Artificial intelligence techniques for phishing detection

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Abstract

The objective of this undertaking is to apply neural systems to phishing email recognition and assess the adequacy of this methodology. We structure the list of capabilities, process the phishing dataset, and execute the Neural Network frameworks. we analyze its exhibition against that of other real Artificial Intelligence Techniques – DT, K-nearest, NB and SVM machine.. The equivalent dataset and list of capabilities are utilized in the correlation. From the factual examination, we infer that Neural Networks with a proper number of concealed units can accomplish acceptable precision notwithstanding when the preparation models are rare. Additionally, our element determination is compelling in catching the qualities of phishing messages, as most AI calculations can yield sensible outcomes with it.

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Arivukarasi, M., & Antonidoss, A. (2019). Artificial intelligence techniques for phishing detection. International Journal of Innovative Technology and Exploring Engineering, 8(11), 2330–2335. https://doi.org/10.35940/ijitee.I8499.0981119

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