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Performance Evaluation of String Based Malware Detection Methods

机译:基于字符串恶意软件检测方法的性能评估

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Conventional signature-based malware detection techniques have been used for many years because of their high detection rates and low false positive rates. However, signature-based detection techniques are regarded as ineffective due to their inability to detect unseen, new, polymorphic and metamorphic malware. To affect the weaknesses of the signature-based detection techniques, researchers have turned into behavioural-based detection techniques whereby a malware behavioural is constructed by capturing malware API calls during execution. In this context, API call sequences matching techniques are widely used to compute malware similarities. However, API call sequences matching techniques require large processing resources which make the process slow due to computational complexity and therefore, cannot scale to large API call sequences. To mitigate its problem, Longest Common Substring and Longest Common Subsequence have been used in this paper for strings matching in order to detect malware and their variants. In this paper we evaluate these two algorithms in the context of malware detection rate and false alarm rate.
机译:由于其高检测率和低误率,因此已经使用了传统的基于签名的恶意软件检测技术。然而,由于无法检测看不见的,新的,多态和变质恶意软件,签名的检测技术被认为是无效的。为了影响基于签名的检测技术的弱点,研究人员已经进入了基于行为的检测技术,由此通过在执行期间捕获恶意软件API呼叫来构造恶意软件行为。在此上下文中,API呼叫序列匹配技术被广泛用于计算恶意软件相似性。然而,API呼叫序列匹配技术需要大的处理资源,该资源使得由于计算复杂性而使过程慢,因此不能缩放到大的API呼叫序列。为了减轻其问题,本文用于匹配的符号以检测恶意软件及其变体,已经使用了最长的常见的子字符串和最长的常见子序列。在本文中,我们在恶意软件检测率和误报率的背景下评估这两个算法。

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