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Multimodal Sentiment Analysis using LSTM and RoBerta

Jyoti Arora, Priyal Khapekar, Rakhi Pal

Abstract


Social media is a valuable data source for understanding people's thoughts and feelings. Sentiment analysis and affective computing help analyze sentiment and emotions in social media posts. Our research paper proposes a model for tweet emotions analysis using LSTM, GloVe embeddings, and RoBERTa. This model captures sequential dependencies in tweets, leverages semantic representations, and enhances contextual understanding. We evaluate the model on a tweet emotions dataset, demonstrating its effectiveness in accurately classifying emotions in tweets.Through evaluation on a tweet emotions dataset, we demonstrate the effectiveness of our proposed model in accurately classifying the emotions expressed in tweets.


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