Visible to the public Optimal Thresholds for Anomaly-Based Intrusion Detection in Dynamical Environments

TitleOptimal Thresholds for Anomaly-Based Intrusion Detection in Dynamical Environments
Publication TypeConference Paper
Year of Publication2016
AuthorsAmin Ghafouri, Waseem Abbas, Aron Laszka, Yevgeniy Vorobeychik, Xenofon Koutsoukos
Conference Name2016 Conference on Decision and Game Theory for Security (GameSec 2016)
Date PublishedNovember
KeywordsRobust monitoring diagnosis and network control, Vanderbilt
Abstract

In recent years, we have seen a number of successful attacks against high-profile targets, some of which have even caused severe physical damage. These examples have shown us that resourceful and determined attackers can penetrate virtually any system, even those that are secured by the "air-gap." Consequently, in order to minimize the impact of stealthy attacks, defenders have to focus not only on strengthening the first lines of defense but also on deploying effective intrusion-detection systems. Intrusion-detection systems can play a key role in protecting sensitive computer systems since they give defenders a chance to detect and mitigate attacks before they could cause substantial losses. However, an over-sensitive intrusion-detection system, which produces a large number of false alarms, imposes prohibitively high operational costs on a defender since alarms need to be manually investigated. Thus, defenders have to strike the right balance between maximizing security and minimizing costs. Optimizing the sensitivity of intrusion detection systems is especially challenging in the case when multiple inter-dependent computer systems have to be defended against a strategic attacker, who can target computer systems in order to maximize losses and minimize the probability of detection. We model this scenario as an attacker-defender security game and study the problem of finding optimal intrusion detection thresholds.

URLhttps://cps-vo.org/node/38485
Citation KeyGhafouriAbbasLaszkaVorobeychikKoutsoukos16_OptimalThresholdsForAnomalyBasedIntrusionDetectionIn