Result: Implementation of Classification Algorithm for Anomaly Detection in Credit Card Transactions with RapidMiner

Title:
Implementation of Classification Algorithm for Anomaly Detection in Credit Card Transactions with RapidMiner
Source:
International Journal of Integrated Science and Technology. 3:2163-2172
Publisher Information:
PT Multitech Bintang Asia, 2025.
Publication Year:
2025
Document Type:
Academic journal Article
ISSN:
3026-4685
DOI:
10.59890/ijist.v3i7.126
Rights:
CC BY
Accession Number:
edsair.doi...........922f445bf00a38cfbc68ca1ed40cb09a
Database:
OpenAIRE

Further Information

This study evaluates the application of the Random Forest algorithm in the classification of credit card transactions to detect transaction types such as cash_out, cash_in, payment, transfer, and debit. The dataset used is derived from Kaggle.com and includes attributes such as the number of transactions, sender and recipient balances, and transaction types. The results showed an accuracy of 80.63%, with the best performance in cash_out and payments, but difficulties in classifying debit and transfer transactions due to class imbalances. Classroom balancing using smote or undersampling, as well as unsupervised learning techniques, can improve model performance. Improving the model through feature engineering and hyperparameter tuning is also needed to improve the effectiveness of fraud detection.