A comprehensive meta-analysis of efficiency and effectiveness in the detection community

Amine Daoud, Mohamed and Ahmed Mokhtar Mostefaoui, Sid and Ouared, Abdelkader and Madani Meghazi, Hadj and Mebarek, Bendaoud and Bouguessa, Abdelkader and Ahmed, Hasan (2025) A comprehensive meta-analysis of efficiency and effectiveness in the detection community. Journal of Computer Languages, 82: 101314. ISSN 2590-1184

Full text not available from this repository.

Abstract

Creating an intrusion detection system (IDS) is a prominent area of research that continuously draws attention from both scholars and practitioners who tirelessly innovate new solutions. The complexity of IDS naturally escalates alongside technological advancements, whether they are manually implemented within security infrastructures or elaborated upon in academic literature. However, accessing and comparing these IDS solutions requires sifting through a multitude of hypotheses presented in research papers, which is a laborious and error-prone endeavor. Consequently, many researchers encounter difficulties in replicating results or reanalyzing published IDSs. This challenge primarily arises due to the absence of a standardized process for elucidating IDS methodologies. In response, this paper advocates for a framework aimed at enhancing the reproducibility of IDS outcomes, thereby enabling their seamless reuse across diverse cybersecurity contexts, benefiting both end-users and experts alike. The proposed framework introduces a descriptive language for the precise specification of IDS descriptions. Additionally, a model repository facilitates the sharing and reusability of IDS configurations. Lastly, through a case study, we showcase the effectiveness of our framework in addressing challenges associated with data acquisition and knowledge organization and sharing. Our results demonstrate satisfactory prediction accuracy for configuration reuse and precise identification of reusable components.

Item Type:
Journal Article
Journal or Publication Title:
Journal of Computer Languages
ID Code:
233643
Deposited By:
Deposited On:
13 Nov 2025 12:45
Refereed?:
Yes
Published?:
Published
Last Modified:
13 Nov 2025 12:45