Collaborative Dining: A Social Recommender System for Restaurants
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چکیده
When people want to eat out, one of the difficult choices a customer has to consider is which restaurant to go to. It can be a matter of finding something suitable for a large group of people, or even just indifference to the locations at hand. Because there are so many choices out there, people spend a good amount of time deciding where to eat. Our project hopes to make this process more efficient by directly recommending restaurants to people. We are working on providing a recommendation application based off Yelp to provide users with a single choice of dining that is best matched with their needs and tastes.
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