1. Franjic S.Cardiac Dysrhythmia is an Abnormal Heart Rhythm.Global Journal of Cardiovascular Diseases, pp. 23-30, 2021. 2. Thinesh T., Jose P.A., Ramasamy P., Meenatchi R., Selvan K.M., andSelvin J.Differential Coral Response to Algae Contact: Porites Tissue Loss, Praise for Halimeda Interaction at Southeast Coast of India.Environmental Science and Pollution Research vol. 26, pp.17845-17852, 2019. 3. Ileberi E., Sun Y., andWang Z.A Machine Learning Based Credit Card Fraud Detection using the GA Algorithm for Feature Selection. Journal of Big Data, vol. 9, no. 1, pp.1-17, 2022. 4. Ahmed, M.H. and Butt, A.H.A Review: Credit Card Fraud Detection in Banks using Machine Learning Algorithms.Science Open Preprints, 2023. 5. Prabhakaran, N. and Nedunchelian, R.Oppositional Cat Swarm Optimization-Based Feature Selection Approach for Credit Card Fraud Detection.Computational Intelligence and Neuroscience, 2023. 6. Goyal, Y. and Sharma, A. Credit Card Fraud Detection and Analysis Through Machine Learning, 2020. 7. Paldino G.M., Lebichot B., Le Borgne, Y.A., Siblini, W., Oblé, F., Boracchi, G., and Bontempi, G. The Role of Diversity and Ensemble Learning in Credit Card Fraud Detection.Advances in Data Analysis and Classification, pp.1-25, 2022. 8. Strelcenia, E. and Prakoonwit, S.Improving Classification Performance in Credit Card Fraud Detection by Using New Data Augmentation. AI, vol. 4, no. 1, pp.172-198, 2023. 9. Gao J., Sun W., andSui X.Research on Default Prediction for Credit Card Users based on XGBoost-LSTM Model. Discrete Dynamics in Nature and Society, vol. 2021, pp.1-13, 2021. 10. Dantas R.M., Firdaus R., Jaleel F., Mata P.N., Mata M.N., andLi G.Systemic Acquired Critique of Credit Card Deception Exposure through Machine Learning. Journal of Open Innovation: Technology, Market, and Complexity, vol. 8, no. 4, pp.192, 2022. 11. Kim, M. and Hwang, K.B.An Empirical Evaluation of Sampling Methods for the Classification of Imbalanced Data.PLoS One vol. 17, no. 7, pp. e0271260, 2022. 12. Priya, G.J. and Saradha, S.Fraud Detection and Prevention using Machine Learning Algorithms: A Review. In2021 7th International Conference on Electrical Energy Systems (ICEES), IEEE, pp. 564-568, 2021. |