Jurnal / Konferensi2024

Classification of Darknet Traffic Using the AdaBoost Classifier Method

Penulis

Rizki Elinda Sari, Deris Stiawan, Nurul Afifah, Mohd. Yazid Idris, Rahmat Budiarto

Dipublikasikan di

Indonesian Journal of Electrical Engineering and Informatics

Abstrak

Darknet is famous for its ability to provide anonymity which is often used for illegal activities. A security monitor report from BSSN highlights that 290.556 credential data from institution in Indonesia have been exposed on the darknet. Classification techniques are important for studying and identifying darknet traffic. This study proposes the utilization of the AdaBoost Classifier in darknet classification. The use of variable estimator values significantly impact classification results. The best performance was obtained with an estimator value of 500 with an accuracy of 99.70%. The contribution of this research lies in the development of classification models and the evaluation of AdaBoost models in the context of darknet traffic classification.

Tim Penulis

1

Rizki Elinda Sari

2

Deris Stiawan

Universitas Sriwijaya

3

Nurul Afifah

Universitas Sriwijaya

4

Mohd. Yazid Idris

Universitas Sriwijaya

5

Rahmat Budiarto

Universitas Sriwijaya

Kutip

Rizki Elinda Sari, Deris Stiawan, Nurul Afifah, Mohd. Yazid Idris, Rahmat Budiarto (2024). Classification of Darknet Traffic Using the AdaBoost Classifier Method. Indonesian Journal of Electrical Engineering and Informatics.