Please use this identifier to cite or link to this item: https://dspace.univ-ouargla.dz/jspui/handle/123456789/36797
Title: Semi-supervised learning-based IDS using active learning
Authors: KHALDI YACIN
Talbi, Maria Hibat Errahmane
Hadji, Soumia
Keywords: IDS
active learning
cybersecurity
CICIDS2017
Machine learning
Issue Date: 2024
Publisher: KASDI MERBAH UNIVERSITY OUARGLA
Citation: FACULTY OF N EW I NFORMATION AND C OMMUNICATION T ECHNOLOGIES
Abstract: Due to the increasing number of attacks, IDS systems are becoming more essential to protect networks and devices from malicious attacks. The current study aims to enhance Intrusion Detection System performance by utilizing the least amount of labeled instances.To achieve the objective of this study, a semi-supervised learning approach was used that combines machine learning and active learning method, using the CICIDS 2017 dataset. Our experimental evaluation shows the effectiveness of incorporating active learning into semi-supervised learning for IDS, as the proposed approach significantly outperforms traditional machine learning methods in terms of accuracy, precision, detection rate, and false positive rate.
‫بسبب‬‫الزيادة‬ ‫المستمرة‬ ‫في‬ ‫الهجمات‪،‬‬ ‫أصبحت‬ ‫أنظمة‬ ‫الكشف‬ ‫عن‬ ‫ا‬ ‫ل‬‫تسلل‬‫(‬ ‫‪IDS‬‬‫)‬‫ضرورية‬ ‫لحماية‬ ‫الشبكات‬ ‫واألجهزة‬ ‫من‬‫التهديدات‬ ‫الخبيثة‪.‬‬ ‫تهدف‬ ‫هذه‬ ‫الدراسة‬ ‫إلى‬ ‫تحسين‬ ‫أداء‬ ‫نظام‬ ‫الكشف‬ ‫عن‬ ‫االختراق‬ ‫باستخدام‬ ‫أقل‬ ‫عدد‬ ‫ممكن‬ ‫من‬ ‫العينات‬‫المصنفة‪.‬‬ ‫لتحقيق‬‫هذا‬ ‫الهدف‪،‬‬ ‫تم‬ ‫اعتماد‬ ‫نهج‬ ‫تعلم‬ ‫شبه‬ ‫خاضع‬ ‫لإلشراف‬ ‫يجمع‬ ‫بين‬ ‫التعلم‬ ‫اآللي‬ ‫والتعلم‬ ‫النشط‪،‬‬ ‫وذلك‬ ‫باستخدا‬ ‫م‬ ‫مجموعة‬‫بيانات‬ ‫‪2017‬‬ ‫‪CICIDS‬‬ ‫‪.‬‬ ‫أظهرت‬ ‫نتائج‬ ‫التقييم‬ ‫التجريبي‬ ‫أن‬ ‫دمج‬ ‫التعلم‬ ‫النشط‬ ‫في‬ ‫التعلم‬ ‫شبه‬ ‫الخاضع‬ ‫لإلشراف‬ ‫يعزز‬‫بشكل‬ ‫كبير‬ ‫فعالية‬ ‫نظام‬ ‫الكشف‬ ‫عن‬ ‫االختراق‪،‬‬ ‫متفوقًا‬ ‫على‬ ‫األساليب‬ ‫التقليدية‬ ‫للتعلم‬ ‫اآللي‬ ‫من‬ ‫حيث‬ ‫الدقة‪،‬‬ ‫ال‬ ‫ضبط‪،‬‬ ‫معدل‬‫اإلكتشاف‬ ‫و‬ ‫معدل‬‫االنذارات‬ ‫االيجابي‬ ‫ة‬‫الكاذبة‬ ‫‪.‬‬
Description: Network Administration and Security
URI: https://dspace.univ-ouargla.dz/jspui/handle/123456789/36797
Appears in Collections:Département d'informatique et technologie de l'information - Master

Files in This Item:
File Description SizeFormat 
Hadji - Talbi .pdfNetwork Administration and Security5,75 MBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.