Systematic Literature Review of Crime Prediction and Data Mining
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Abstract
Description
Crime is a social menace that impacts negatively on social economic development of a
nation. Crime has been in existence from time immemorial and violent crime is the main
enemy of the society. One of the primary responsibilities of any government is security of
life and properties which translates to reduction of crime rate and provisioning of adequate
security to its citizenry. To this end, government must wake up to its responsibilities by
reducing crime rate and provide adequate security to its citizenry through effective, efficient
and proactive policing. Any research in this direction that can help in analyzing and
predicting the future occurrence of violent crime by using crime dataset is laudable.
Predicting future occurrence of crime from crime dataset is well reported in literature,
therefore it has become imperative to come up with an overview of the present state of the art
on crime prediction and control.
The systematic review present in this study focuses on crime prediction and data mining as
well as the techniques employed in the past studies. The existing work is classified and
grouped into different categories and are presented by using visualization approach. It is
found that more studies adopted supervised learning approaches to crime prediction and
control compared to other methods. The challenges encountered were also reported. Crime
prediction has become hot research area in recent time because of its intending benefits to
socio-economic development of a nation.
Keywords
QA76 Computer software