2018
DOI: 10.48550/arxiv.1805.05603
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Neural Classification of Malicious Scripts: A study with JavaScript and VBScript

Jack W. Stokes,
Rakshit Agrawal,
Geoff McDonald

Abstract: Malicious scripts are an important computer infection threat vector. Our analysis reveals that the two most prevalent types of malicious scripts include JavaScript and VBScript. The percentage of detected JavaScript attacks are on the rise. To address these threats, we investigate two deep recurrent models, LaMP (LSTM and Max Pooling) and CPoLS (Convoluted Partitioning of Long Sequences), which process JavaScript and VBScript as byte sequences. Lower layers capture the sequential nature of these byte sequences… Show more

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“…Stokes et al [53] present a DL-based detector of malicious JavaScript and VisualBasicScript code. They use the byte representation of the script as model input.…”
Section: Related Workmentioning
confidence: 99%
“…Stokes et al [53] present a DL-based detector of malicious JavaScript and VisualBasicScript code. They use the byte representation of the script as model input.…”
Section: Related Workmentioning
confidence: 99%