Crime influences people in many ways. Prior studies
have shown the relationship between time and crime incidence
behavior. This research attempts to determine and examine the
relationship between time, crime incidences types and locations
by using one of the neural network models for time series data
that is, Long Short-Term Memory network. The collected data is
pre-processed, analyzed and tested using Long Short-Term
Memory recurrent neural network model. R-square score is also
used to test the accuracy. The study results show that applying
Long Short-Term Memory Recurrent Neural Network (LSTM
RNN) enables to come up with more accurate prediction about
crime incidence occurrence with respect to time. Predicting
crimes accurately helps to improve crime prevention and decision
and advance the justice system.
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