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This project has analyzed the Amazon Review dataset to find any motivating insight concerning heterogeneous recommendations and answer the following questions: • Which users reviewed products from several domains? • What are the pairs of domains connected via bridge users? • What is the relation between domains? • What is the accuracy of using a state-of-the-art sentiment analysis tool such as Social Mention and Sentiment Analyzer over the reviews and see whether the result is consistent with the numeric score system for the reviews (e.g., positive sentiment for reviews with five stars vs. negative sentiment for reviews with one star)

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amazon-dataset heterogeneous recommendation-system sentiment-analysis

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