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Deteksi PE Ransomware Menggunakan Shallow Learning Iik Muhamad Malik Matin; Zahra Azizah; Ihsan Alamal Ahmad
Prosiding Sains dan Teknologi Vol. 5 No. 1 (2026): Seminar Nasional Sains dan Teknologi (SAINTEK) ke 5 - Februari 2026
Publisher : DPPM Universitas Pelita Bangsa

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Abstract

Ransomware merupakan salah satu ancaman keamanan siber yang berkembang pesat dalam satu dekade terakhir. Serangan jenis ini tidak hanya mengakibatkan kerugian finansial, tetapi juga gangguan pada layanan publik dan infrastruktur digital. Deteksi dini terhadap aktivitas ransomware menjadi tantangan utama karena pola serangan yang cepat dan adaptif. Penelitian ini bertujuan untuk mengimplementasikan metode Shallow Learning dalam mendeteksi ransomware menggunakan dataset RanSAP. Dataset ini memuat pola akses penyimpanan dari aktivitas ransomware dan aplikasi normal (benign). Empat algoritma yang digunakan yaitu Support Vector Machine (SVM), Random Forest (RF), Decision Tree dan Logistic Regression (LR). Evaluasi dilakukan dengan confusion matrix untuk mengukur akurasi, presisi, recall, dan F1-score. Hasil eksperimen menunjukkan bahwa model SVM memiliki kinerja terbaik dengan akurasi 95%, diikuti RF dengan 93%, Desicion Tree 91% dan LR dengan 89%. Penelitian ini menunjukan bahwa Shallow Learning cukup efektif dalam mendeteksi pola perilaku ransomware.
A Rule-Based Data-Driven Framework for Partner Selection in Digital Agribusiness Zahra Azizah; Iik Muhamad Malik Matin; Okta Gabriel Sinsaku Sinaga; Faiz Akbar; Asiwidia Simanjuntak
bit-Tech Vol. 8 No. 2 (2025): bit-Tech
Publisher : Komunitas Dosen Indonesia

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.32877/bt.v8i2.3359

Abstract

Digital transformation has reshaped partner evaluation in agribusiness business-to-business (B2B) networks, shifting decision-making from intuition-based judgments to transparent, data-driven assessments. Addressing the need for scalable and trustworthy selection mechanisms, this study introduces a novel hybrid anomaly detection framework that sequentially combines rule-based z-score normalization with the Local Outlier Factor (LOF) algorithm to evaluate digital business credibility. The framework leverages Google Maps data, a widely accessible, user-generated information source that reflects real customer experiences, to assess 6,237 hospitality, restaurant, and café (HORECA) businesses in Indonesia’s Jabodetabek region, a growing hub in the agribusiness supply chain. Using structured data collected through the Google Places API, the rule-based method identified 47.06% of businesses as anomalies, predominantly those with disproportionately high ratings relative to customer engagement. Meanwhile, LOF detected 5.02% of density-based outliers, capturing irregularities that only emerge in local spatial and contextual comparisons. A statistical comparison (χ² = 195.10, p < 0.001) revealed a 56.52% overlap between the two methods, emphasizing their complementary strengths: rule-based thresholds provide interpretability and efficiency, whereas LOF offers sensitivity to nuanced, neighborhood-level deviations. These findings show that no single technique fully captures the complexity of digital credibility anomalies; however, their combination enables more balanced and context-aware evaluations. This approach enhances the accuracy and fairness of credibility assessments, which is crucial for partner selection in digital agribusiness ecosystems. Overall, the study provides practical and methodological contributions for building transparent, reproducible, and equitable anomaly-detection systems for emerging digital markets