元学习改进网络物理系统中的无监督入侵检测

T. Zoppi, M. Gharib, M. Atif, A. Bondavalli
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引用次数: 13

摘要

基于人工智能(AI)的分类器依赖于机器学习(ML)算法来提供系统架构师通常愿意集成到关键网络物理系统(cps)中的功能。然而,这种算法可能会对观测结果进行错误分类,对系统本身或对人类健康和环境产生潜在的有害影响。此外,cps可能会受到以前不知道的威胁,因此需要构建能够有效处理零日攻击的入侵探测器(IDs)。不同的研究旨在比较各种算法的错误分类,以确定最适合给定系统的算法。不幸的是,当系统要求严格时,即使是最合适的算法也可能显示出令人不满意的错误分类数量。一种可能的解决方案可能依赖于采用元学习器,它构建基础学习器的集合以减少错误分类,并广泛用于监督学习。相对于非元学习者,元学习者有减少错误分类的潜力:然而,误导基础学习者可能会让元学习者倾向于错误分类,因此需要通过经验评估仔细评估他们的行为。在这种程度上,在本文中,我们调查、扩展、经验评估和讨论了依赖于无监督算法集成来检测cps中的(零日)入侵的元学习方法。我们的实验比较是通过属于网络入侵检测和生物识别认证系统的公共数据集进行的,这是cps常见的ids。总的来说,我们选择了21个数据集,15个无监督算法和9种不同的元学习方法。结果允许讨论元学习在无监督异常检测中的适用性和适用性,比较基本算法和元学习器获得的度量分数。分析和讨论最终表明,在检测cps中的(零日)入侵时,采用元学习器如何显著减少错误分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meta-Learning to Improve Unsupervised Intrusion Detection in Cyber-Physical Systems
Artificial Intelligence (AI)-based classifiers rely on Machine Learning (ML) algorithms to provide functionalities that system architects are often willing to integrate into critical Cyber-Physical Systems (CPSs). However, such algorithms may misclassify observations, with potential detrimental effects on the system itself or on the health of people and of the environment. In addition, CPSs may be subject to threats that were not previously known, motivating the need for building Intrusion Detectors (IDs) that can effectively deal with zero-day attacks. Different studies were directed to compare misclassifications of various algorithms to identify the most suitable one for a given system. Unfortunately, even the most suitable algorithm may still show an unsatisfactory number of misclassifications when system requirements are strict. A possible solution may rely on the adoption of meta-learners, which build ensembles of base-learners to reduce misclassifications and that are widely used for supervised learning. Meta-learners have the potential to reduce misclassifications with respect to non-meta learners: however, misleading base-learners may let the meta-learner leaning towards misclassifications and therefore their behavior needs to be carefully assessed through empirical evaluation. To such extent, in this paper we investigate, expand, empirically evaluate, and discuss meta-learning approaches that rely on ensembles of unsupervised algorithms to detect (zero-day) intrusions in CPSs. Our experimental comparison is conducted by means of public datasets belonging to network intrusion detection and biometric authentication systems, which are common IDSs for CPSs. Overall, we selected 21 datasets, 15 unsupervised algorithms and 9 different meta-learning approaches. Results allow discussing the applicability and suitability of meta-learning for unsupervised anomaly detection, comparing metric scores achieved by base algorithms and meta-learners. Analyses and discussion end up showing how the adoption of meta-learners significantly reduces misclassifications when detecting (zero-day) intrusions in CPSs.
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