Credit card payment is one of the most preferred methods of e-commerce sites. Fraud orders are the biggest concerns for online shopping sites. Fraud operations affect not only customers but also companies and banks. Hence, companies should be able to classify orders and take measures against suspicious transactions. Classification is easier on the banking side because of more information about customers, but it is more difficult to determine this process on e-commerce sites. In this study, the actual order data of a private e-commerce enterprise has been examined and suspicious transactions are determined. First of all, all order data is analyzed and filtered. The best variables for classification are determined by variable selection algorithms. Afterwards, classification algorithms are applied and suspicious orders are determined with 92% success rate. Naïve Bayesian, Decision Trees and Artificial Neural Network have been used as comparative data mining methods.
CITATION STYLE
KIRELLİ, Y., ARSLANKAYA, S., & ZEREN, M. T. (2020). Karşılaştırmalı Veri Madenciliği Teknikleri Kullanılarak Bir E-Ticaret Sitesinin Kredi Kartı Dolandırıcılığı Sınıflandırması. European Journal of Science and Technology. https://doi.org/10.31590/ejosat.747399
Mendeley helps you to discover research relevant for your work.