HoneyIM:企业级网络中即时通讯恶意软件的快速检测和抑制

Mengjun Xie, Zhenyu Wu, Haining Wang
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引用次数: 33

摘要

由于即时通讯(IM)的普及,它已经成为最常用的恶意软件攻击媒介之一。与其他恶意软件不同,IM恶意软件通过利用当前受害者的联系人列表和玩社交工程技巧,可以直接找到并攻击下一个受害者。因此,IM恶意软件的传播很难通过传统方法检测和抑制。在企业级网络环境下,由于IM恶意软件的误报率高,且要求IM服务器位于被保护的网络内,因此上述解决方案无法有效防御IM恶意软件。在本文中,我们提出了一种新的IM恶意软件检测和抑制机制——HoneyIM,它可以保证在企业级网络中检测和阻止IM恶意软件几乎为零的误报。HoneyIM的检测是基于蜜罐的概念。HoneyIM利用恶意软件的传播特征,使用诱饵账户来诱捕IM恶意软件。在检测结果准确的前提下,对HoneyIM的抑制可以进行全网范围的阻断。此外,HoneyIM还可以实时向网络管理员发送攻击信息,以便快速进行系统隔离和恢复。HoneyIM的核心设计是通用的,既可以应用于被保护网络中使用企业IM服务,也可以应用于公共IM服务。基于开源IM客户端Pidgin和客户端蜜罐捕获,构建了HoneyIM原型,并通过仿真和实际实验验证了其有效性。我们的研究结果表明,HoneyIM在企业级网络中对IM恶意软件提供了有效的保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HoneyIM: Fast Detection and Suppression of Instant Messaging Malware in Enterprise-Like Networks
Instant messaging (IM) has been one of most frequently used malware attack vectors due to its popularity. Distinct from other malware, it is straightforward for IM malware to find and hit the next victim by exploiting the current victim's contact list and playing social engineering tricks. Thus, the spread of IM malware is much harder to detect and suppress through conventional approaches. The previous solutions are ineffective to defend against IM malware in an enterprise-like network environment, mainly because of high false positive rate and the requirement of the IM server being inside the protected network. In this paper, we propose a novel IM malware detection and suppression mechanism, HoneyIM, which guarantees almost zero false positive on detecting and blocking IM malware in an enterprise-like network. The detection of HoneyIM is based on the concept of honeypot. HoneyIM uses decoy accounts to trap IM malware by leveraging malware spreading characteristics. Fed with accurate detection results, the suppression of HoneyIM can conduct a network-wide blocking. In addition, HoneyIM delivers attack information to network administrators in real-time so that system quarantine and recovery can be quickly performed. The core design of HoneyIM is generic, and can be applied to the scenarios that either enterprise IM services or public IM services are used in the protected network. Based on open-source IM client Pidgin and client honeypot Capture, we build a prototype of HoneyIM and validate its efficacy through both simulations and real experiments. Our results show that HoneyIM provides effective protection against IM malware in enterprise-like networks.
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