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Yoo et al., 2014 - Google Patents

Two-phase malicious web page detection scheme using misuse and anomaly detection

Yoo et al., 2014

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Document ID
15491403865838958064
Author
Yoo S
Kim S
Choudhary A
Roy O
Tuithung T
Publication year
Publication venue
International Journal of Reliable Information and Assurance

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Snippet

Misuse detection method and anomaly detection method are widely used for the detection of malicious web pages. Both are based on machine learning. Misuse detection can detect known malicious web pages, but it cannot detect new ones. In contrast, anomaly detection …
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