Towards a better similarity algorithm for host-based intrusion detection system

Author:

Ouarda Lounis1,Malika Bourenane1,Brahim Bouderah2

Affiliation:

1. Computer Science Department, Industrial Computing and Networking Laboratory-RIIR, University Oran 1, Ahmed Ben Bella , 31000 , Oran , Algeria

2. Computer Science Department, University of M’sila , 28000 , M'Sila , Algeria

Abstract

Abstract An intrusion detection system plays an essential role in system security by discovering and preventing malicious activities. Over the past few years, several research projects on host-based intrusion detection systems (HIDSs) have been carried out utilizing the Australian Defense Force Academy Linux Dataset (ADFA-LD). These HIDS have also been subjected to various algorithm analyses to enhance their detection capability for high accuracy and low false alarms. However, less attention is paid to the actual implementation of real-time HIDS. Our principal objective in this study is to create a performant real-time HIDS. We propose a new model, “Better Similarity Algorithm for Host-based Intrusion Detection System” (BSA-HIDS), using the same dataset ADFA-LD. The proposed model uses three classifications to represent the attack folder according to certain criteria, the entire system call sequence is used. Furthermore, this work uses textual distance and compares five algorithms like Levenshtein, Jaro–Winkler, Jaccard, Hamming, and Dice coefficient, to classify the system call trace as attack or non-attack based on the notions of interclass decoupling and intra-class coupling. The model can detect zero-day attacks because of the threshold definition. The experimental results show a good detection performance in real-time for Levenshtein/Jaro–Winkler algorithms, 99–94% in detection rate, 2–5% in false alarm rate, and 3,300–720 s in running time, respectively.

Publisher

Walter de Gruyter GmbH

Subject

Artificial Intelligence,Information Systems,Software

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Feature Ranking and Selection for Intrusion Detection System Using Mathematical Measures;2024 IEEE Students Conference on Engineering and Systems (SCES);2024-06-21

2. Combining dynamic and static host intrusion detection features using variational long short-term memory recurrent autoencoder;Vestnik of Saint Petersburg University. Applied Mathematics. Computer Science. Control Processes;2024

3. Digital technologies for conducting dictations in Ukrainian;Ukrainian Journal of Educational Studies and Information Technology;2023-09-30

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