Convolutional Neural Network Equipped with Attention Mechanism and Transfer Learning for Enhancing Performance of Sentiment Analysis

Publish Year: 1400
نوع سند: مقاله ژورنالی
زبان: English
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JR_JADM-9-2_001

تاریخ نمایه سازی: 20 مرداد 1400

Abstract:

With the rapid development of textual information on the web, sentiment analysis is changing to an essential analytic tool rather than an academic endeavor and numerous studies have been carried out in recent years to address this issue. By the emergence of deep learning, deep neural networks have attracted a lot of attention and become mainstream in this field. Despite the remarkable success of deep learning models for sentiment analysis of text, they are in the early steps of development and their potential is yet to be fully explored. Convolutional neural network is one of the deep learning methods that has been surpassed for sentiment analysis but is confronted with some limitations. Firstly, convolutional neural network requires a large number of training data. Secondly, it assumes that all words in a sentence have an equal contribution to the polarity of a sentence. To fill these lacunas, a convolutional neural network equipped with the attention mechanism is proposed in this paper which not only takes advantage of the attention mechanism but also utilizes transfer learning to boost the performance of sentiment analysis. According to the empirical results, our proposed model achieved comparable or even better classification accuracy than the state-of-the-art methods.

Authors

H. Sadr

Department of Computer Engineering, Rasht Branch, Islamic Azad University, Rasht, Iran.

Mir M. Pedram

Department of Electrical and Computer Engineering Faculty of Engineering, Kharazmi University, Tehran, Iran.

M. Teshnehlab

Industrial Control Center of Excellence, Faculty of Electrical and Computer Engineering, K. N. Toosi University, Tehran, Iran.

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  • S. A. Salloum, R. Khan, and K. Shaalan, "A survey ...
  • A. Yadav and D. K. Vishwakarma, "Sentiment analysis using deep ...
  • M. I. Prabha and G. U. Srikanth, "Survey of sentiment ...
  • O. Habimana, Y. Li, R. Li, X. Gu, and G. ...
  • X. Xie, S. Ge, F. Hu, M. Xie, and N. ...
  • H. Sadr, M. N. Soleimandarabi, M. Pedram, and M. Teshnelab, ...
  • Z. Yang, D. Yang, C. Dyer, X. He, A. Smola, ...
  • Z. Zhang, Y. Zou, and C. Gan, "Textual sentiment analysis ...
  • H. Sadr, M. M. Pedram, and M. Teshnelab, "Improving the ...
  • R. Liu, Y. Shi, C. Ji, and M. Jia, "A ...
  • Presentation of an efficient automatic short answer grading model based on combination of pseudo relevance feedback and semantic relatedness measures [مقاله ژورنالی]
  • Exploring the Efficiency of Topic-Based Models in Computing Semantic Relatedness of Geographic Terms [مقاله ژورنالی]
  • M. Kuta, M. Morawiec, and J. Kitowski, "Sentiment Analysis with ...
  • Y. Kim, "Convolutional neural networks for sentence classification," arXiv preprint ...
  • X. Zhang, J. Zhao, and Y. LeCun, "Character-level convolutional networks ...
  • W. Yin, H. Schütze, B. Xiang, and B. Zhou, "Abcnn: ...
  • N. Kalchbrenner, E. Grefenstette, and P. Blunsom, "A convolutional neural ...
  • R. Socher, B. Huval, C. D. Manning, and A. Y. ...
  • R. Socher et al., "Recursive Deep Models for Semantic Compositionality ...
  • H. Sadr, M. M. Pedram, and M. Teshnehlab, "A Robust ...
  • H. Sadr, M. M. Pedram, and M. Teshnehlab, "Multi-View Deep ...
  • Y. Wang, M. Huang, and L. Zhao, "Attention-based LSTM for ...
  • Z. Yuan, S. Wu, F. Wu, J. Liu, and Y. ...
  • T. Semwal, P. Yenigalla, G. Mathur, and S. B. Nair, ...
  • F. Zhuang et al., "A comprehensive survey on transfer learning," ...
  • A. Krizhevsky, I. Sutskever, and G. E. Hinton, "Imagenet classification ...
  • P. Sermanet, D. Eigen, X. Zhang, M. Mathieu, R. Fergus, ...
  • T. Mikolov, K. Chen, G. Corrado, and J. Dean, "Efficient ...
  • J. Pennington, R. Socher, and C. Manning, "Glove: Global vectors ...
  • P. Bojanowski, E. Grave, A. Joulin, and T. Mikolov, "Enriching ...
  • A. Kumar et al., "Ask me anything: Dynamic memory networks ...
  • A. Maas, R. E. Daly, P. T. P. am, D. ...
  • B. Pang and L. Lee, "Seeing stars: Exploiting class relationships ...
  • C. Du and L. Huang, "Sentiment Classification Via Recurrent Convolutional ...
  • F. Kokkinos and A. Potamianos, "Structural attention neural networks for ...
  • نمایش کامل مراجع