Özyeğin Üniversitesi, Çekmeköy Kampüsü Nişantepe Mahallesi Orman Sokak 34794 Çekmeköy İstanbul
Telefon : +90 (216) 564 90 00
Fax : +90 (216) 564 99 99
info@ozyegin.edu.tr
Thesis Defense - Uğur Dolu (MSDS)
Uğur Dolu – M.Sc. Data Science
Asst. Prof. Emre Sefer – Advisor
Date: 26.05.2022
Time: 10:00
Location: AB1 408
A NOVEL SAMPLING TECHNIQUE AND GRADIENT BOOSTING TREE-BASED
APPROACH FOR CROSS-CHANNEL FRAUD DETECTION
Thesis Committee:
Asst. Prof. Emre Sefer, Özyeğin University
Assoc. Prof. Okan Örsan Özener, Özyeğin University
Prof. Oğuz Kaynar, Sivas Cumhuriyet University
Abstract:
The most recent research on hundreds of financial institutions uncovered that only 26% of them have a team assigned to detect cross-channel fraud. Due to the developing technologies, various fraud techniques have emerged and increased in digital environments. Fraud directly affects customer satisfaction. For instance, only in the UK, the total loss of fraud transactions was £1.26 billion in 2020. In this study, we come up with a Gradient Boosting Tree (GBT)-based approach to efficiently detect cross-channel frauds. As a part of our proposed approach, we developed an algorithm able to generate an optimized training set to train the model and overcome imbalanced data problems. This solution made it easier for the model to understand the concept drift, another major problem arising from changing customer behavior. We boost the performance of our GBT model by integrating additional demographic, economic, and behavioral features as a part of feature engineering. Hyperparameter tuning methods find the best parameters for the model. The cross-channel fraud detection performance of the model is evaluated on a real banking dataset which is highly imbalanced in terms of fraud which is another challenge in the fraud detection problem. We use our trained model to score real-time cross-channel transactions by a leading private bank in Turkey. As a result, our approach can catch almost 75% of total fraud loss in a month with a low false-positive rate and acceptable call count.
Bio:
Uğur Dolu received his B.Sc. degree in Electrical and Electronics Engineering from Ozyegin University, Istanbul, Turkey, in 2019. He started his M.Sc. in the Electrical and Electronics department. He made a horizontal transfer from there to Data Science under the supervision of Emre Sefer at Ozyegin University. In 2020, he started to work in Yapi Kredi Technology as an R&D Engineer in Istanbul, Turkey.