HOLMES: Real-Time APT Detection through Correlation of Suspicious Information Flows

Sadegh M. Milajerdi, Rigel Gjomemo, Birhanu Eshete, R. Sekar, V. Venkatakrishnan
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引用次数: 238

Abstract

In this paper, we present HOLMES, a system that implements a new approach to the detection of Advanced and Persistent Threats (APTs). HOLMES is inspired by several case studies of real-world APTs that highlight some common goals of APT actors. In a nutshell, HOLMES aims to produce a detection signal that indicates the presence of a coordinated set of activities that are part of an APT campaign. One of the main challenges addressed by our approach involves developing a suite of techniques that make the detection signal robust and reliable. At a high-level, the techniques we develop effectively leverage the correlation between suspicious information flows that arise during an attacker campaign. In addition to its detection capability, HOLMES is also able to generate a high-level graph that summarizes the attacker’s actions in real-time. This graph can be used by an analyst for an effective cyber response. An evaluation of our approach against some real-world APTs indicates that HOLMES can detect APT campaigns with high precision and low false alarm rate. The compact high-level graphs produced by HOLMES effectively summarizes an ongoing attack campaign and can assist real-time cyber-response operations.
HOLMES:通过可疑信息流的相关性进行实时APT检测
在本文中,我们提出了HOLMES系统,它实现了一种检测高级和持续威胁(apt)的新方法。HOLMES的灵感来自于对现实世界APT的几个案例研究,这些案例强调了APT行为者的一些共同目标。简而言之,HOLMES旨在产生一种检测信号,表明APT活动中存在一系列协调的活动。我们的方法解决的主要挑战之一是开发一套使检测信号鲁棒和可靠的技术。在高层次上,我们开发的技术有效地利用了攻击者活动期间出现的可疑信息流之间的相关性。除了检测能力之外,HOLMES还能够生成一个高级图形,实时总结攻击者的行为。分析人员可以使用这张图进行有效的网络响应。对我们的方法针对一些现实世界的APT进行的评估表明,HOLMES可以以高精度和低误报率检测APT活动。HOLMES生成的紧凑的高级图表有效地总结了正在进行的攻击活动,并可以协助实时网络响应行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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