Abstract
Objective: In order to respond to the demand of academia and industry for scientific malware classification methods Method: based on the existing work, this study draws on the advantages of Kaspersky's relatively rigorous multi-segment classification and naming, and is carried out according to the idea of emphasizing mutual exclusivity, complete coverage, and convergence, and is combined with the threat risk behavior labels. Results: A set of malware classification framework that conforms to MECE principles, converges classification, and is compatible with industrial fact classification has been formed. Implication: It can effectively support security defense and governance.
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