The Influence of Data Classification Methods on Predictive Accuracy of Kernel Density Estimation Hot

The Influence of Data Classification Methods on Predictive Accuracy of Kernel Density Estimation Hotspot Maps

Nenad Milic1, Brankica Popovic2, Sasa Mijalkovic1, and Darko Marinkovic1

1Department of Criminalistics, University of Criminal Investigation and Police Studies, Serbia

2Department of Informatics and Computer Science, University of Criminal Investigation and Police Studies, Serbia

Abstract: When it comes to hot spot identification, spatial analysis techniques come to the fore. One of such techniques, that has gained great popularity among crime analysts, is the Kernel Density Estimation (KDE). Small variation in KDE parameters can give different outputs and hence affect predictive accuracy of hotspot map. The influence these parameters have on KDE hotspot output sparked many researches, mostly analyzing the influence of the cell size and bandwidth size. Yet, the influence of different classification methods applied to calculated cell values, including the choice of threshold value, on the KDE hotspot predictive accuracy remained neglected. The objective of this research was to assess the influence of different classification methods to KDE predictive accuracy. In each KDE computation, calculated cell values were divided into five thematic classes, using three the most common (default) classification methods provided by Environmental Systems Research Institute (ESRI) Geographical Information System (Arc GIS) (equal interval classification, quantile classification and natural breaks classification) and incremental multiples of the grid cells’ mean. Based upon calculated hit rates, predictive accuracy indices and recapture rate indices and taking into account the necessity that mapping output should satisfy some operational requirements as well as statistical rules, this research suggest that incremental mean approach with hotspot threshold of 3 and above multiples of the grid cell’s mean, should be used.

Keywords: Crime mapping, hot spot, kernel density, classification methods.

Received May 20, 2016; accepted May 6, 2018
Full text    
Read 3803 times Last modified on Sunday, 20 October 2019 01:23
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…