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In this project, the user writes a review of a cosmetics product, and Sentiment Analysis detects positive or negative sentiment in the text, which is frequently used to improve the business's reputation among their customers. We developed Robust STV Modelling algorithm to improve the products reviews sentiment analysis with Natural Language ProcessLove Open Source and this site? Check out how you can help us