Deep learning at the shallow end: Malware classification for non-domain experts

22 Jul 2018  ·  Quan Le, Oisín Boydell, Brian Mac Namee, Mark Scanlon ·

Current malware detection and classification approaches generally rely on time consuming and knowledge intensive processes to extract patterns (signatures) and behaviors from malware, which are then used for identification. Moreover, these signatures are often limited to local, contiguous sequences within the data whilst ignoring their context in relation to each other and throughout the malware file as a whole. We present a Deep Learning based malware classification approach that requires no expert domain knowledge and is based on a purely data driven approach for complex pattern and feature identification.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Malware Classification Microsoft Malware Classification Challenge CNN BiLSTM - Reb Sampl Accuracy (5-fold) 98.20 # 2
F1 score (5-fold) 96.05 # 1

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