Title of article :
An Improved K-Means with Artificial Bee Colony Algorithm for Clustering Crimes
Author/Authors :
Karimi, Mohammad Department of Computer Engineering - Urmia Branch - Islamic Azad University, Urmia, Iran , Soleimanian Gharehchopogh, Farhad Department of Computer Engineering - Urmia Branch - Islamic Azad University, Urmia, Iran
Abstract :
Crime detection is one of the major issues in the field of criminology. In fact,
criminology includes knowing the details of a crime and its intangible relations
with the offender. In spite of the enormous amount of data on offenses and
offenders, and the complex and intangible semantic relationships between this
information, criminology has become one of the most important areas in the field
of clustering. With the development of computer systems and the development of
clustering algorithms, it has been possible to interpret mass data and extract
knowledge from them. There are different types of attribute in the mass data set,
each of which can be suitable for crime detection. By clustering, different groups
of crime can be identified and also the percentage of their occurrence. In this
paper, a K-Means improved by Artificial Bee Colony (ABC) algorithm is proposed
for crime clustering. In the proposed model, an ABC algorithm has been used to
improve cluster centers and increase the accuracy of clustering and assignment of
samples to appropriate clusters. The main motivation is to exploit the search ability
of ABC algorithm and to avoid the original limitation of falling into locally optimal
values of the K-Means. Evaluation has done on data set with 1994 samples and 128
features. The results show that the accuracy of the proposed model is higher than
K-Means, and the Purity value of the proposed model with 500 iterations is 0.943.
Farsi abstract :
فاقد چكيده فارسي
Keywords :
Crime Detection , Clustering , K-Means , Artificial Bee Colony
Journal title :
Journal of Advances in Computer Research