Abstract
With the capacity of contaminating a huge number of hosts, worms speak to a noteworthy danger to the Internet. The identification against Internet worms is generally an open issue. Web worms represent a genuine danger to PC security. Conventional methodologies utilizing marks to identify worms posture little risk to the zero day assaults. The focal point of this exploration is moving from utilizing mark examples to distinguishing the vindictive conduct showed by the Internet worms. This paper displays an original thought of separating stream level highlights that can distinguish worms from clean projects utilizing information mining method, for example, neural system classifier. Our approach demonstrated 97.90% recognition rate on Internet worms whose information was not utilized as a part of the model building process.
Cite
CITATION STYLE
Velvizhi, R., Vimala, D., & Mary Linda, I. (2019). Payload based internet worm disclosure using neural network. International Journal of Innovative Technology and Exploring Engineering, 8(9 Special Issue 3), 1601–1064. https://doi.org/10.35940/ijitee.I3228.0789S319
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