Emotional evaluation of open-ended responses with Transformer Models
Date
2024-05-11
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Springer
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English
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Abstract
This work applies Natural Language Processing (NLP) techniques, specifically transformer models, for the emotional evaluation of open-ended responses. Today’s powerful advances in transformer architecture, such as ChatGPT, make it possible to capture complex emotional patterns in language. The proposed transformer-based system identifies the emotional features of various texts. The research employs an innovative approach, using prompt engineering and existing context, to enhance the emotional expressiveness of the model. It also investigates spaCy’s capabilities for linguistic analysis and the synergy between transformer models and this technology. The results show a significant improvement in emotional detection compared to traditional methods and tools, highlighting the potential of transformer models in this domain. The method can be implemented in various areas, such as emotional research or mental health monitoring, creating a much richer and complete user profile.
Keywords
Emotional Evaluation, Open-Ended Responses, Transformer Models
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Conference paper
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Citation
Pajón-Sanmartín, A., Arriba-Pérez, F., García-Méndez, S., Burguillo, J. C., Leal, F., & Malheiro, B. (2024). Emotional evaluation of open-ended responses with Transformer Models. In Á. Rocha, H. Adeli, G. Dzemyda, F. Moreira, A. Poniszewska-Marańda (Eds.), Good Practices and New Perspectives in Information Systems and Technologies, WorldCIST 2024, vol. 1, (Lecture Notes in Networks and Systems, vol. 985, pp. 23-32). Springer. https://doi.org/10.1007/978-3-031-60215-3_3. Repositório Institucional UPT. https://hdl.handle.net/11328/5714
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