数据驱动的物理安全和内部威胁检测框架

Vasileios Mavroeidis, Kamer Vishi, A. Jøsang
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引用次数: 16

摘要

本文提出了一种改进物理安全和内部威胁检测的本体框架和方法——粒子群算法。PSO可以促进取证数据分析,并通过利用基于规则的异常检测来主动减轻内部威胁。在很多情况下,基于规则的异常检测可以检测员工对组织安全策略的偏离。此外,PSO可以被视为一种安全来源解决方案,因为它能够完全重建攻击模式。可以进一步分析出处图,以识别欺骗行为,并克服可能导致错误决策的分析错误,例如错误归因。此外,这些信息可以用来丰富可用的情报(关于入侵尝试),这些情报可以形成用例来检测和修复系统中的限制,例如在许多情况下表明物理安全体系结构中的弱点的松散耦合的来源图。最终,通过用例对框架进行验证,并证明PS0可以在物理安全和内部威胁检测方面改善组织的安全状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Data-Driven Physical Security and Insider Threat Detection
This paper presents PSO, an ontological framework and a methodology for improving physical security and insider threat detection. PSO can facilitate forensic data analysis and proactively mitigate insider threats by leveraging rule-based anomaly detection. In all too many cases, rule-based anomaly detection can detect employee deviations from organizational security policies. In addition, PSO can be considered a security provenance solution because of its ability to fully reconstruct attack patterns. Provenance graphs can be further analyzed to identify deceptive actions and overcome analytical mistakes that can result in bad decision-making, such as false attribution. Moreover, the information can be used to enrich the available intelligence (about intrusion attempts) that can form use cases to detect and remediate limitations in the system, such as loosely-coupled provenance graphs that in many cases indicate weaknesses in the physical security architecture. Ultimately, validation of the framework through use cases demonstrates and proves that PS0 can improve an organization's security posture in terms of physical security and insider threat detection.
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