Algebraic Structures Induced by the Insertion and Detection of Malware

A. M. Cañadas, Odette M. Mendez, Juan David Camacho Vega
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Abstract

Since its introduction, researching malware has had two main goals. On the one hand, malware writers have been focused on developing software that can cause more damage to a targeted host for as long as possible. On the other hand, malware analysts have as one of their main purposes the development of tools such as malware detection systems (MDS) or network intrusion detection systems (NIDS) to prevent and detect possible threats to the informatic systems. Obfuscation techniques, such as the encryption of the virus’s code lines, have been developed to avoid their detection. In contrast, shallow machine learning and deep learning algorithms have recently been introduced to detect them. This paper is devoted to some theoretical implications derived from these investigations. We prove that hidden algebraic structures as equipped posets and their categories of representations are behind the research of some infections. Properties of these categories are given to provide a better understanding of different infection techniques.
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恶意软件插入与检测引发的代数结构
自从恶意软件问世以来,研究它一直有两个主要目标。一方面,恶意软件编写者一直专注于开发能够尽可能长时间地对目标主机造成更多损害的软件。另一方面,恶意软件分析人员的主要目的之一是开发工具,如恶意软件检测系统(MDS)或网络入侵检测系统(NIDS),以防止和检测信息系统可能面临的威胁。混淆技术,例如对病毒的代码行进行加密,已经被开发出来以避免它们被发现。相比之下,最近引入了浅机器学习和深度学习算法来检测它们。本文致力于从这些研究中得到一些理论启示。我们证明了隐藏代数结构作为装备偏序集及其表征范畴是一些感染研究的基础。给出这些类别的性质是为了更好地了解不同的感染技术。
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