Machine learning has become an appealing signature-less approach to detect and classify malware because of its ability to generalize to never-before-seen samples and to handle large volumes of data. While traditional feature-based approaches rely on the manual design of hand-crafted features based on experts knowledge of the domain, deep learning approaches replace the manual feature engineering process by an underlying system, typically consisting of a neural network with multiple layers, that perform both feature learning and classification altogether. However, the combination of both approaches could substantially enhance detection systems. In this paper we present an hybrid approach to address the task of malware classification by fusing multiple types of features defined by experts and features learned through deep learning from raw data. In particular, our approach relies on deep learning to extract N-gram like features from the assembly language instructions and the bytes of malware, and texture patterns and shapelet-based features from malware\'s grayscale image representation and structural entropy, respectively. These deep features are later passed as input to a gradient boosting model that combines the deep features and the hand-crafted features using an early-fusion mechanism. The suitability of our approach has been evaluated on the Microsoft Malware Classification Challenge benchmark and results show that the proposed solution achieves state-of-the-art performance and outperforms gradient boosting and deep learning methods in the literature.
翻译:机器学习已成为一种具有吸引力的、没有标志性的检测和分类恶意软件的方法,因为它能够推广到从未见过的样本,并能够处理大量数据。传统的基于特征的方法依赖基于该领域专家知识的手工制作特征的手工设计,而深层次学习方法则用一个基础系统取代手工特征工程过程,该系统通常由具有多个层次的神经网络组成,既能进行特征学习,又能进行结构分类。但是,这两种方法的结合可以大大加强探测系统。在本文件中,我们提出了一个混合方法,通过使用专家界定的多种特征和从原始数据深层学习而学到的特征来解决恶意软件分类的任务。特别是,我们的方法依靠深层学习,从组装语言说明中提取N克特征,从恶意软件的字串中提取N克特征,以及分别从恶意软件的灰度图像显示灰度图像和结构图示中提取的纹理模型。这些深层特征后来被传递为一种将深层特征和手工制作的特征结合在一起的梯度增强模型。我们的方法依靠从早期整合机制中汲取的多种特征和从原始数据中汲取的特征。我们的方法依靠从组装语言的深度学习来提取的Ngram。我们的方法的定位方法的适合性在变化模型和推进模型中展示中展示了我们的方法,在变式的变式的变换式的变式的变式方法中展示了变式的变式方法,在了变式的变式的变式式式式式式式式式式方法。