Open Access
Subscription Access
Emotion Detection from Multilingual Text and Multi-Emotional Sentence using Difference NLP Feature Extraction Technique and ML Classifier.
Machines can read, comprehend, and extrapolate meaning from human languages, thanks to natural language processing.In this paper, we have detected emotion from multilingual text and multi-emotional sentences.For our research, we have collected a dataset containing around 7000 tweets on 4 emotions (Anger, Fear, Joy,and Sadness). After pre-processing our data, we used 2 NLP feature extraction models and trained those with the help of 4 different Machine Learning classifiers. We have also developed an algorithm for detectingexact emotions from multi-emotional sentences. Also, we compared our result with a research paper using the same dataset (ISEAR). And found out our model provides relatively better resultsthan that model.We also tried to determine emotion from the Bangla text. Although there is not much data regarding emotion in Bengali. We managed to get around 600 data on Bangla.
Keywords
Emotion, Machine Learning, Multi-Emotional Sentence, Multi-Lingual, NLP, Bangla.
User
Font Size
Information
- Nasr, M., Karam, A., Atef, M., Boles, K., Samir, K., &Raouf, M. (2020). Natural Language Processing: Text Categorization and Classifications. International Journal of Advanced Networking and Applications, 12(2), 4542-4548.
- Mubassıra, M., & Das, A. K. (2021). Implementation of Recurrent Neural Network with Language Model for Automatic Articulation Identification System in Bangla. International Journal of Advanced Networking and Applications, 12(6), 4800-4808.
- Khan, S. I., &Hoque, A. S. M. L. (2016, December). Similarity analysis of patients' data: Bangladesh perspective. In 2016 International Conference on Medical Engineering, Health Informatics and Technology (MediTec) (pp. 1-5). IEEE.
- Khan, A. B. A., Ghazanfar, M. S., & Khan, S. I. (2017, December). Application of phonetic encoding for analyzing similarity of patient's data: Bangladesh perspective. In 2017 IEEE Region 10 Humanitarian Technology Conference (R10-HTC) (pp. 664-667). IEEE.
- Rajarajeshwari, K., &Radhamani, G. (2019). A Naïve Bayes Model using Semi-Supervised Parameters for Enhancing the Performance of Text Analytics. International Journal of Advanced Networking and Applications, 10(6), 4083-4089.
- Chowdhury, A. N., Guha, S., Amin, N., & Khan, S. I. (2022, February). Exploiting Diverse Contextual Features through Transformers for Detecting Informative Tweets. In 2022 International Conference on Innovations in Science, Engineering, and Technology (ICISET) (pp. 350-355). IEEE.
- Khan, S. I., Hasan, M., Hossain, M. I., &Hoque, A. S. M. (2019). nameGist: a novel phonetic algorithm with bilingual support. International journal of speech technology, 22(4), 1135-1148.
- S. Mohammad, F. Bravo-Marquez, “WASSA- 2017 Shared Task on Emotion Intensity”In Proceedings of the 2016 IEEE/WIC/ACM International Conference on Web Intelligence. Omaha, NE, USA, pages 536–539.
- M. Hasan, T. Ahsan ‘Emotion Detection from Text Using Skip-thought Vectors’2nd Int. Conf. on Innovations in Science, Engineering, and Technology (ICISET), 2018.
- N.Ertiza, M.Yunus ‘Detecting Multilabel Sentiment and Emotions from Bangla YouTube Comments’ international Conference on Bangla Speech and Language Processing (ICBSLP), 2018
- M. Chunling, H. Prendinger, and M. Ishizuka, "Emotion Estimation and Reasoning Based on Affective Textual Interaction " in Affective Computing and Intelligent Interaction. vol. 3784/2005 (Springer Berlin / Heidelberg, 2005), pp. 622-628.
- J. T. Hancock, C. Landrigan, and C. Silver, "Expressing emotion in text-basedcommunication," in Proceedings of the SIGCHI conference on Human factors in computing systems, 2007, pp. 929 – 932
- H. Li, N. Pang, and S. Guo, "Research on Textual Emotion Recognition Incorporating Personality Factor," in International Conference on Robotics and Biomimetics, Sanya, China, 2007.
- H. Binali, C Wu, Potdar V (2010) Computational approaches for emotion detection in text. In: IEEE international conference on digital ecosystems and technologies (DEST), pp 172–177
- D. Ghazi, D. Inkpen and S. Szpakowicz, "Prior versus Contextual Emotion of a Word in a Sentence," in Proceedings of the 3rd Workshop in Computational Approaches to Subjectivity and Sentiment Analysis, 2012.
- M. Taboada, J. Brooke, M. Tofiloski, K. VollandM.Stede,"Lexicon based methods for sentiment analysis," Computational linguistics, vol. 37, pp. 267-307, 2011
- Abak FS, Evrim, V HONET-ICT. IEEE, pp 154– 158, 2016
- A. Koumpouri, I. Mporas, and V. Megalooikonomou, "Evaluation of Four Approaches for Sentiment Analysis on Movie Reviews: The Kaggle Competition, "in Proceedings of the 16 th International Conference on Engineering Applications of Neural Networks (INNS), 2015.
- Qadir, A., Riloff, E.: Bootstrapped learning of emotionhashtags#hashtags4you.WASSA 2013,2 (2013)
- L. Wikarsa, S. NoviantiThahir, “A text mining application of Emotion Classifications of Twitters Users using NaveBayes Method", IEEE 2015.
- Li Yu, Zhifan Yang, Peng Nie, Xue Zhao, Ying Zhang,“Multi-Source Emotion Tagging for Online News”, 12th Web Information System and Application Conference 2015.
- Purver, M., Battersby, S.: Experimenting with distant supervision for emotion classification. In: Proceedings of the 13th EACL, Association for Computational Linguistics, pp. 482–491 (2012)
- Calvo, R.A., Mac Kim, S.: Emotions in text: dimensional and categorical models. Computat. Intell. 29(3), 527–543 (2013)
- Bradley, M.M., Lang, P.J.: Affective norms for English words (anew): Instruction manual and affective ratings. In: Technical Report Citeseer(1999)
- Agrawal, A., An, A: Unsupervised emotion detection from text using semantic and syntactic relations. In: Proceedings of The 2012 IEEE/WIC/ACM International Joint Conferences on Web Intelligence and Intelligent Agent Technology-Volume01,pp. 346–353.IEEEComputer Society (2012).
Abstract Views: 205
PDF Views: 0