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Analysis of Social Media Sentiment: Revealing Feelings

K. Meenakshi, B. Dharani, P. Krishnapriya, G. Sathiyapriya, A. Anandkumar, Dr. M. Kathirvelu

Abstract


In the digital era, social media platforms have grown into a hub where people can express their thoughts, opinions, and feelings in real time. A branch of natural language processing called sentiment analysis provides powerful analytical and interpretive capabilities for the emotional content of social media data. This study looks into the possibility of using sentiment analysis on social media to identify emotions. It looks at how to use machine learning algorithms to collect and preprocess information from multiple social media platforms, including Facebook, Instagram, and Twitter. In order to provide a more comprehensive picture of user feelings, this article examines textual information, including posts, comments, and reviews. Additionally, the project includes audio sentiment analysis, system analysis of customer feedback, and sentiment analysis of product reviews. NLTK is used in this feature to process transcripts and analyze sentiment. Character comparison and sentiment analysis are periodically provided by the web API, which is also utilized for content downloads. This data is displayed using data visualization.


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