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Emotionally charged text classification with deep learning and sentiment semantic

Permanent link
https://hdl.handle.net/10037/23576
DOI
https://doi.org/10.1007/s00521-021-06542-1
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Date
2021-09-28
Type
Journal article
Tidsskriftartikkel
Peer reviewed

Author
Huan, Jeow Li; Sekh, Arif Ahmed; Quek, Chai; Prasad, Dilip K.
Abstract
Text classification is one of the widely used phenomena in different natural language processing tasks. State-of-the-art text classifiers use the vector space model for extracting features. Recent progress in deep models, recurrent neural networks those preserve the positional relationship among words achieve a higher accuracy. To push text classification accuracy even higher, multi-dimensional document representation, such as vector sequences or matrices combined with document sentiment, should be explored. In this paper, we show that documents can be represented as a sequence of vectors carrying semantic meaning and classified using a recurrent neural network that recognizes long-range relationships. We show that in this representation, additional sentiment vectors can be easily attached as a fully connected layer to the word vectors to further improve classification accuracy. On the UCI sentiment labelled dataset, using the sequence of vectors alone achieved an accuracy of 85.6%, which is better than 80.7% from ridge regression classifier—the best among the classical technique we tested. Additional sentiment information further increases accuracy to 86.3%. On our suicide notes dataset, the best classical technique—the Naíve Bayes Bernoulli classifier, achieves accuracy of 71.3%, while our classifier, incorporating semantic and sentiment information, exceeds that at 75% accuracy.
Publisher
Springer
Citation
Huan, Sekh, Quek, Prasad. Emotionally charged text classification with deep learning and sentiment semantic. Neural computing & applications (Print). 2021
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