Metrics for Evaluating Alerts in Intrusion Detection Systems
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Date
2023-01-04
Journal Title
Journal ISSN
Volume Title
Publisher
international journal of network security and its application
Abstract
Network intrusions compromise the network’s confidentiality, integrity and availability of resources.
Intrusion detection systems (IDSs) have been implemented to prevent the problem. Although IDS
technologies are promising, their ability of detecting true alerts is far from being perfect. One problem is
that of producing large numbers of false alerts, which are termed as malicious by the IDS. In this paper we
propose a set of metrics for evaluating the IDS alerts. The metrics will identify false, low-level and
redundant alerts by mapping alerts on a vulnerability database and calculating their impact. The metrics
are calculated using a metric tool that we developed. We validated the metrics using Weyuker’s properties
and Kaner’s framework. The metrics can be considered as mathematically valid since they satisfied seven
of the nine Weyuker’s properties. In addition, they c
Description
Research article
Keywords
Intrusion detection systems, honeypot, firewall, alert correlation, fuzzy logic, security metrics
Citation
Kiruki, J. K., Muketha, G. M., & Kamau, G. N. (2023). Metrics for Evaluating Alerts in Intrusion Detection Systems.