论文标题
binimg2vec:使用data2vec增强恶意软件二进制图像分类
BinImg2Vec: Augmenting Malware Binary Image Classification with Data2Vec
论文作者
论文摘要
Covid-19大流行刺激的快速数字化导致了更多的网络犯罪。现在,恶意软件即服务是网络罪犯的蓬勃发展业务。随着恶意软件活动的激增,对于网络辩护人来说,更多地了解他们手头的恶意软件样本,因为这些信息可以极大地影响他们在违规过程中的下一步行动。最近,研究人员展示了如何通过将恶意软件二进制文件转换为灰度图像,然后通过神经网络进行分类来完成恶意软件家庭分类。但是,大多数工作着重于研究不同神经网络体系结构对分类性能的影响。去年,研究人员表明,通过自我监督的学习增强监督学习可以提高绩效。甚至最近,Data2Vec被提议为一种态度的自我监督框架,以训练神经网络。在本文中,我们提出了Binimg2Vec,这是一个培训恶意软件二进制图像分类器的框架,该框架既包含了自我监督的学习和监督学习,又可以产生一个模型,该模型始终如一地优于仅通过监督学习而受过训练的模型。我们能够在分类性能方面提高4%,并且在多个运行中降低了0.5%的性能差异。我们还展示了我们的框架如何产生可以很好地聚类的嵌入,从而促进模型的解释。
Rapid digitalisation spurred by the Covid-19 pandemic has resulted in more cyber crime. Malware-as-a-service is now a booming business for cyber criminals. With the surge in malware activities, it is vital for cyber defenders to understand more about the malware samples they have at hand as such information can greatly influence their next course of actions during a breach. Recently, researchers have shown how malware family classification can be done by first converting malware binaries into grayscale images and then passing them through neural networks for classification. However, most work focus on studying the impact of different neural network architectures on classification performance. In the last year, researchers have shown that augmenting supervised learning with self-supervised learning can improve performance. Even more recently, Data2Vec was proposed as a modality agnostic self-supervised framework to train neural networks. In this paper, we present BinImg2Vec, a framework of training malware binary image classifiers that incorporates both self-supervised learning and supervised learning to produce a model that consistently outperforms one trained only via supervised learning. We were able to achieve a 4% improvement in classification performance and a 0.5% reduction in performance variance over multiple runs. We also show how our framework produces embeddings that can be well clustered, facilitating model explanability.