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Shrivastava et al., 2020 - Google Patents

Adalward: a deep-learning framework for multi-class malicious webpage detection

Shrivastava et al., 2020

Document ID
9091130843447529577
Author
Shrivastava V
Damodaran S
Kamble M
Publication year
Publication venue
Journal of Cyber Security Technology

External Links

Snippet

ABSTRACT A global village is what the father of digital media and communications, Marshall McLuhan had dreamt of in the late 1970s. In June 2017, reaching over 51.7% of the global population, the Internet has made it a reality. In past couple of decades, with …
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