Autores
Gómez Adorno Helena Montserrat
Fuentes Alba Roddy
Markov Ilia
Sidorov Grigori
Gelbukh Alexander
Título A convolutional neural network approach for gender and language variety identification
Tipo Revista
Sub-tipo JCR
Descripción Journal of Intelligent & Fuzzy Systems
Resumen We present a method for gender and language variety identification using a convolutional neural network (CNN). We compare the performance of this method with a traditional machine learning algorithm-support vector machines (SVM) trained on character n-grams (n = 3-8) and lexical features (unigrams and bigrams of words), and their combinations. We use a single multi-labeled corpus composed of news articles in different varieties of Spanish developed specifically for these tasks. We present a convolutional neural network trained on word- and sentence-level embeddings architecture that can be successfully applied to gender and language variety identification on a relatively small corpus (less than 10,000 documents). Our experiments show that the deep learning approach outperforms a traditional machine learning approach on both tasks, when named entities are present in the corpus. However, when evaluating the performance of these approaches reducing all named entities to a single symbol NE to avoid topic-dependent features, the drop in accuracy is higher for the deep learning approach.
Observaciones DOI 10.3233/JIFS-179032
Lugar Amsterdam
País Paises Bajos
No. de páginas 4845-4855
Vol. / Cap. v. 36 no. 5
Inicio 2019-05-14
Fin
ISBN/ISSN