A Formal Concept Analysis approach to hierarchical description of malware threats

IF 2 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Forensic Science International-Digital Investigation Pub Date : 2024-07-04 DOI:10.1016/j.fsidi.2024.301797
Manuel Ojeda-Hernández, Domingo López-Rodríguez, Ángel Mora
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Abstract

The problem of intelligent malware detection has become increasingly relevant in the industry, as there has been an explosion in the diversity of threats and attacks that affect not only small users, but also large organisations and governments. One of the problems in this field is the lack of homogenisation or standardisation in the nomenclature used by different antivirus programs for different malware threats. The lack of a clear definition of what a category is and how it relates to individual threats makes it difficult to share data and extract common information from multiple antivirus programs. Therefore, efforts to create a common naming convention and hierarchy for malware are important to improve collaboration and information sharing in this field.

Our approach uses as a tool the methods of Formal Concept Analysis (FCA) to model and attempt to solve this problem. FCA is an algebraic framework able to discover useful knowledge in the form of a concept lattice and implications relating to the detection and diagnosis of suspicious files and threats. The knowledge extracted using this mathematical tool illustrates how formal methods can help prevent new threats and attacks. We will show the results of applying the proposed methodology to the identification of hierarchical relationships between malware.

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对恶意软件威胁进行分级描述的形式概念分析方法
智能恶意软件检测问题在业界的重要性与日俱增,因为威胁和攻击的多样性急剧增加,不仅影响到小型用户,也影响到大型组织和政府。这一领域的问题之一是不同的杀毒软件对不同恶意软件威胁所使用的术语缺乏统一性或标准化。由于缺乏对类别的明确定义以及类别与单个威胁之间的关系,因此很难从多个杀毒软件中共享数据和提取共同信息。因此,努力为恶意软件创建一个通用的命名规范和层次结构,对于改善该领域的合作和信息共享非常重要。我们的方法使用了形式概念分析(FCA)的方法作为工具,来模拟并尝试解决这一问题。FCA 是一种代数框架,能够以概念网格的形式发现有用的知识,以及与检测和诊断可疑文件和威胁有关的含义。利用这一数学工具提取的知识说明了形式化方法如何有助于预防新的威胁和攻击。我们将展示将所提方法应用于识别恶意软件之间层次关系的结果。
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来源期刊
CiteScore
5.90
自引率
15.00%
发文量
87
审稿时长
76 days
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