Enhancing Crime Prediction Using Convolutional Neural Networks Techniques

Authors

  • K.Chiranjeevi Assistant Professor, Department of CSE-AI & ML, Sri Vasavi Institute of Engineering & Technology, Nandamuru, Andhra Pradesh, India Author
  • Y. Lalitha Mutyala Sivani UG Student, Department of CSE-AI & ML, Sri Vasavi Institute of Engineering & Technology, Nandamuru, Andhra Pradesh, India Author
  • Veeramallu Yeshwanth UG Student, Department of CSE-AI & ML, Sri Vasavi Institute of Engineering & Technology, Nandamuru, Andhra Pradesh, India Author
  • Ponala Usha Rani UG Student, Department of CSE-AI & ML, Sri Vasavi Institute of Engineering & Technology, Nandamuru, Andhra Pradesh, India Author
  • Yenuga Vikram UG Student, Department of CSE-AI & ML, Sri Vasavi Institute of Engineering & Technology, Nandamuru, Andhra Pradesh, India Author

Keywords:

Prediction of Crime Hotspots, Machine Learning, LSTM, Built Environment

Abstract

Crime prediction is of great significance to the formulation of policing strategies and the implementation of crime prevention and control. Machine learning is the current mainstream prediction method. However, few studies have systematically compared different machine learning methods for crime prediction. This paper takes the historical data of public property crime from 2015 to 2018 from a section of a large coastal city in the southeast of China as research data to assess the predictive power between several machine learning algorithms. Results based on the historical crime data alone suggest that the LSTM model outperformed KNN, random forest, support vector machine, naive Bayes, and convolutional neural networks. In addition, the built environment data of points of interests (POIs) and urban road network density are input into LSTM model as covariates. It is found that the model with built environment covariates has better prediction effect compared with the original model that is based on historical crime data alone. Therefore, future crime prediction should take advantage of both historical crime data and covariates associated with criminological theories. Not all machine learning algorithms are equally effective in crime prediction.

Downloads

Download data is not yet available.

References

U. Thongsatapornwatana, ‘‘A survey of data mining techniques for analyzing crime patterns,’’ in Proc. 2nd Asian Conf. Defence Technol. (ACDT), Jan. 2016, pp. 123–128.

J. M. Caplan, L. W. Kennedy, and J. Miller, ‘‘Risk terrain modeling: Brokering criminological theory and GIS methods for crime forecasting,’’ Justice Quart., vol. 28, no. 2, pp. 360–381, Apr. 2011.

M. Cahill and G. Mulligan, ‘‘Using geographically weighted regression to explore local crime patterns,’’ Social Sci. Comput. Rev., vol. 25, no. 2, pp. 174–193, May 2007.

A. Almehmadi, Z. Joudaki, and R. Jalali, ‘‘Language usage on Twitter predicts crime rates,’’ in Proc. 10th Int. Conf. Secur. Inf. Netw. (SIN), 2017, pp. 307–310.

H. Berestycki and J.-P. Nadal, ‘‘Self-organised critical hot spots of criminal activity,’’ Eur. J. Appl. Math., vol. 21, nos. 4–5, pp. 371–399, Oct. 2010.

Tushar Sonawanev, Shirin Shaikh, Shaista Shaikh, Rahul Shinde, Asif Sayyad “Crime Pattern Analysis, Visualization And Prediction Using Data Mining”, International Journal of Advance Research and Innovative Ideas in Education, Vol 1, no.5 (2015):681 –686

Birks, Daniel, Alex Coleman, David Jackson. "Unsupervised identification of crime problems from police free-text data." Crime Science 9, no. 1 (2020): 1-19.

Felson, Marcus, Shanhe Jiang, and Yanqing Xu. "Routine activity effects of the Covid-19 pandemic on burglary in Detroit, March, 2020." Crime Science 9, no. 1 (2020): 1-7.

Wang, Zengli, and Hong Zhang. 2020. "Construction, Detection, and Interpretation of Crime Patterns over Space and Time" ISPRS International Journal of Geo-Information 9, no. 6: 339. https://doi.org/10.3390/ijgi90603397678808284868890AccuracyPrecisionRecallF1 ScoreSGD ModelLinear RegressionRidge RegressionPolynomial Regression

Aarthi, S., M. Samyuktha, and M. Sahana. "Crime hotspot detection with clustering algorithm using data mining." In 2019 3rd International Conference on Trends in Electronics and Informatics (ICOEI), pp. 401-405. IEEE, 2019.

Chen, Peng, and Justin Kurland. "Time, place, and modus operandi: a simple apriori algorithm experiment for crime pattern detection." In 2018 9th International Conference on Information, Intelligence, Systems and Applications (IISA), pp. 1-3. IEEE, 2018.

M. Sharma, "Z -CRIME: A data mining tool for the detection of suspicious criminal activities based on decision tree," 2014 International Conference on Data Mining and Intelligent Computing (ICDMIC), 2014, pp. 1-6, doi: 10.1109/ICDMIC.2014.6954268.

Taha, Kamal, and Paul D. Yoo. "SIIMCO: A forensic investigation tool for identifying the influential members of a criminal organization." IEEE Transactions on Information Forensics and Security 11, no. 4 (2015): 811-822.

David, H., and A. Suruliandi. "Survey on Crime Analysis and Prediction using Data Mining Techniques." ICTACT journal on soft computing 7, no. 3 (2017).

Alkesh Bharati, Dr Sarvanaguru RA.K, “Crime Prediction and Analysis Using Machine Learning”. International Research Journal of Engineering and Technology, 5, no. 9: 1037 –1042 (2018).

Emmanuel Ahishakiye, Elisha Opiyo Omulo, Danison Taremwa, and Ivan Niyonzima. "Crime Prediction Using Decision Tree (J48) Classification Algorithm."International Journal of Computer and Information Technology, 6 no. 3: 188 -195 (2017).

G. Anderson (2008) “Random relational rules”, PhD thesis (The University of Waikato).

Sri, Linga Akhila, Kalluri Manvitha, Gorantla Amulya, Ikkurthi Sai Sanjuna, and V. Pavani. "FBI Crime Analysis and Prediction using Machine Learning." Journal of Engineering Sciences, 11, no. 4: 441 –448, (2020).

Ivan Kholod, Andrey Shorov, and Sergei Gorlatch, “Improving Parallel Data Mining for Different Data Distributions in IoT Systems”, In International Symposium on Intelligent and Distributed Computing, Springer, Cham 2019, pp. 75-85, 2019, doi: https://doi.org/10.1007/978-3-030-32258-8_9

Kianmehr, Keivan, and Reda Alhajj. "Effectiveness of support vector machine for crime hot-spots prediction." Applied Artificial Intelligence 22, no. 5 (2008): 433-458.Angelina Tzacheva, Jaishree Ranganathan, and Sai Yesawy Mylavarapu, “Actionable Pattern Discovery for Tweet Emotions”, In International Conference on Applied Human Factors and Ergonomics, Springer, Cham, 2019, pp. 46-57, 2019, doi: 10.1007/978-3-030-20454-9_5

Downloads

Published

26-04-2024

Issue

Section

Research Articles

How to Cite

Enhancing Crime Prediction Using Convolutional Neural Networks Techniques. (2024). International Journal of Scientific Research in Science and Technology, 11(2), 884-893. https://ijsrst.com/index.php/home/article/view/IJSRST24112150

Similar Articles

1-10 of 114

You may also start an advanced similarity search for this article.