Urban Crime Risk Prediction Using Point of Interest Data

Geographical information systems have found successful applications to prediction and decision-making in several areas of vital importance to contemporary society. This article demonstrates how they can be combined with machine learning algorithms to create crime prediction models for urban areas. S...

Full description

Bibliographic Details
Main Author: Paweł Cichosz
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/7/459
id doaj-0c97cdaee30a49d0833037e8350ffdda
record_format Article
spelling doaj-0c97cdaee30a49d0833037e8350ffdda2020-11-25T02:49:16ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-07-01945945910.3390/ijgi9070459Urban Crime Risk Prediction Using Point of Interest DataPaweł Cichosz0Institute of Computer Science, Warsaw University of Technology, 00-665 Warsaw, PolandGeographical information systems have found successful applications to prediction and decision-making in several areas of vital importance to contemporary society. This article demonstrates how they can be combined with machine learning algorithms to create crime prediction models for urban areas. Selected point of interest (POI) layers from <i>OpenStreetMap</i> are used to derive attributes describing micro-areas, which are assigned crime risk classes based on police crime records. POI attributes then serve as input attributes for learning crime risk prediction models with classification learning algorithms. The experimental results obtained for four UK urban areas suggest that POI attributes have high predictive utility. Classification models using these attributes, without any form of location identification, exhibit good predictive performance when applied to new, previously unseen micro-areas. This makes them capable of crime risk prediction for newly developed or dynamically changing neighborhoods. The high dimensionality of the model input space can be considerably reduced without predictive performance loss by attribute selection or principal component analysis. Models trained on data from one area achieve a good level of prediction quality when applied to another area, which makes it possible to transfer or combine crime risk prediction models across different urban areas.https://www.mdpi.com/2220-9964/9/7/459crime predictionpoint of interestmachine learningclassification
collection DOAJ
language English
format Article
sources DOAJ
author Paweł Cichosz
spellingShingle Paweł Cichosz
Urban Crime Risk Prediction Using Point of Interest Data
ISPRS International Journal of Geo-Information
crime prediction
point of interest
machine learning
classification
author_facet Paweł Cichosz
author_sort Paweł Cichosz
title Urban Crime Risk Prediction Using Point of Interest Data
title_short Urban Crime Risk Prediction Using Point of Interest Data
title_full Urban Crime Risk Prediction Using Point of Interest Data
title_fullStr Urban Crime Risk Prediction Using Point of Interest Data
title_full_unstemmed Urban Crime Risk Prediction Using Point of Interest Data
title_sort urban crime risk prediction using point of interest data
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-07-01
description Geographical information systems have found successful applications to prediction and decision-making in several areas of vital importance to contemporary society. This article demonstrates how they can be combined with machine learning algorithms to create crime prediction models for urban areas. Selected point of interest (POI) layers from <i>OpenStreetMap</i> are used to derive attributes describing micro-areas, which are assigned crime risk classes based on police crime records. POI attributes then serve as input attributes for learning crime risk prediction models with classification learning algorithms. The experimental results obtained for four UK urban areas suggest that POI attributes have high predictive utility. Classification models using these attributes, without any form of location identification, exhibit good predictive performance when applied to new, previously unseen micro-areas. This makes them capable of crime risk prediction for newly developed or dynamically changing neighborhoods. The high dimensionality of the model input space can be considerably reduced without predictive performance loss by attribute selection or principal component analysis. Models trained on data from one area achieve a good level of prediction quality when applied to another area, which makes it possible to transfer or combine crime risk prediction models across different urban areas.
topic crime prediction
point of interest
machine learning
classification
url https://www.mdpi.com/2220-9964/9/7/459
work_keys_str_mv AT pawełcichosz urbancrimeriskpredictionusingpointofinterestdata
_version_ 1724744553724903424