Deep Learning for Sentiment Analysis with Adaptive Neural Networks for Emotion Classification

V, Jayalakshmi and P, Thilakavathy and G, Manikandan and R, Deepa and R, Surendran (2024) Deep Learning for Sentiment Analysis with Adaptive Neural Networks for Emotion Classification. In: 2024 International Conference on Sustainable Communication Networks and Application (ICSCNA), Theni, India.

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Abstract

In understanding human emotions, sentiment analysis has been invaluable in social media monitoring, consumer comment analysis, and psychological evaluations. Customer service, human-computer interface, and public mood comprehension depend on appropriate emotion categorisation. Despite its potential, sentiment analysis struggles with sarcasm, multimodal data integration, and emotion processing. Implementing real-time applications requires improving deep learning model computational complexity. Multimodal Optimised Emotion Analysis using Deep Learning (MOEA-DL) uses CNNs for image processing, RNNs for text., and LSTM networks for sequential audio data. This improves emotion recognition by combining modality strengths. Marketing sentiment, mental health monitoring, social media sentiment, and consumer feedback use MOEA-DL. Multimodal solutions are better than text-based ones for communicating emotion. Customer contacts, film reviews, and social media platforms are used to evaluate the proposed strategy. According to simulations, MOEA-DL categorises emotions more accurately and robustly than previous sentiment analysis methods. Its adaptive neural network lets the system learn and perform well in many cultural and language environments.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Neural Network
Domains: Computer Science Engineering
Depositing User: Mr IR Admin
Date Deposited: 23 Aug 2025 06:58
Last Modified: 23 Aug 2025 06:58
URI: https://ir.vistas.ac.in/id/eprint/10360

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