Improving IMDb Movie Recommendations with Interactive Settings and Filters
نویسندگان
چکیده
IMDb is a widely known online movie platform that offers movie information, allows to rate movies and recommends interesting movies to users. The IMDb movie recommendations do not however offer any means for interactivity or user control, which inherently limits their contextual adaptability. In this work we describe our Google Chrome extension – called MovieBrain – which offers interactive movie recommendations and integrates the IMDb website for user rating data. Dynamic settings and genre filters are available, allowing users to manually fine-tune the recommendation process and its results.
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