A cyberstalking-free global network with artificial intelligence approach Online publication date: Fri, 26-May-2023
by Nureni Ayofe Azeez; Odejinmi Oluwatobi Samuel
International Journal of Information and Computer Security (IJICS), Vol. 21, No. 1/2, 2023
Abstract: Cyber harassment is a cybercrime that has posed a great danger to social media users. This work aims at comparing the traditional classifiers and deep learning in detecting cyber harassment. Seven machine learning algorithms - Bernoulli NB, decision tree, Gaussian NB, isolation forest, K nearest neighbour - KNN, random forest and support vector machine were chosen from traditional machine learning algorithms while generalised regression neural network, long short-term memory, multilayer perceptron neural network, radial basis neural network were chosen from deep learning models. With dataset 1, support vector machine and generalised regression neural network had the highest accuracy of 0.9257 and 0.9280, respectively. For dataset 2, random forest and long-term short memory had the highest accuracy of 0.9369 and 0.9978, respectively. For dataset 3, isolation forest and multilayer perceptron neural network had the highest accuracy of 0.6113 and 0.8165, respectively. Finally, the ensemble results yielded an accuracy of 0.9146.
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