Real-Time Phishing Detection Systems Driven by Neural Network
Keywords:
Phishing detection, neural networks, deep learningAbstract
Phishing efforts are email centric which keeps compromising the cybersecurity. As the attackers grew smarter traditional fishing detection system are ineffective. The objective of this paper is to look for artificial intelligence algorithms such as neural network that can improve new age phishing detection system. Feedforward, convolutional, RNNs are some of the new age AI based algorithms that can be used for real time email scanning.
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References
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