Informasi Umum

Kode

25.05.264

Klasifikasi

000 - General Works

Jenis

Karya Ilmiah - Thesis (S2) - Reference

Subjek

Machine Learning

Dilihat

68 kali

Informasi Lainnya

Abstraksi

Network security has become a global challenge that requires effective and innovative solutions. Intrusion Detection Systems (IDS) play a crucial role in protecting network infrastructures from evolving cyberattacks. The use of Machine Learning (ML) techniques in IDS offers high accuracy in detecting and identifying threats. However, challenges arise when dealing with imbalanced and highdimensional datasets. This paper introduces a novel approach for ML-based network intrusion detection by employing Random Oversampling (RO) to handle data imbalance and K-fold validation, along with Feature Selection and Extraction using Random Forest and Principal Component Analysis (PCA) to address dimensionality reduction and K-vold validation to ensures that the feature selection process (Random Forest + PCA) and model training are optimized to avoid overfitting. Additionally, each model undergoes Maximum Optimization using Optuna to enhance accuracy, precision, recall, F1-score, NIDS traffic parameters, and ROC Curve performance. The approach was evaluated on three benchmark datasets: UNSW-NB15, CIC-IDS2017, and CIC-IDS-2018. Each dataset was modeled using KNN, Logistic Regression, Decision Tree, Random Forest, GBM, XGBM, Adaboost, Light GBM, CatBoost, and Extra Tree algorithms to achieve a high accuracy of 99%. Notably, this method proves effective for large and imbalanced datasets, as evidenced by the CIC-IDS-2018 dataset, which contains over one million records. The results outperform state-of-theart models, marking a significant advancement in network intrusion detection. This flexible framework paves the way for further exploration of ML algorithms to enhance IDS effectiveness.<br /> <br /> Keywords: Machine Learning, Network Intrusion Detection System, Feature Extraction, Random Oversampling, Principal Component Analysis

Koleksi & Sirkulasi

Tersedia 1 dari total 1 Koleksi

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Pengarang

Nama RAMA WIJAYA SHIDDIQ
Jenis Perorangan
Penyunting Nyoman Bogi Aditya Karna, Indrarini Dyah Irawati
Penerjemah

Penerbit

Nama Universitas Telkom, S2 Teknik Elektro
Kota Bandung
Tahun 2025

Sirkulasi

Harga sewa IDR 0,00
Denda harian IDR 0,00
Jenis Non-Sirkulasi