Please use this identifier to cite or link to this item: https://dspace.ctu.edu.vn/jspui/handle/123456789/47779
Title: A two-channel model for representation learning in Vietnamese sentiment classification problem
Authors: Nguyen, Hoang Quan
Vu, Ly
Nguyen, Quang Uy
Keywords: Sentiment analysis
Deep learning
Word to vector (Word2vec)
Parts of speech (POS)
Representation learning
Issue Date: 2020
Series/Report no.: Journal of Computer Science and Cybernetics;Vol. 36, No. 04 .- P.305–323
Abstract: Sentiment classification (SC) aims to determine whether a document conveys a positive or negative opinion. Due to the rapid development of the digital world, SC has become an impor tant research topic that affects to many aspects of our life. In SC based on machine learning, the representation of the document strongly influences on its accuracy. Word embedding (WE)-based techniques, i.e., Word2vec techniques, are proved to be beneficial techniques to the SC problem. However, Word2vec is often not enough to represent the semantic of Vietnamese documents due to the complexity of semantics and syntactic structure. In this paper, we propose a new representation learning model called a two-channel vector to learn a higher-level feature of a document for SC. Our model uses two neural networks to learn both the semantic feature and the syntactic feature. The semantic feature is learnt using Word2vec and the syntactic feature is learnt through Parts of Speech tag (POS). Two features are then combined and input to a Softmax function to make the final classification. We carry out intensive experiments on 4 recent Vietnamese sentiment datasets to evaluate the performance of the proposed architecture. The experimental results demonstrate that the proposed model can enhance the accuracy of SC problems compared to two single models and three state-of-the-art ensemble methods.
URI: https://dspace.ctu.edu.vn/jspui/handle/123456789/47779
ISSN: 1813-9663
Appears in Collections:Tin học và Điều khiển học (Journal of Computer Science and Cybernetics)

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