DEFINITION OF TECHNIQUES FOR EMOTIONAL STATE ASSESSMENT
Abstract
This article aims to provide algorithmic insights into the evaluation of human emotions, highlighting the progress that has been made and the challenges that still exist. By utilizing machine learning algorithms and sentiment analysis, researchers have been able to uncover valuable information about the emotions that robots can express and how they impact consumers. This cross-disciplinary study paves the way for next-level social, design, and creative experiences in artificial intelligence research, particularly in the realms of consumer service and experience contexts.
Downloads
References
KURBANOV A.A. Multimodal emotion recognition: a comprehensive survey with deep learning. Journal of Research and Innovation, pp. 43-47. 2023
Kurbanov Abdurahmon Alishboyevich. A Methodological Approach to Understanding Emotional States Using Textual Data. Journal of Universal Science Research. 2023
Kurbanov Abdurahmon. AI MODELS OF AFFECTIVE COMPUTING.
International Conference of Contemporary Scientific and Technical Research. 2023
Kurbanov Abdurahmon Alishboyevich. USING AFFECTIVE COMPUTING SYSTEMS IN MODERN EDUCATION. Journal Science and innovation. 2023
Atzeni, Recupero, 2020 M. Atzeni, D.R. Recupero Multi-domain sentiment analysis with mimicked and polarized word embeddings for human–robot interaction. Future Generat. Comput. Syst., 110 (2020), pp. 984-999
Kamolov, Dostonbek Rustam O’G’Li. "O'ZBEKISTONDA DEMOKRATIYA VA AXLOQNING ZAMONAVIY MUAMMOLARI VA YECHIMLARI." Academic research in educational sciences 3.NUU Conference 2 (2022): 348-352.
Chatterjee et al., 2019 A. Chatterjee, G. Umang, K.C. Manoj, S. Radhakrishnan, G. Michel, A. Puneet Understanding emotions in text using deep learning and big data Comput. Hum. Behav., 93 (2019), pp. 309-317
Faraj et al., 2020 Z. Faraj, M. Selamet, C. Morales, P. Torres, M. Hossain, H. Lipson Facially Expressive Humanoid Robotic Face HardwareX (2020), Article e00117
Prottasha NJ, Sami AA, Kowsher M, Murad SA, Bairagi AK, Masud M, et al. Transfer learning for sentiment analysis using BERT based supervised fine-tuning. Sensors. 2022;22(11):4157
Tan KL, Lee CP, Lim KM, Anbananthen KSM. Sentiment analysis with ensemble hybrid deep. IEEE Access. 2022;10:103694-103704. Available from: https://doaj.org/article/948b7ca90291416fb31bda6b789b8920
Published
Issue
Section
License
Copyright (c) 2023 Kurbanov Abdurahmon Alishboyevich (Author)
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.