Improved Contextual Understanding and Emotion Detection in Large-Scale Text Data with Hybrid Deep Learning Models

P, Thilakavathy and G, Manikandan and R, Deepa and V, Jayalakshmi and R, Surendran (2024) Improved Contextual Understanding and Emotion Detection in Large-Scale Text Data with Hybrid Deep Learning Models. In: 2024 International Conference on Sustainable Communication Networks and Application (ICSCNA), Theni, India.

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Abstract

With the growth of large-scale text datasets from reviews, social media, and other online sources, sentiment analysis is essential for understanding public opinion. Traditional models struggle to understand complicated linguistic sentiments and interdependencies. This research could improve sentiment classification in customer feedback analysis, market sentiment predictions, and social media monitoring. Addressed issues include ambiguous language, sentence context flipping, and the need for robust models that can manage massive datasets. Contextual Detection Text Analysis Using Deep Learning (CDTA-DL) improves contextual knowledge and emotion identification in this research. RNNs and CNNs are used in the CDTA-DL approach to extract spatial and sequential information from text. CDTA-DL helps large-scale sentiment analysis detect sarcasm, implicit emotions, and many expressions. In a comprehensive simulation investigation employing open-access sentiment analysis datasets, CDTA-DL surpassed standard deep learning models in accuracy, recall, and F1 scores. The recommended strategy may increase emotion recognition and contextual understanding, making it ideal for large-scale sentiment analysis in various domains.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Deep Learning
Domains: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 29 Aug 2025 04:36
Last Modified: 29 Aug 2025 04:36
URI: https://ir.vistas.ac.in/id/eprint/10892

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