Restaurant Recommendation for Facebook Users
نویسندگان
چکیده
In the past decades, people have gained a wide range of options as the availability of information expands. To help them make decisions, recommendation systems play an important role in all kinds of aspects, e.g. news, books, movies and so on. In this project, we built a restaurant recommendation system by incorporating the power of social networks and local business review sites. To make accurate predictions and provide efficient recommendations, we combined the data from Facebook and Yelp, tested various machine learning algorithms, evaluated the results on real world dataset and made detailed analysis on the experiment results.
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