Sciweavers

ECIR
2007
Springer

A Bayesian Approach for Learning Document Type Relevance

14 years 28 days ago
A Bayesian Approach for Learning Document Type Relevance
Retrieval accuracy can be improved by considering which document type should be filtered out and which should be ranked higher in the result list. Hence, document type can be used as a key factor for building a re-ranking retrieval model. We take a simple approach for considering document type in the retrieval process. We adapt the BM25 scoring function to weight term frequency based on the document type and take the Bayesian approach to estimate the appropriate weight for each type. Experimental results show that our approach improves on search precision by as much as 19%.
Peter C. K. Yeung, Stefan Büttcher, Charles L
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2007
Where ECIR
Authors Peter C. K. Yeung, Stefan Büttcher, Charles L. A. Clarke, Maheedhar Kolla
Comments (0)