Article
Predicting Future Shooting Crime Locations Using Principles of Data Analytics (SHOPS) 开放存取 Deposited
Shooting crime is a serious public health problem in the US. The analysis of any historical crime data reveals that crime is non-randomly distributed in time and space. Based on this notion, hot spots policing has gained its momentum to effectively predict future crime locations. Recent studies; however, pointed out that traditional hot spots policing occasionally predict rare crimes such as homicides and shootings due to their less frequent recurring counts in a given place and time (specifically for shorter time periods such as weeks and months). Given this context, we developed a new shooting prediction system (SHOPS) to explore whether recent dynamic/mobility activity patterns of known violent individuals increase the prediction of short-term fatal and non-fatal shootings compared to the traditional hot spots policing. Findings suggest that SHOPS predicts fatal and non-fatal shooting locations more precisely by identifying fewer hotspot locations. Policy implications of the study were discussed in the conclusion section.
- 创建者
- 证书
- 学科
- 提交
- 学
- 部门
- 创建日期
- 出版者
- 期刊名称
- IT Research Symposium’19
- 语言
Digital Object Identifier (DOI)
识别码: doi:10.7945/twmk-q297
链接: https://doi.org/10.7945/twmk-q297
这个DOI链接是其他人引用您工作的最佳方式。
单件
| 缩略图 | 标题 | 上传日期 | 公开度 | 行动 |
|---|---|---|---|---|
|
|
PUBLISHED_Varlioglu_Ozer.pdf | 2020-05-15 | 开放存取 |
|
永久链接到此页面: https://scholar.uc.edu/show/jw827c91c