camile RS(2014), Smart city - how to create public and economic value with high technology in urban space, Springer, pp.3-4
    8. Lee JH, Seong WJ(2013), Utilization of big data for realization of Gov. 3.0, KIPA Research Report, No.2013-04,
    9. available online :
    10. https://www.kdevelopedia.org/mnt/idas/asset/2014/08/07/DOC/PDF/04201408070133509078863.pdf, last visit: 07.08.2018.
    11. Wilde EJD, Keinhorst CW, Diekstra RFW, Wolters WH (1994). Social support, life events, and behavioral characteristics of psycho-logically distressed adolescents at high risk for attempting suicide, Adolescence, Vol. 29, N0.113, pp.49-60
    12. Cho BH(2013), A study on the risk factors for youth suicide on sui-cidal ideation-focused on the mediating effects of and the moderat-ing effects, CheongJu University, available online : http://cju.dcollection.net/public_resource/pdf/000001562502_20180809210842.pdf, last visit: 01.08.2018
    13. Kandell DB, Raveis VH, Davies M(1991), Suicidal ideation in ado-lescence: depression, substance use, and other risk factors, Journal of youth an adolescence, Vol.20, No.2, pp289-308
    14. Kim DN(2014), The effects of MBSP-T on the reduction of com-plex PTSD and suicide ideation of the adolescent victims of school violence and the promotion of helping behavior of the peer Group, Chonbuk National University, pp. 20-25, available online :
    15. http://dcoll.jbnu.ac.kr/common/orgView/000000032714, last visit: 03.08.2018
    16. Norbeck JS, Sheiner M(1982), Sources of social support related to single-parent functioning, Research in Nursing and Health, , Vol 5, No.1 , pp3-12
    17. Park JW(1985), A study to development a scale of social support, Yonsei University, pp.6-9, available online : http://dcollection.yonsei.ac.kr/public_resource/pdf/000000133547_20180809211517.pdf, last visit: 03.08.201
    18. Chang HJ, Kim DN(2016), A study on inhabitants self-help scheme via socio technology for disaster safety of the smart city - mainly on lessons of Kamaisi-city in Japan, JKIIECT, Vol.9, No.4, pp388-403, available online : http://www.dbpia.co.kr/Journal/ArticleDetail/NODE07001339, last visit: 01.08.2018
    19. Chang HJ, Kim DN(2016), A Study on data utilization for imple-mentation of the resident participation type safe community plan-ning of the smart city, JKIIECT, Vol. 9, No.5, pp478-495, available online :
    20. http://www.dbpia.co.kr/Journal/ArticleDetail/NODE07040501, last visit: 01.08.2018
  • Downloads

  • How to Cite

    Chang, H.-J., & ., . (2026). A Study on the Implementation of Big Data for Suicide Prevention Programs. International Journal of Engineering and Technology, 7(3.33), 274-278. https://doi.org/10.14419/ijet.v7i3.33.21183