Improve IDS Detection Efficiency based on Sequence-to-Sequence Model

Autor: Cheng-HsuangLo, 羅政翔
Rok vydání: 2019
Druh dokumentu: 學位論文 ; thesis
Popis: 107
To prevent users from malware intrusion, many kinds of defense system are used, especially Intrusion Detection System (IDS), an important role in cybersecurity area. Most of network managements use network-based IDS(NIDS) to alert network attacks. However, NIDS suffers variety and quick-changing malwares and NIDS cannot identify the attacks fast and correctly. Many machine learning algorithms are used in NIDS to improve the detection rate of malware, but to our knowledge, the efficiency is not fast and correct enough. We can improve the IDS detection efficiency by two methods: Novel dataset and suited algorithms. We proposed a new method based on deep learning technology and shown good performance for intrusion detection. We use random forest (RF) to rank and choose features in CICIDS2017 datasets, and embed the high dimension features to low dimension, then input these data to the deep neural network model called Sequence to Sequence. By the intrusion detection experiment, we finally get 99.93% on accuracy and 0.3% on false alert rate.
Databáze: Networked Digital Library of Theses & Dissertations