000 02194nam a22001697a 4500
003 OSt
005 20240412155940.0
008 240412b |||||||| |||| 00| 0 eng d
100 _aRiktesh Srivastava
_938884
245 _aUnraveling Emotions: Multimodal Deep Learning for Fine-Grained Emotion Recognition
300 _a1-6p
520 _aIn the landscape of natural language processing and artificial intelligence, sentiment analysis and emotion recognition hold crucial roles in deciphering human emotions across diverse communication channels. This study addresses a significant research gap by venturing into the promising domain of emotion identification through sentiment analysis, capitalising on the potential of multimodal deep learning. Through an exhaustive literature review, the study seeks to bridge the gap between conventional sentiment analysis methods and the intricate subtleties of human emotions, achieved by fusing data from various modalities. This integration, coupled with fine-grained emotion recognition, strives to heighten the precision of emotion comprehension. Anchored by a robust conceptual framework encompassing variables like information integration, information variability and model type, this research probes the interplay of these factors in shaping emotion consistency. The research methodology involves a two-tailed t-test, a potent statistical tool for hypothesis testing using SmartPLS. The outcomes shed light on the intricate interplay among these variables. While information integration may not exert a significant impact on information consistency, information variability and model type surface as critical factors, each distinctively contributing to the enhancement of information consistency. These insights offer a deeper comprehension of the complexities within this domain, charting a path towards refined insights into the examined relationships.
653 _aMultimodal Deep Learning
_aEmotion Recognition,
700 _aRiktesh Srivastava
_938884
773 0 _054611
_983476
_aIJBAI
_dPublishing India Group 2022 New Delhi
_o55514106
_tInternational Journal of Business Analytics and Intelligence
_z2321-1857
942 _2ddc
_cJA-ARTICLE
999 _c54935
_d54935