Detecting malware communities using socio-cultural cognitive mapping

Volume: 26, Issue: 3, Pages: 307 - 319
Published: Jan 2, 2020
Abstract
We apply a variation of socio-cultural cognitive mapping (SCM) to computer malware features explored previously by Saxe and Berlin that characterized malware binaries as benign or malicious based on 1024 program features derived from a deep neural network-based detection system. In this work, we model the features as attributes within a latent spatial domain using a weighted consensus graph representation to visualize and analyze the malware...
Paper Details
Title
Detecting malware communities using socio-cultural cognitive mapping
Published Date
Jan 2, 2020
Volume
26
Issue
3
Pages
307 - 319
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