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Design and Development of Recommendations System for Movie Review Analysis

Dr A R JayaSudha, JAYASRI J

Abstract


A recommendation system is a system that based on some information; offers people recommendations for specific resources such as books, videos, music, etc. A recommendation system is also known as a suggestion system. Movie recommendation systems typically make their predictions about the movies that a user will enjoy based on the characteristics that were present in the user's previous preferred movies. The user will like such movies based on the characteristics that were prevalent in previously enjoyed movies. These kinds of recommendation systems are helpful for businesses that aggregate data from a significant number of consumers and want to successfully provide the best suggestion that can be made. There are many aspects that can be taken into consideration, such as the type of movie being watched, the cast members, and even the producer of the movie. Movies can be suggested by the algorithms on the basis of a single attribute, as well as any combination of two or more characteristics. The recommendation system that has been developed for this article is based on the types of categories that the viewer may find most appealing to watch.


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References


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