TY - GEN
T1 - Unsupervised Learning for Fraud Detection in Cooperative Transactions
T2 - 9th Ecuador Technical Chapters Meeting, ETCM 2025
AU - Hernández, Christian
AU - Grijalva, Felipe
AU - Parra, Carla
AU - Riofrío, Daniel
AU - Vega-Sánchez, José
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Anomaly detection in financial transactions is a critical challenge for mitigating risks associated with fraudulent activities. This work proposes a robust framework tailored to the cooperative financial sector, leveraging unsupervised learning techniques to detect anomalous behavior in transaction data. Hierarchical clustering is first applied to segment users into distinct behavioral groups, enabling the identification of patterns indicative of both normal and suspicious activity. Subsequently, a One-Class Support Vector Machine (SVM) is employed for anomaly detection, achieving Area Under the Curve (AUC) scores of up to 0.90 in clusters with well-defined transactional patterns. Visualization using t-distributed Stochastic Neighbor Embedding (t-SNE) reveals minimal overlap between normal and anomalous transactions within these clusters, further demonstrating the effectiveness of the model. However, performance decreases in clusters exhibiting higher behavioral variability, highlighting the challenges inherent to diverse financial data. This research underscores the importance of domain-specific anomaly detection strategies and offers practical insights for enhancing fraud prevention in financial systems-particularly within underrepresented sectors such as cooperative banking. Future work will focus on improving scalability and model interpretability to enhance applicability in real-world operational environments.
AB - Anomaly detection in financial transactions is a critical challenge for mitigating risks associated with fraudulent activities. This work proposes a robust framework tailored to the cooperative financial sector, leveraging unsupervised learning techniques to detect anomalous behavior in transaction data. Hierarchical clustering is first applied to segment users into distinct behavioral groups, enabling the identification of patterns indicative of both normal and suspicious activity. Subsequently, a One-Class Support Vector Machine (SVM) is employed for anomaly detection, achieving Area Under the Curve (AUC) scores of up to 0.90 in clusters with well-defined transactional patterns. Visualization using t-distributed Stochastic Neighbor Embedding (t-SNE) reveals minimal overlap between normal and anomalous transactions within these clusters, further demonstrating the effectiveness of the model. However, performance decreases in clusters exhibiting higher behavioral variability, highlighting the challenges inherent to diverse financial data. This research underscores the importance of domain-specific anomaly detection strategies and offers practical insights for enhancing fraud prevention in financial systems-particularly within underrepresented sectors such as cooperative banking. Future work will focus on improving scalability and model interpretability to enhance applicability in real-world operational environments.
KW - Anomaly Detection
KW - Financial Transactions
KW - Fraud Detection
KW - Fraud Prevention
KW - Hierarchical Clustering
KW - OneClass Support Vector Machine (SVM)
KW - t-SNE Visualization
KW - Unsupervised Learning
UR - https://www.scopus.com/pages/publications/105032500623
U2 - 10.1109/ETCM67548.2025.11304315
DO - 10.1109/ETCM67548.2025.11304315
M3 - Contribución a la conferencia
AN - SCOPUS:105032500623
T3 - ETCM 2025 - 9th Ecuador Technical Chapters Meeting
BT - ETCM 2025 - 9th Ecuador Technical Chapters Meeting
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 21 October 2025 through 24 October 2025
ER -