Abstract
Aspect-level sentiment classification is the aspect of determining the text in a given document and classifying it according to the sentiment polarity with respect to the objective. However, since annotation cost is very high, it might serve a big obstacle for this purpose. However, from a consumer point of view, this is highly effective in reading document-level labelled data such as reviews which are present online using neural network. The online reviews are packed with sentiment encoded text which can be analyzed using this proposed methodology. In this paper a Transfer Capsule Network model is used which has the ability to transfer the knowledge gained at document-level to the aspect-level to classify according to the sentiment detected in the text. As the first step, the sentence is broken down in semantic representations using aspect routing to form semantic capsule data of both document-level and aspect-level. This routing approach is extended to group the semantic capsules for transfer learning framework. The effectiveness of the proposed methodology are experimented and demonstrated to determine how superior they are to the other methodologies proposed.
References
Yukun Ma, Haiyun Peng, and Erik Cambria. 2018. Targeted aspect-based sentiment analysis via embedding commonsense knowledge into an attentive LSTM. In AAAI Conference on Artificial Intelligence (AAAI 2018).
Sinno Jialin Pan and Qiang Yang. 2010. A survey on transfer learning. IEEE Transactions on Knowledge and Data Engineering.
Diederik P. Kingma and Jimmy Ba. 2014. Adam: A method for stochastic optimization. Computer Science.
Zhu, Z., Peng, G., Chen, Y., & Gao, H. (2019). A convolutional neural network based on a capsule network with strong generalization for bearing fault diagnosis. Neurocomputing, 323, 62-75.
Xiang, C., Zhang, L., Tang, Y., Zou, W., & Xu, C. (2018). MS-CapsNet: A novel multi-scale capsule network. IEEE Signal Processing Letters, 25(12), 1850-1854.
Koresh, M. H. J. D., & Deva, J. (2019). Computer vision based traffic sign sensing for smart transport. Journal of Innovative Image Processing (JIIP), 1(01), 11-19.
Inokuma, Y., Yoshioka, S., & Fujita, M. (2010). A molecular capsule network: guest encapsulation and control of Diels–Alder reactivity. Angewandte Chemie International Edition, 49(47), 8912-8914.
Vijayakumar, T. (2019). Comparative study of capsule neural network in various applications. Journal of Artificial Intelligence, 1(01), 19-27.
Kim, Y., Wang, P., Zhu, Y., & Mihaylova, L. (2018, October). A capsule network for traffic speed prediction in complex road networks. In 2018 Sensor Data Fusion: Trends, Solutions, Applications (SDF) (pp. 1-6). IEEE.
Vijayakumar, T., & Vinothkanna, M. R. (2020). Capsule Network on Font Style Classification. Journal of Artificial Intelligence, 2(02), 64-76.
Iesmantas, T., & Alzbutas, R. (2018, June). Convolutional capsule network for classification of breast cancer histology images. In International Conference Image Analysis and Recognition (pp. 853-860). Springer, Cham.
Inokuma, Y., Ning, G. H., & Fujita, M. (2012). Reagent‐Installed Capsule Network: Selective Thiocarbamoylation of Aromatic Amines in Crystals with Preinstalled CH3NCS. Angewandte Chemie International Edition, 51(10), 2379-2381.
