Review Based Rating Prediction using Machine Learning Techniques

Applications used in today's e-commerce, such as personalised marketing, targeted advertising, and information retrieval, heavily rely on recommendation systems. The value of contextual information has recently driven the creation of personalized suggestions based on the users' contextual information. In comparison to the traditional systems which mainly utilize users' review-based recommendations, and rating history and provide more relevant results to users. We proposed a Review Based Rating Prediction Using Machine Learning in this research paper. Techniques on the dataset provided by Yelp.

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