Segmentation Of Search Engine Results For Effective Data-Fusion

ECIR'07: Proceedings of the 29th European conference on IR research(2007)

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摘要
Metasearch and data-fusion techniques combine the rank lists of multiple document retrieval systems with the aim of improving search coverage and precision.We propose a new fusion method that partitions the rank lists of document retrieval systems into chunks. The size of chunks grows exponentially in the rank list. Using a small number of training queries, the probabilities of relevance of documents in different chunks are approximated for each search system. The estimated probabilities and normalized document scores are used to compute the final document ranks in the merged list. We show that our proposed method produces higher average precision values than previous systems across a range of testbeds.
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关键词
rank list,document retrieval system,final document rank,multiple document retrieval system,normalized document score,higher average precision value,merged list,new fusion method,proposed method,search coverage,effective data-fusion,search engine result
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