Applying Inference Networks to Multiple Collection Searching
نویسندگان
چکیده
The paper describes how to use inference networks to solve two problems in searching multiple collections: collection selection and result merging. The eeectiveness of the approaches is demonstrated with the INQUERY system and 3 gigabyte TREC collections.
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