Personalized News Prediction and Recommendation
نویسندگان
چکیده
There exist many web based news provider applications (e.g. Pulse News reader application for iPhone/iPad and Android platforms) that gather news articles from the myriad ‘feeds’ the user is subscribed to and displays them with-in each feed category. A feed refers to a stream of news articles that may represent a news category (e.g. Gadgets, Technology, Sports, etc.) or may be very general (e.g. RSS feed provided by some newspaper for top articles, etc.). In this project, we analyze and develop machine learning techniques for personalized feed based news prediction and recommendation.
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