Sequential Embedding-based Attentive (SEA) classifier for malware classification

11 Feb 2023  ·  Muhammad Ahmed, Anam Qureshi, Jawwad Ahmed Shamsi, Murk Marvi ·

The tremendous growth in smart devices has uplifted several security threats. One of the most prominent threats is malicious software also known as malware. Malware has the capability of corrupting a device and collapsing an entire network. Therefore, its early detection and mitigation are extremely important to avoid catastrophic effects. In this work, we came up with a solution for malware detection using state-of-the-art natural language processing (NLP) techniques. Our main focus is to provide a lightweight yet effective classifier for malware detection which can be used for heterogeneous devices, be it a resource constraint device or a resourceful machine. Our proposed model is tested on the benchmark data set with an accuracy and log loss score of 99.13 percent and 0.04 respectively.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Malware Classification Microsoft Malware Classification Challenge SEA Accuracy (10-fold) 0.9912 # 7
LogLoss 0.0431 # 3
Macro F1 (10-fold) 0.9908 # 4

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