Relevance feedback and inference networks
1993pp. 2–11
Citations Over TimeTop 1% of 1993 papers
Abstract
Relevance feedback, which modifies queries using judgements of the relevance of a few, highly-ranked documents, has historically been an important method for increasing the performance of information retrieval systems. In this paper, we extend the inference network model introduced by Turtle and Croft to include relevance feedback techniques. The difference between relevance feedback on text abstracts and full text collections is studied. Preliminary results for relevance feedback on the structured queries supported by the inference net model are also reported.
Related Papers
- → Relevance feedback and inference networks(1993)122 cited
- → Relevance feedback in Surfimage(2002)5 cited
- Topical Diversity and Relevance Feedback(2010)
- → Relevance Feedback on Keyword Space for Interactive Information Retrieval(2009)2 cited
- → The study of methods for language model based positive and negative relevance feedback in information retrieval(2010)1 cited