Due to the increased frequency of phishing attacks, network security has gained the attention of researchers. In addition to this, large volumes of data are created every day, and these data include inappropriate and unrelated features that influence the accuracy of machine learning. There is therefore a need for a robust method of detecting phishing threats and improving detection accuracy. In this study, three classifiers were applied to improve the accuracy of a detection algorithm: decision tree, k-nearest neighbors (KNN), and support vector machine (SVM). Selecting the relevant features improves the detection accuracy for a target class and determines the class label with the greatest probability. The proposed work clearly describes how feature selection using the Chaotic Dragonfly Algorithm provides more accurate results than all other baseline classifiers. It also indicates the appropriate classifier to be applied when detecting phishing websites. Three publicly available datasets were used to evaluate the method. They are reliable datasets for training the model and measuring prediction accuracy.
CITATION STYLE
Alshammari, G., Alshammari, M., Almurayziq, T. S., Alshammari, A., & Alsaffar, M. (2023). Hybrid Phishing Detection Based on Automated Feature Selection Using the Chaotic Dragonfly Algorithm. Electronics (Switzerland), 12(13). https://doi.org/10.3390/electronics12132823
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