Content area

Abstract

Autonomic Intrusion Detection Systems (AIDS) are sophisticated software systems designed to autonomously and adaptively identify and respond to security threats and intrusions in computer networks or systems. One of the fundamental challenges in intrusion detection research lies in the limited availability and scope of publicly available datasets. The proposed research aims to address data-related gaps with autonomic and traditional intrusion detection systems by describing a comprehensive approach to investigate the impact and potential of data augmentation. The goal is to explore various data augmentation techniques, assess their effectiveness in introducing variability, and evaluate their impact on the performance of neural-based intrusion detection models.

The concept of Computational Knowledge Structures referred to as K-structures, is introduced. K-structures are foundational models representing the knowledge learned by extracting high-level features from related data; creating atomic blocks of knowledge that can be combined into a generalized machine learning model called an aggregate model. The resulting aggregate model is known as an ensemble model, where instead of aggregating "learners", data and knowledge are aggregated to create a generalized machine learning (ML) model that blends the characteristics of signature-based and anomaly-based intrusion detection systems. Resulting in IDSs that are more adaptable, robust, and capable of handling the complexities of real-world network environments.

This study employs quantitative methods to assess the effectiveness, efficiency, and complexity of neural-based intrusion detection systems (IDSs). Through practical implementations of IDSs, empirical analysis was conducted to compare the proposed methods to ensure realistic, reliable, and widely applicable results. The significance of this research lies in its potential to substantially improve the effectiveness of the system by implementing end-to-end network intrusion detection to match the ever evolving tactics of intruders.

Details

1010268
Business indexing term
Title
A Framework for Modular Knowledge Composition in Network Intrusion Detection Systems
Author
Number of pages
230
Publication year
2025
Degree date
2025
School code
0132
Source
DAI-B 86/12(E), Dissertation Abstracts International
ISBN
9798280760462
Committee member
Iannucci, Stefano; Luke, Edward A.; Lim, Hyeona
University/institution
Mississippi State University
Department
Department of Computer Science and Engineering
University location
United States -- Mississippi
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
31839948
ProQuest document ID
3217933305
Document URL
https://www.proquest.com/dissertations-theses/framework-modular-knowledge-composition-network/docview/3217933305/se-2?accountid=208611
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Database
ProQuest One Academic