Title of article :
Improving the multilayer Perceptron neural network using teaching-learning optimization algorithm in detecting credit card fraud
Author/Authors :
Safari, Ehram Faculty member of the Institute of Communication and Information Technology, Tehran, Iran , Peykari, Mozhdeh Department of Information and Technology Engineering - Science and Research - islamik Azad University Tehran branch, Tehran , Iran
Abstract :
Due to the necessity of electronic transactions with credit cards in this modern
era and that fraudulent activity with credit cards are on the rise, the
development of automated systems that can prevent such financial fraud is
considered vital. This study presents a method for detecting credit card fraud
by deploying a neural network that distinguishes between legitimate and
illegitimate transactions and detects fraudulent activities with stolen physical
credit cards. For this purpose, after collecting data in the preprocessing stage,
cleaning and normalizing the data, the feature selection operation is
performed using fisher discriminant analysis. After that, a multilayer
perceptron (MLP) neural network is trained during the post-processing period
using the teaching learning-based optimization algorithm (TLBO) to optimize
credit card fraud detection. In this algorithm, local search (exploitation) is
done using the teacher phase, and global searching(exploration) is done using
the student phase. Moreover, the fisher discriminant analysis algorithm
reduces within-class scattering. It increases between-class diffusion to
increase classification accuracy and decrease the CPU time of the algorithm
in the training phase. The latest available algorithms such as AdaBoost,
Random Forest, CNN, and RNN are also compared with the proposed
method. The results show that the proposed algorithm outperforms the
mentioned algorithms regarding some standards criteria and CPU time.
Keywords :
Classification , fraud detection , multilayer Perceptron neural network , teaching-Learning optimization algorithm
Journal title :
Journal of Industrial and Systems Engineering (JISE)