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Embedded YARA rules: strengthening YARA rules utilising fuzzy hashing and fuzzy rules for malware analysis

机译:嵌入式雅拉规则:利用模糊散列和模糊规则来加强雅拉规则进行恶意软件分析

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The YARA rules technique is used in cybersecurity to scan for malware, often in its default form, where rules are created either manually or automatically. Creating YARA rules that enable analysts to label files as suspected malware is a highly technical skill, requiring expertise in cybersecurity. Therefore, in cases where rules are either created manually or automatically, it is desirable to improve both the performance and detection outcomes of the process. In this paper, two methods are proposed utilising the techniques of fuzzy hashing and fuzzy rules, to increase the effectiveness of YARA rules without escalating the complexity and overheads associated with YARA rules. The first proposed method utilises fuzzy hashing referred to as enhanced YARA rules in this paper, where if existing YARA rules fails to detect the inspected file as malware, then it is subjected to fuzzy hashing to assess whether this technique would identify it as malware. The second proposed technique called embedded YARA rules utilises fuzzy hashing and fuzzy rules to improve the outcomes further. Fuzzy rules countenance circumstances where data are imprecise or uncertain, generating a probabilistic outcome indicating the likelihood of whether a file is malware or not. The paper discusses the success of the proposed enhanced YARA rules and embedded YARA rules through several experiments on the collected malware and goodware corpus and their comparative evaluation against YARA rules.
机译:yara规则技术用于网络安全,以扫描恶意软件,通常以其默认形式,其中规则是手动或自动创建的。创建yara规则,使分析师能够以疑似恶意软件为文件标记文件,这是一个高技术技能,需要网络安全的专业知识。因此,在手动创建规则或自动创建规则的情况下,期望改善该过程的性能和检测结果。在本文中,利用模糊散列和模糊规则的技术提出了两种方法,以提高雅拉规则的有效性而不升级与雅拉规则相关的复杂性和开销。第一个提出的方法在本文中利用模糊散列作为增强的雅拉规则,其中如果现有的yara规则无法将被检查的文件作为恶意软件检测到,则会对其进行模糊散列,以评估该技术是否将其作为恶意软件标识。第二种称为嵌入式雅拉规则的技术利用模糊散列和模糊规则进一步改善结果。模糊规则面容数据不精确或不确定,生成概率结果,指示文件是否是恶意软件的可能性。本文讨论了拟议的增强雅拉规则和嵌入式雅拉规则的成功通过收集恶意软件和美食语料库的几个实验及其对雅拉规则的比较评估。

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