A Combination of Deep Neural Networks and K-Nearest Neighbors for Credit
Card Fraud Detection
- URL: http://arxiv.org/abs/2205.15300v1
- Date: Fri, 27 May 2022 10:33:27 GMT
- Title: A Combination of Deep Neural Networks and K-Nearest Neighbors for Credit
Card Fraud Detection
- Authors: Dinara Rzayeva, Saber Malekzadeh
- Abstract summary: The paper implements new techniques, which contains of under-sampling algorithms, K-nearest Neighbor Algorithm (KNN) and Deep Neural Network (KNN)
The performance evaluation showed that DNN model gives precise high accuracy (98.12%), which shows the good ability of presented method to detect fraudulent transactions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Detection of a Fraud transaction on credit cards became one of the major
problems for financial institutions, organizations and companies. As the global
financial system is highly connected to non-cash transactions and online
operations fraud makers invent more effective ways to access customers'
finances. The main problem in credit card fraud detection is that the number of
fraud transactions is significantly lower than genuine ones. The aim of the
paper is to implement new techniques, which contains of under-sampling
algorithms, K-nearest Neighbor Algorithm (KNN) and Deep Neural Network (KNN) on
new obtained dataset. The performance evaluation showed that DNN model gives
precise high accuracy (98.12%), which shows the good ability of presented
method to detect fraudulent transactions.
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