Abstract
One of the most common applications of deep learning algorithms is sentiment analysis. This study delivers a better performing and efficient automated feature extraction technique when compared to previous approaches. Traditional methodologies like surface approach will use the complicated manual feature extraction process, which forms the fundamental aspect of feature driven advancements. These methodologies serve as a strong baseline to determine the predictability of the features, and it will also serve as the perfect platform for integrating the deep learning techniques. The proposed research work has introduced a deep learning technique, which can be incorporated with feature-extraction. Moreover, this research work includes three crucial parts. The first step is the development of sentiment classifiers with deep learning, which can be used as the baseline for comparing the performance. This is followed by the use of ensemble techniques and information merger to obtain the final set of sources. As the third step, a combination of ensembles is introduced to categorize various models along with the proposed model. Finally experimental analysis is carried out and the performance is recorded to determine the best model with respect to the deep learning baseline.
References
- Adam, Edriss Eisa Babikir. "Evaluation of Fingerprint Liveness Detection by Machine Learning Approach-A Systematic View." Journal of ISMAC 3, no. 01 (2021): 16-30.
- Dashtipour, K., Ieracitano, C., Morabito, F. C., Raza, A., & Hussain, A. (2021). An Ensemble Based Classification Approach for Persian Sentiment Analysis. In Progresses in Artificial Intelligence and Neural Systems (pp. 207-215). Springer, Singapore.
- Vijayakumar, T., Mr R. Vinothkanna, and M. Duraipandian. "Fusion based Feature Extraction Analysis of ECG Signal Interpretation–A Systematic Approach." Journal of Artificial Intelligence 3, no. 01 (2021): 1-16.
- Sohangir, S., Wang, D., Pomeranets, A., & Khoshgoftaar, T. M. (2018). Big Data: Deep Learning for financial sentiment analysis. Journal of Big Data, 5(1), 1-25.
- Chakrabarty, Navoneel, and Sanket Biswas. "Navo Minority Over-sampling Technique (NMOTe): A Consistent Performance Booster on Imbalanced Datasets." Journal of Electronics 2, no. 02 (2020): 96-136.
- Chakraborty, K., Bhattacharyya, S., Bag, R., & Hassanien, A. E. (2018, February). Comparative sentiment analysis on a set of movie reviews using deep learning approach. In International Conference on Advanced Machine Learning Technologies and Applications (pp. 311-318). Springer, Cham.
- Hariharakrishnan, Jayaram, and N. Bhalaji. "Adaptability Analysis of 6LoWPAN and RPL for Healthcare applications of Internet-of-Things." Journal of ISMAC 3, no. 02 (2021): 69-81.
- Hanafy, M., Khalil, M. I., & Abbas, H. M. (2018, September). Combining classical and deep learning methods for twitter sentiment analysis. In IAPR Workshop on Artificial Neural Networks in Pattern Recognition (pp. 281-292). Springer, Cham.
- Chen, Joy Iong Zong, and P. Hengjinda. "Early Prediction of Coronary Artery Disease (CAD) by Machine Learning Method-A Comparative Study." Journal of Artificial Intelligence 3, no. 01 (2021): 17-33.
- Pasupa, K., & Ayutthaya, T. S. N. (2021). Hybrid deep learning models for thai sentiment analysis. Cognitive Computation, 1-27.
- Haoxiang, Wang, and S. Smys. "Overview of Configuring Adaptive Activation Functions for Deep Neural Networks-A Comparative Study." Journal of Ubiquitous Computing and Communication Technologies (UCCT) 3, no. 01 (2021): 10-22.
- Ranganathan, G. "A Study to Find Facts Behind Preprocessing on Deep Learning Algorithms." Journal of Innovative Image Processing (JIIP) 3, no. 01 (2021): 66-74.
- Do, H. H., Prasad, P. W. C., Maag, A., & Alsadoon, A. (2019). Deep learning for aspect-based sentiment analysis: a comparative review. Expert Systems with Applications, 118, 272-299.
- Smys, S., and Jennifer S. Raj. "Analysis of Deep Learning Techniques for Early Detection of Depression on Social Media Network-A Comparative Study." Journal of trends in Computer Science and Smart technology (TCSST) 3, no. 01 (2021): 24-39.
- Adam, Edriss Eisa Babikir. "Survey on Medical Imaging of Electrical Impedance Tomography (EIT) by Variable Current Pattern Methods." Journal of ISMAC 3, no. 02 (2021): 82-95.
- Joe, Mr C. Vijesh, and Jennifer S. Raj. "Location-based Orientation Context Dependent Recommender System for Users." Journal of trends in Computer Science and Smart technology (TCSST) 3, no. 01 (2021): 14-23.
- Shirley D.R.A., Sundari V.K., Sheeba T.B., Rani S.S. (2021) Analysis of IoT-Enabled Intelligent Detection and Prevention System for Drunken and Juvenile Drive Classification. In: Kathiresh M., Neelaveni R. (eds) Automotive Embedded Systems. EAI/Springer Innovations in Communication and Computing. Springer, Cham. https://doi.org/10.1007/978-3-030-59897-6_10
- Chourasia, Mayank, Shriya Haral, Srushti Bhatkar, and Smita Kulkarni. "Emotion recognition from speech signal using deep learning." Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 (2021): 471-481.
- Chakraborty, K., Bhatia, S., Bhattacharyya, S., Platos, J., Bag, R., & Hassanien, A. E. (2020). Sentiment Analysis of COVID-19 tweets by Deep Learning Classifiers—A study to show how popularity is affecting accuracy in social media. Applied Soft Computing, 97, 106754.
- Janoria, Honey, Jasmine Minj, and Pooja Patre. "Classification of Skin Disease Using Traditional Machine Learning and Deep Learning Approach: A Review." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 643-651. Springer Singapore, 2021.
- López, M., Valdivia, A., Martínez-Cámara, E., Luzón, M. V., & Herrera, F. (2019). E2SAM: evolutionary ensemble of sentiment analysis methods for domain adaptation. Information Sciences, 480, 273-286.
- Jain, Sarika, Ekansh Tiwari, and Prasanjit Sardar. "Soccer Result Prediction Using Deep Learning and Neural Networks." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 697-707. Springer Singapore, 2021.
- Murugesan, G., G. Preethi, and S. Yamini. "A Deep Learning Approach for Detecting and Classifying Cancer Types." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 135-141. Springer Singapore, 2021.
- Kumar, A., Srinivasan, K., Cheng, W. H., & Zomaya, A. Y. (2020). Hybrid context enriched deep learning model for fine-grained sentiment analysis in textual and visual semiotic modality social data. Information Processing & Management, 57(1), 102141.
- Gautam, K. S., Vishnu Kumar Kaliappan, and M. Akila. "Strategies for Boosted Learning Using VGG 3 and Deep Neural Network as Baseline Models." In Intelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020, pp. 151-168. Springer Singapore, 2021.
