Title of article :
Improving the Performance of Text Sentiment Analysis using Deep Convolutional Neural Network Integrated with Hierarchical Attention Layer
Author/Authors :
Sadr, Hossein Department of Computer Engineering - Islamic Azad University Rasht Branch, Rasht, Iran , Pedram, Mir Mohsen Department of Electrical and Computer Engineering - Faculty of Engineering - Kharazmi University, Tehran, Iran , Teshnehlab, Mohammad Industrial Control Center of Excellence - Faculty of Electrical and Computer Engineering - K. N. Toosi University, Tehran, Iran
Abstract :
Sentiment analysis is considered as one of the most essential tasks in the field of natural language processing
and cognitive science. In order to enhance the performance of sentiment analysis techniques, it is necessary to not only
classify the sentences based on their sentimental labels but also to extract the informative words that contribute to the
classification decision. In this regard, deep neural networks based on the attention mechanism have achieved
considerable progress in recent years. However, there is still a limited number of studies on attention mechanisms for
text classification and especially sentiment analysis. To fill this lacuna, a Convolution Neural Network (CNN) integrated
with attention layer is presented in this paper that is able to extract informative words and assign them higher weights
based on the context. In the attention layer, the proposed model employs a context vector and tries to measure the
importance of a word as the similarity between the context vector and word vector. Then, by integrating the new vectors
obtained from the attention layer into sentence vectors, the new generated vectors are used for classification. In order
to verify the performance of the proposed model, various experiments were conducted on the Stanford datasets. Based
on the results of the experiments, the proposed model not only significantly outperforms other existing studies but also
is able to consider the context to extract the informative words which can be considered as a value in analysis and
application.
Keywords :
Natural language processing , Sentiment analysis , Deep Learning , Convolutional neural network , Attention mechanism
Journal title :
International Journal of Information and Communication Technology Research