With the rapid growth of the number of devices on the Internet, malware poses a threat not only to the affected devices but also their ability to use said devices to launch attacks on the Internet ecosystem. Rapid malware classification is an important tools to combat that threat. One of the successful approaches to classification is based on malware images and deep learning. While many deep learning architectures are very accurate they usually take a long time to train. In this work we perform experiments on multiple well known, pre-trained, deep network architectures in the context of transfer learning. We show that almost all them classify malware accurately with a very short training period.
翻译:随着互联网上装置数量的迅速增长,恶意软件不仅对受影响的装置构成威胁,而且对其使用所述装置对互联网生态系统发动攻击的能力也构成威胁。快速恶意软件分类是打击这种威胁的重要工具。分类的成功办法之一是以恶意软件图像和深层学习为基础。许多深层学习结构非常准确,但通常需要很长时间才能进行训练。在这项工作中,我们在转让学习过程中对多个众所周知、预先训练过的深层网络结构进行了实验。我们显示,几乎所有这些系统都用非常短的培训时间准确分类恶意软件。