Optimizing YouTube Spam Detection with Ensemble Deep Learning Techniques

A stacking classifier, an ensemble approach towards spam detection that combines various deep learning techniques such as LSTM, CNN, Attention, and a hybrid model of LSTM-CNN to output a classification using a DNN as the meta classifier is proposed.

Thu Jan 18 2024
by A. Ilavendhan, Srinivasa Narayanan. A and others
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A stacking classifier, an ensemble approach towards spam detection that combines various deep learning techniques such as LSTM, CNN, Attention, and a hybrid model of LSTM-CNN to output a classification using a DNN as the meta classifier is proposed.


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