Suhartono, Suhartono, Zaman, Syahiduz and Chamidy, Totok (2024) Bibliometric Analysis and Visualization of Machine Learning-Based Credit Card Fraud Detection. Presented at 2024 International Conference on Information Technology Research and Innovation (ICITRI), 2024, Jakarta.
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Abstract
Machine learning is often used in credit cardfraud detection. Its ability to analyze large amounts of transaction data and identify patterns of fraudulent activity.The aim of this study is to provide insights into the research status, mapping process and annual topics of machine learning research on credit card fraud detection, and to provide relevant references for future research. Research phases with three approaches. The first approach is descriptive statistical analysisfor data collection using Scopus web and Herzing’s Publish or Perish. The second approach uses quantitative methods forcitation analysis with a bibliometric approach using VosViewer application. The research findings are related to the analysis of credit card fraud research divided into three clusters, the first cluster is the research stream using machine learning in datamining, the second cluster is the research stream using machine learning to detect credit card fraud, the third cluster is there search stream using machine learning to classify credit card fraud. The second cluster can resolve the complexity of credit card transaction data and increase the accuracy of the fraud detection system, for the third cluster, we can build a more effective classification in resolving imbalanced data and limited transaction records. A growing research trend is in the third cluster, research related to the performance of credit card fraud classification based on unbalanced data and limited fraud data. Further research is recommended to examine the evolution of the literature on the use of machine learning to detect credit card fraud and to conduct comparative studies between the Scopus, Web of Science and ScienceDirect databases to expand the literature.
Item Type: | Conference (Paper) |
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Keywords: | Machine learning; fraud detection; credit cards; analysis bibliometrics; visualization |
Subjects: | 08 INFORMATION AND COMPUTING SCIENCES > 0806 Information Systems 08 INFORMATION AND COMPUTING SCIENCES > 0899 Other Information and Computing Sciences |
Divisions: | Faculty of Technology > Department of Informatics Engineering |
Depositing User: | Syahiduz Zaman |
Date Deposited: | 09 Dec 2024 11:12 |
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