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  1. Hadi Zamani, Muhamad Kamal Mohammed Amin
    MyJurnal
    Phishing detection is a momentous problem which can be deliberated by many
    researchers with numerous advanced approaches. Current anti-phishing mechanisms
    such as blacklist-base anti-phishing, Heuristic-based anti-phishing does suffer low
    detection accuracy and high false alarm. There is need for efficient mechanism to
    protect users from phishing websites. The purpose of this study is to investigate the
    capability of 6 machine learning algorithms i.e. Multi-Layer Perceptron (MLP), Support
    Vector Machine (SVM), Random Forest (RF), Decision Tree (DT), Logistic Regression
    (LR) and Naïve Bayes (NB) to classify phishing and non-phishing websites. These
    algorithms were trained with two different groups of training in WEKA environment
    and then were tested in terms of accuracy, precision, TP rate, and FP rate on a 3
    different sets of dataset which contains dissimilar portion of phishing and non-phishing
    instances. Results presented that Naïve Bayes classifier has better detection accuracy
    between other classifiers for predicting phishing websites while Multi-Layer
    Perceptron gave worst result in terms of detection accuracy. The result also showed
    that Support Vector machine has better FP rate between other classifier. In addition,
    Random Forest, Decision Tree, and Naïve Bayes can classify all phishing websites as
    phishing correctly. It means that TP rate is 100% for these classifiers. In conclusion this
    paper suggests using NB as the best classifier for predicting phishing and non-phishing
    websites.
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