Browse > Article
http://dx.doi.org/10.14400/JDC.2021.19.4.019

Visualization of women's safety facility index based on public data analysis: Focusing on Seoul  

Kim, Hyeong-Gyun (Dept of Software, Kookmin University)
Publication Information
Journal of Digital Convergence / v.19, no.4, 2021 , pp. 19-24 More about this Journal
Abstract
In this paper, an index of women's safety facilities was created and visualized using public data related to Seoul. CPTED, the women's safety facilities index was created by collecting and analyzing eight data related to the local women's safety index and five major crime victims of women. As a result of the correlation analysis between the factors of the female safety facility index and the number of female crime victims, three data were selected as the main factors, "CCTV," "street lamps," and "female security guardians", which were found to be meaningful at the 95% level of reliability. The distinction women's safety facility index was calculated by weighting the correlation coefficient between the main factors for calculating the women's safety facility index, and visualized using Python's Follium library.
Keywords
Public data; CPTED; women's safety; women's crimes; visualization;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
연도 인용수 순위
1 J. B. Lee. (2019). Analysis of Tensor Processing Unit and Simulation Using Python. The Journal of the Institute of Internet, Broadcasting and Communication, 19(3), 165-171.   DOI
2 K. M. Kim, H. S. Kim. (2014). A Case Study on Necessity of Computer Programming for Interdisciplinary Education. Journal of Digital Convergence, 12(11), 339-348.   DOI
3 W. S. Moon. (2018). Analysis of error data generated by prospective teachers in programming learning. Journal of The Korean Association of Information Education, 22(2), 205-212.   DOI
4 W. S. Park. (2019). Gender statistics in Seoul in 2019. https://opengov.seoul.go.kr
5 S. Y. Oh. (2017). Study of Causes and Solutions of Violent Crimes against Second-class Citizens - Focus on Women's Violent Crimes -. Korean Police Studies Review, 16(3), 225-250.   DOI
6 M. H. Cho. (2013). "A plan to secure school safety by applying CPTED". Master's Thesis. Yongin University Graduate School.
7 J. H. Ki. (2015). A Study of Impact of Urban Population Characteristics on Violent Crimes. Journal of the Korean Regional Development Association, 27(1), 107-124.
8 J. H. Ryu. (2020). CPTED and Fear of Crime. Journal of Korean Public Police and Security Studies, 17(1), 15-32.
9 J. H. Jang. (2018). Study on Effectiveness of CPTED for preventing crimes : Based on panel data analysis of 25 districts in Seoul. Korean Police Studies Review, 17(4), 267-292.   DOI
10 M. Lee. (2018). Map Visualization-Folium. https://ericnjennifer.github.io/python_visualization/2018/01/21/PythonVisualization_Chapt6.html
11 M. G. Kim, M. H. Lee. (2016). A Visualization Method of Spatial Information based on Web Map Service. Journal of Digital Convergence, 14(2), 209-216.   DOI
12 Psychoria. (2019). JSON data format handling in Python. https://psychoria.tistory.com/703
13 S. W. Park. (2015). A Study on the Visualization of Images in the Mind through Texts and Maps - Based on My Works. Journal of Korean Society of Media & Arts, 13(1), 23-34.
14 J. A. Kim, M. G Kim. (2019). Effect of data visualization education with using Python on computational thinking of six grade in elementary school. Journal of The Korean Association of Information Education, 23(3), 197-206.   DOI
15 D. H. Lee. (2015). An Alternative Approach for Implementing Interactive Media Contents - a Case Study of Teaching Computer Game Programming using Python. Journal of Korean Society of Media & Arts, 13(1), 145-156.
16 Y. S. Lee. (2018). Python-based Software Education Model for Non-Computer Majors. Journal of the Korea Convergence Society, 9(3), 73-78.   DOI