Crime Analyses Using Data Analytics

Author:

Dayara Thanu1,Thabtah Fadi2,Abdel-Jaber Hussein3,Zeidan Susan4

Affiliation:

1. Manukau Institute of Technology, New Zealand

2. ASDTests, Auckland, New Zealand

3. Arab Open University, Saudi Arabia

4. Zayed University, UAE

Abstract

One potential approach for crime analysis that has shown promising results is data analytics, particularly descriptive and predictive techniques. Data analytics can explore former criminal incidents seeking hidden correlations and patterns, which potentially could be used in crime prevention and resource management. The purpose of this research is to build a crime analysis model using supervised techniques to predict the arrest status of serious crimes in Chicago. This is based on specific indicators, such as timeframe, location in terms of district, community, and beat, and crime type among others. We used time series and clustering techniques to help us identify influential features. Supervised machine learning algorithms then modelled the subset of features against incidents related to battery and assaults in specific timeframes and locations to predict the arrest status response variable. The models derived from Naïve Bayes, Decision Tree, and Support Vector Machine (SVM) algorithms reveal a high predictive accuracy rate at certain times in some communities within Chicago.

Publisher

IGI Global

Subject

Hardware and Architecture,Software

Reference42 articles.

1. A Framework to Predict Social Crime through Twitter Tweets By Using Machine Learning

2. Crime Prediction Using Decision Tree (J48) Classiðcation Algorithm.;OmuloAhishakiye;International Journal of Computer and Information Technology,2017

3. American FactFinder. (2017). Retrieved from https://factfinder.census.gov/ faces/ nav/ jsf/ pages/index.xhtml

4. BBC. (2017). Chicago Battling Violence with Crime Predicting Tech. Retrieved from BBC News: https://www.bbc.com/news/av/technology-39748345/chicago-battling-violence-with-crime-predicting-tech

5. Crime prediction and analysis using machine learning.;International Research Journal of Engineering and Technology,2018

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