面向防病毒云计算的恶意软件签名自动检测模型

Lihua Wu, Yu Zhang
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引用次数: 7

摘要

安全供应商正面临着战胜恶意软件复杂性的严重问题。随着互联网上恶意软件的流行和种类的增多,生成恶意软件的签名以供反病毒扫描引擎检测成为一项重要的响应式安全功能。但是,由于反病毒安全产品的签名文件比较大,会消耗大量的PC机内存和资源。AV云计算成为解决这一问题的流行解决方案。本文提出了一种新的反病毒云恶意软件签名自动发现系统(AMSDS),从静态和动态两个方面生成恶意软件签名。我们在百万级样本上的实验表明,AMSDS优于工业界和学术界的大多数自动签名生成技术。恶意软件签名的检测模型可以为反病毒技术的改进和增强提供研究思路,特别是在检测和预防未知病毒或恶意软件签名方面。
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Automatic Detection Model of Malware Signature for Anti-virus Cloud Computing
Security vendors are facing a serious problem of defeating the complexity of malwares. With the popularity and the variety of malware over the Internet, generating their signatures for detecting via anti-virus (AV) scan engines becomes an important reactive security function. However, AV security products consume much of the PC memory and resources due to their large signature files. AV cloud computing becomes a popular solution for this problem. In this paper, a novel automatic malware signature discovery system for AV cloud (AMSDS) is proposed to generate malware signatures from both static and dynamic aspects. Our experiment on millions-scale samples indicates that AMSDS outperforms most automatic signature generation techniques of both industry and academia. The detection model of malware signature can provides research thinking for anti-virus technology to improve and enhance, especially on detecting and preventing unknown viruses or malware signature.
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