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In this paper, we offer an engaging emotion-based movie recommendation system. With our approach, people may effortlessly convey their feelings through natural language in a search box. Using cutting-edge natural language processing tools, we examine and understand the user's emotional condition. Its recommendation structures make use of strategies. The first technique is content-based filtering, which generates suggestions based on a variety of criteria, including actors, directors, and movie-related content. The algorithm makes recommendations for films based on an analysis of these features and films that the user has expressed interest in. Using the TF-IDF Vectorizer from the sci-kit-learn module, we apply TF-IDF vectorization to the anticipated genre to improve the precision of genre-based movie recommendations. With the help of this vectorization technique, we depict the anticipated genre. We used cosine similarity to recommend 10 movies that match the user's preferences.
Kumar et al. (Fri,) studied this question.
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