Forecasting Crime Using ARIMA Model
- URL: http://arxiv.org/abs/2003.08006v1
- Date: Wed, 18 Mar 2020 01:32:55 GMT
- Title: Forecasting Crime Using ARIMA Model
- Authors: Khawar Islam and Akhter Raza
- Abstract summary: We forecast crime rates in London borough by extracting large dataset of crime in London and predicted number of crimes in future.
A real dataset of crimes reported by London police collected from its website and other resources.
Data extraction (DE), data processing (DP) of unstructured data, visualizing model in IBM SPSS.
- Score: 1.90365714903665
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Data mining is the process in which we extract the different patterns and
useful Information from large dataset. According to London police, crimes are
immediately increases from beginning of 2017 in different borough of London. No
useful information is available for prevent crime on future basis. We forecasts
crime rates in London borough by extracting large dataset of crime in London
and predicted number of crimes in future. We used time series ARIMA model for
forecasting crimes in London. By giving 5 years of data to ARIMA model
forecasting 2 years crime data. Comparatively, with exponential smoothing ARIMA
model has higher fitting values. A real dataset of crimes reported by London
police collected from its website and other resources. Our main concept is
divided into four parts. Data extraction (DE), data processing (DP) of
unstructured data, visualizing model in IBM SPSS. DE extracts crime data from
web sources during 2012 for the 2016 year. DP integrates and reduces data and
give them predefined attributes. Crime prediction is analyzed by applying some
calculation, calculated their moving average, difference, and auto-regression.
Forecasted Model gives 80% correct values, which is formed to be an accurate
model. This work helps for London police in decision-making against crime.
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