Autores
Ojo Olumide Ebenezer
Ta Hoang Thang
Gelbukh Alexander
Calvo Castro Francisco Hiram
Sidorov Grigori
Adebanji Olaronke Oluwayemisi
Título Automatic Hate Speech Detection Using CNN Model and Word Embedding
Tipo Revista
Sub-tipo CONACYT
Descripción Computación y Sistemas
Resumen Hatred spreading through the use of language on social media platforms and in online groups is becoming a well-known phenomenon. By comparing two text representations: bag of words (BoW) and pre-trained word embedding using GloVe, we used a binary classification approach to automatically process user contents to detect hate speech. The Naive Bayes Algorithm (NBA), Logistic Regression Model (LRM), Support Vector Machines (SVM), Random Forest Classifier (RFC) and the one-dimensional Convolutional Neural Networks (1D-CNN) are the models proposed. With a weighted macro-F1 score of 0.66 and a 0.90 accuracy, the performance of the 1D-CNN and GloVe embeddings was best among all the models. © 2022 Instituto Politecnico Nacional. All rights reserved.
Observaciones DOI 10.13053/CyS-26-2-4107
Lugar Ciudad de México
País Mexico
No. de páginas 1007-1013
Vol. / Cap. v. 26 no. 2
Inicio 2022-04-01
Fin
ISBN/ISSN