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Survey on Crime Analysis and Prediction Using Data Mining Techniques


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1 Department of Computer Science and Engineering, Manonmaniam Sundaranar University, India
     

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Data Mining is the procedure which includes evaluating and examining large pre-existing databases in order to generate new information which may be essential to the organization. The extraction of new information is predicted using the existing datasets. Many approaches for analysis and prediction in data mining had been performed. But, many few efforts has made in the criminology field. Many few have taken efforts for comparing the information all these approaches produce. The police stations and other similar criminal justice agencies hold many large databases of information which can be used to predict or analyze the criminal movements and criminal activity involvement in the society. The criminals can also be predicted based on the crime data. The main aim of this work is to perform a survey on the supervised learning and unsupervised learning techniques that has been applied towards criminal identification. This paper presents the survey on the Crime analysis and crime prediction using several Data Mining techniques.

Keywords

Criminology, Crime Analysis, Crime Prediction, Data Mining.
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  • Survey on Crime Analysis and Prediction Using Data Mining Techniques

Abstract Views: 602  |  PDF Views: 9

Authors

H. Benjamin Fredrick David
Department of Computer Science and Engineering, Manonmaniam Sundaranar University, India
A. Suruliandi
Department of Computer Science and Engineering, Manonmaniam Sundaranar University, India

Abstract


Data Mining is the procedure which includes evaluating and examining large pre-existing databases in order to generate new information which may be essential to the organization. The extraction of new information is predicted using the existing datasets. Many approaches for analysis and prediction in data mining had been performed. But, many few efforts has made in the criminology field. Many few have taken efforts for comparing the information all these approaches produce. The police stations and other similar criminal justice agencies hold many large databases of information which can be used to predict or analyze the criminal movements and criminal activity involvement in the society. The criminals can also be predicted based on the crime data. The main aim of this work is to perform a survey on the supervised learning and unsupervised learning techniques that has been applied towards criminal identification. This paper presents the survey on the Crime analysis and crime prediction using several Data Mining techniques.

Keywords


Criminology, Crime Analysis, Crime Prediction, Data Mining.

References