Movie Rating Based on users Comments
نویسنده
چکیده
Movie recommendation system represents the user’s preference for the purpose of suggesting movie. In the proposed system sentiment analysis have been aggregated with a user-based collaborative filtering to provide the accurate recommendation to user. Movie recommendation system proving rating of the reviews on the basis of the reviews of the users, by using sentiment analysis and collaborative filtering techniques. User can select the movie on the basis of categories such as romance, comedy, thriller etc . All users can suggest a movie to others by using rating system.
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