基于ai的云安全模型

Xufei Zheng, Yonghui Fang
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引用次数: 13

摘要

随着恶意软件的构建从新手转向商业化,恶意软件攻击的频率大大增加,传统的杀毒软件无法检测到许多现代恶意软件,其日益增加的复杂性导致了许多恶意软件利用的漏洞。本文提出了一种基于人工免疫系统(AIS)的云安全模型作为云内服务来检测恶意软件,而不是基于本地的杀毒软件。我们讨论了基于云的云安全模型如何与传统扫描技术有效共存,以及这种新方法的优点和局限性。在该模型中,我们将主机代理中基于本地主机的检测器与云中的多个检测引擎相结合。该模型允许通过云中的多个检测引擎并行检测恶意软件。为了探索和验证这个想法,我们构建了一个原型,其中包括一个轻量级主机代理,网络中的多个检测引擎和一个基于ai的检测引擎。我们通过Arbor恶意软件库(AML)使用涵盖一年时间的1500个恶意软件样本数据集来评估系统的性能和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An AIS-based cloud security model
As the construction of malicious software has shifted from novices to commercial, malware attacks grew considerably in frequency and traditional antivirus software fails to detect many modern malware and its increasing complexity has resulted in vulnerabilities that are being exploited by many malwares. In this paper we advocate an artificial immune system (AIS) based cloud security model for malware detection as in-cloud service instead of local-based antivirus software. We discuss how cloud based cloud security model can effectively coexist with traditional scanning technologies, and what are the advantages and limitations of this new approach. In the model, we combine local-host based detector in host agent with multiple detection engines in the cloud. This model enables detection of malware by multiple detection engines in the cloud in parallel. To explore and validate the idea we construct a prototype which includes a lightweight host agent, multiple detection engines in the network, and an AIS-based detection engine. We evaluate the performance and efficacy of the system using a dataset of 1500 malware samples through Arbor Malware Library (AML) covering a one year period.
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