Deep Support Vector Data Description dalam Penanganan Anomali pada Proses Pengajuan Klaim Asuransi Kredit
Deep Support Vector Data Description for Anomaly Detection in Credit Insurance Claim Processes
Date
2025Author
Ramadhana, Sari
Advisor(s)
Nababan, Erna Budhiarti
Sitompul, Opim Salim
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This study proposes Deep Support Vector Data Description (Deep-SVDD) as an anomaly-detection approach for credit-insurance claim submissions processed via host-to-host systems. Operational tabular data (5,000 observations) were prepared through an anti-leakage pipeline (deduplication, standardization, outlier handling, categorical encoding, and numeric scaling) and a time-based split (Train/Validation/Test). The model was trained on a Train-Normal subset to learn normality patterns, while PCA and HDBSCAN were used as supporting analyses in the latent space to enhance interpretability. Anomaly scores were converted into decisions using a percentile-based threshold aligned with audit capacity and then frozen prior to testing. Results indicate strong performance under class imbalance reflected by PR-AUC = 0.9673 and operational effectiveness through Recall@20 ≈ 44.19%, positioning the model as a precision-oriented, efficient, and accountable first-line detector that reduces manual verification workload while maintaining decision transparency.
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