Detection of Crime Regions with Biclustering Approach and Comparison of Methods
Abstract
In terms of safety of the social life, it is very important to foresee the crimes and take the necessary precautions before the crime is committed. For this purpose, crime analysis should be carried out in order for security units to take necessary measures. In this regard, the data mining approach makes a significant contribution to the security units in the analysis of large data. In this context, different data analysis methods are used to estimate and identify potential crime areas. By using dual clustering methods in the detection of crime zones, clustering of crime areas and crime types at the same time provides more comprehensive results than traditional clustering methods. In this study, CC and Xmotif algorithms were used on the data set of “Crimes in Boston” to determine the crime sites by using data mining approach. The results were obtained by using R-project 3.5.3 software. It was found that CC algorithm gives better results for this data set than Xmotif algorithm.
Keywords
References
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Details
Primary Language
Turkish
Subjects
Software Engineering (Other)
Journal Section
Research Article
Authors
İbrahim Çil
*
0000-0002-1290-3704
Türkiye
Nazan Sarı
0000-0002-1290-3704
Türkiye
Olcay Eydemir
0000-0002-7119-344X
Türkiye
Publication Date
December 31, 2019
Submission Date
November 18, 2019
Acceptance Date
December 22, 2019
Published in Issue
Year 1970 Volume: 2 Number: 3
Cited By
Türkiye’deki Suç Türlerinin İllere Göre İkili Kümeleme Yöntemiyle İncelenmesi
Gazi Üniversitesi Fen Fakültesi Dergisi
https://doi.org/10.63716/guffd.1748380
