>
Fa   |   Ar   |   En
   data mining as a method for comparison of traffic accidents in şişli district of istanbul  
   
نویسنده ersen mert ,büyüklü ali hakan ,taşabat semra erpolat
منبع journal of contemporary urban affairs - 2022 - دوره : 6 - شماره : 2 - صفحه:113 -141
چکیده    Studies to reduce traffic accidents are of great importance, especially for metropolitan cities. one of these metropolitan cities is undoubtedly istanbul. in this study, a perspective on reducing traffic accidents was trying to be revealed by analyzing 3833 fatal and injury traffic accidents that occurred in the şişli district of istanbul between 2010-2017, with data mining (dm), machine learning (ml) and geographic information systems methods (gis), as well as traditional methods. it is aimed to visually determine the streets where traffic accidents are concentrated, to examine whether the accidents show anomalies according to the effect of the days of the week, to examine the differences according to the accidents that occur in the regions and to develop a model. for this purpose kernel density, decision trees, artificial neural networks, logistic regression and naive bayes methods were used. from the results obtained, it has been seen that some days are different from other days in terms of traffic accidents, according to the accident intensities and the performances of the modelling techniques used vary according to the regions. this study revealed that the ‘day of the week effect’ can also be applied to traffic accidents.
کلیدواژه geographic information systems; kernel density method; traffic accidents; decision trees; artificial neural networks; logistic regression; naive bayes
آدرس yıldız technical university, graduate school of science and engineering, department of statistics, sustainable and intelligent transportation sub-department, turkey, yıldız technical university, faculty of art and science, department of statistics, turkey, mimar sinan fine arts university, faculty of arts and sciences, department of statistics, turkey
پست الکترونیکی semra.erpolat@msgsu.edu.tr
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved