Joining Collaborative and Content-based Filtering
نویسنده
چکیده
Different authors have proposed combining content-based and collaborative attributes in a single table. In this article, we try out a different approach. We propose not to merge the two tables, but to join them as if they were tables in a relational database. As a result, we get several new application cases and a system architecture that supports the formulation of universal queries.
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