Benchmark Static API Call Datasets for Malware Family Classification

Buket Gençaydın, Ceyda Nur Kahya, Ferhat Demirkiran, Berkant Düzgün, Aykut Çayir, Hasan Dag
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引用次数: 2

Abstract

Nowadays, malware and malware incidents are increasing daily, even with various antivirus systems and malware detection or classification methodologies. Machine learning techniques have been the main focus of the security experts to detect malware and determine their families. Many static, dynamic, and hybrid techniques have been presented for that purpose. In this study, the static analysis technique has been applied to malware samples to extract API calls, which is one of the most used features in machine/deep learning models as it represents the behavior of malware samples. Since the rapid increase and continuous evolution of malware affect the detection capacity of antivirus scanners, recent and updated datasets of malicious software became necessary to overcome this drawback. This paper introduces two new datasets: One with 14,616 samples obtained and compiled from VirusShare and one with 9,795 samples from VirusSample. In addition, benchmark results based on static API calls of malware samples are presented using several machine and deep learning models on these datasets. We believe that these two datasets and benchmark results enable researchers to test and validate their methods and approaches in this field.
恶意软件家族分类的基准静态API调用数据集
如今,恶意软件和恶意事件每天都在增加,即使有各种反病毒系统和恶意软件检测或分类方法。机器学习技术一直是安全专家检测恶意软件和确定其家族的主要焦点。为此,已经提出了许多静态、动态和混合技术。在本研究中,静态分析技术已应用于恶意软件样本以提取API调用,这是机器/深度学习模型中最常用的特征之一,因为它代表恶意软件样本的行为。由于恶意软件的快速增长和不断演变影响了防病毒扫描仪的检测能力,因此需要最新和更新的恶意软件数据集来克服这一缺点。本文介绍了两个新的数据集:一个是VirusShare获取和编译的14616个样本,另一个是VirusSample的9795个样本。此外,在这些数据集上使用几种机器和深度学习模型,给出了基于恶意软件样本静态API调用的基准测试结果。我们相信这两个数据集和基准结果使研究人员能够测试和验证他们在该领域的方法和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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