Predicting Crime Using Spatial Features

03/12/2018
by   Fateha Khanam Bappee, et al.
0

Our study aims to build a machine learning model for crime prediction using geospatial features for different categories of crime. The reverse geocoding technique is applied to retrieve open street map (OSM) spatial data. This study also proposes finding hotpoints extracted from crime hotspots area found by Hierarchical Density-Based Spatial Clustering of Applications with Noise (HDBSCAN). A spatial distance feature is then computed based on the position of different hotpoints for various types of crime and this value is used as a feature for classifiers. We test the engineered features in crime data from Royal Canadian Mounted Police of Halifax, NS. We observed a significant performance improvement in crime prediction using the new generated spatial features.

READ FULL TEXT
research
03/21/2018

Clustering to Reduce Spatial Data Set Size

Traditionally it had been a problem that researchers did not have access...
research
02/01/2019

The Spatially-Conscious Machine Learning Model

Successfully predicting gentrification could have many social and commer...
research
12/01/2019

HCA-DBSCAN: HyperCube Accelerated Density Based Spatial Clustering for Applications with Noise

Density-based clustering has found numerous applications across various ...
research
06/25/2019

Modeling Severe Traffic Accidents With Spatial And Temporal Features

We present an approach to estimate the severity of traffic related accid...
research
10/13/2014

Multi-Scale Local Shape Analysis and Feature Selection in Machine Learning Applications

We introduce a method called multi-scale local shape analysis, or MLSA, ...
research
05/17/2019

Dance Hit Song Prediction

Record companies invest billions of dollars in new talent around the glo...
research
02/12/2021

Towards automatic extraction and validation of on-street parking spaces using park-out events data

This article proposes two different approaches to automatically create a...

Please sign up or login with your details

Forgot password? Click here to reset