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http://dx.doi.org/10.5659/AIKAR.2022.24.1.1

Artificial-Neural-Network-based Night Crime Prediction Model Considering Environmental Factors  

Lee, Juwon (Department of Architecture, Sejong University)
Jeong, Yongwook (Department of Architecture, Sejong University)
Jung, Sungwon (Department of Architecture, Sejong University)
Publication Information
Architectural research / v.24, no.1, 2022 , pp. 1-11 More about this Journal
Abstract
As the occurrence of a crime is dependent on different factors, their correlations are beyond the ordinary cognitive range. Owing to this limitation, systems face difficulty in correlating various factors, thereby requiring the assistance of artificial intelligence (AI) to overcome such limitations. Therefore, AI has become indispensable for crime prediction. Crimes can cause severe and irrevocable damage to a society. Recently, big data has been introduced for developing highly accurate models for crime prediction. Prediction of night crimes should be given significant consideration, because crimes primarily occur during nights, when the spatiotemporal characteristics become vulnerable to crimes. Many environmental factors that influence crime rate are applied for crime prediction, and their influence on crime rate may differ based on temporal characteristics and the nature of crime. This study aims to identify the environmental factors that influence sex and theft crimes occurring at night and proposes an artificial neural network (ANN) model to predict sex and theft crimes at night in random areas. The crime data of A district in Seoul for 12 years (2004-2015) was used, and environmental factors that influence sex and theft crimes were derived through multiple regression analysis. Two types of crime prediction models were developed: Type A using all environmental factors as input data; Type B with only the significant factors (obtained from regression analysis) as input data. The Type B model exhibited a greater accuracy than Type A, by 3.26 and 9.47 % higher for theft and sex crimes, respectively.
Keywords
Artificial Neural Network; Big Data; Smart City; CPTED; crime prediction model;
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