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This paper presents an approach to exploit free text de- scriptions of TV programmes as available from EPG data sets for a recommendation system that takes the content of programmes into account
Our research is sponsored by Software-Offensive Bayern. Ferdinand Herrmann, Heike Ott, Kristina Makedonska, and Sebastian von Mammen provided valuable help implementing major parts of the presented system.
. The paper focusses on classifying free text descriptions in relation to natural language user queries.
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