Text Classification using Gated Fusion of n-gram Features and Semantic Features



Document title: Text Classification using Gated Fusion of n-gram Features and Semantic Features
Journal: Computación y sistemas
Database:
System number: 000560457
ISSN: 1405-5546
Authors: 1
1
1
Institutions: 1Samsung R&D Institute India, Bangalore. India
Year:
Season: Jul-Sep
Volumen: 23
Number: 3
Pages: 1015-1020
Country: México
Language: Inglés
Document type: Artículo
English abstract We introduce a novel method for text classification based on gated fusion of n-gram features and semantic features of the text. The parallel CNN network captures the n-gram relation between the words based on the filter size, primarily short distance multiword relations. Whereas for semantic relationship, universal sentence encoder or BiLSTM is used. Gated fusion is used to combine n-gram and semantic features. The model is evaluated on 4 commonly used benchmark datasets (MR, TREC, AG-News and SUBJ), which includes sentiment analysis and question classification. The proposed method is able to surpass the existing state-of-the-art DNN architectures for text classification on these datasets.
Disciplines: Ciencias de la computación
Keyword: Inteligencia artificial
Keyword: Text classification,
Convolutional neural network,
Universal sentence encoder,
BiLSTM,
Artificial intelligence
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