Jurnal / Konferensi2024

The incorporation of stacked long short-term memory into intrusion detection systems for botnet attack classification

Penulis

Ahmad Heryanto, Deris Stiawan, Adi Hermansyah, Rici Firnando, Hana Pertiwi, Mohd. Yazid Idris, Rahmat Budiarto

Dipublikasikan di

Iaes International Journal of Artificial Intelligence

Abstrak

Botnets are a common cyber-attack method on the internet, causing infrastructure damage, data theft, and malware distribution. The continuous evolution and adaptation to enhanced defense tactics make botnets a strong and difficult threat to combat. In light of this, the study's main objective was to find out how well techniques like principal component analysis (PCA), synthetic minority oversampling technique (SMOTE), and long short-term memory (LSTM) can help find botnet attacks. PCA shows the ability to reduce the feature dimensions in network data, allowing for a more efficient and effective representation of the patterns contained. The SMOTE addresses class imbalances in the dataset, enhancing the model's ability to recognize suspicious activity. Furthermore, LSTM classifies sequential data, understanding complex network patterns and behaviors often used by botnets. The combination of these three methods provided a substantial improvement in detecting suspicious botnet activities. We also evaluated the effectiveness using performance metrics such as accuracy, precision, recall, and F1-score. The results showed an accuracy of 96.77%, precision of 88.95%, recall of 88.58%, and F1-score of 88.64%, indicating that the proposed model was reliable in detecting botnet traffic compared to other deep learning models. Furthermore, LSTM can classify sequential data, understanding complex network patterns and behaviors often used by botnets.

Tim Penulis

1

Ahmad Heryanto

Universitas Sriwijaya

2

Deris Stiawan

Universitas Sriwijaya

3

Adi Hermansyah

Universitas Sriwijaya

4

Rici Firnando

5

Hana Pertiwi

6

Mohd. Yazid Idris

Universitas Sriwijaya

7

Rahmat Budiarto

Universitas Sriwijaya

Kutip

Ahmad Heryanto, Deris Stiawan, Adi Hermansyah, Rici Firnando, Hana Pertiwi, Mohd. Yazid Idris, Rahmat Budiarto (2024). The incorporation of stacked long short-term memory into intrusion detection systems for botnet attack classification. Iaes International Journal of Artificial Intelligence.
Logo Unsri

Grup Riset Jaringan Komputer, Keamanan, dan Sistem Terdistribusi. Fakultas Ilmu Komputer, Universitas Sriwijaya.

Kontak

Alamat

Gedung Diploma Komputer, Fakultas Ilmu Komputer, Universitas Sriwijaya, Jl. Srijaya Negara, Bukit Besar, Ilir Barat I, Palembang, Sumatera Selatan, 30128

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