Litcius/Paper detail

Cross Platform IoT-Malware Family Classification Based on Printable Strings

Yen‐Ting Lee, Tao Ban, Tzu-Ling Wan, Shin‐Ming Cheng, Ryoichi Isawa, Takeshi Takahashi, Daisuke Inoue

202040 citationsDOI

Abstract

In this era of rapid network development, Internet of Things (IoT) security considerations receive a lot of attention from both the research and commercial sectors. With limited computation resource, unfriendly interface, and poor software implementation, legacy IoT devices are vulnerable to many infamous mal ware attacks. Moreover, the heterogeneity of IoT platforms and the diversity of IoT malware make the detection and classification of IoT malware even more challenging. In this paper, we propose to use printable strings as an easy-to-get but effective cross-platform feature to identify IoT malware on different IoT platforms. The discriminating capability of these strings are verified using a set of machine learning algorithms on malware family classification across different platforms. The proposed scheme shows a 99% accuracy on a large scale IoT malware dataset consisted of 120K executable fils in executable and linkable format when the training and test are done on the same platform. Meanwhile, it also achieves a 96% accuracy when training is carried out on a few popular IoT platforms but test is done on different platforms. Efficient malware prevention and mitigation solutions can be enabled based on the proposed method to prevent and mitigate IoT malware damages across different platforms.

Topics & Concepts

MalwareComputer scienceExecutableInternet of ThingsScheme (mathematics)Feature (linguistics)Computer securityMachine learningArtificial intelligenceOperating systemMathematicsLinguisticsPhilosophyMathematical analysisAdvanced Malware Detection TechniquesNetwork Security and Intrusion DetectionAnomaly Detection Techniques and Applications