Conference Proceedings
Term Impacts as Normalized Term Frequencies for BM25 Similarity Scoring
Vo Ngoc Anh, Raymond Wan, Alistair Moffat, A Amir (ed.), A Turpin (ed.), A Moffat (ed.)
STRING PROCESSING AND INFORMATION RETRIEVAL, PROCEEDINGS | SPRINGER-VERLAG BERLIN | Published : 2008
Abstract
The BM25 similarity computation has been shown to provide effective document retrieval. In operational terms, the formulae which form the basis for BM25 employ both term frequency and document length normalization. This paper considers an alternative form of normalization using document-centric impacts, and shows that the new normalization simplifies BM25 and reduces the number of tuning parameters. Motivation is provided by a preliminary analysis of a document collection that shows that impacts are more likely to identify documents whose lengths resemble those of the relevant judgments.Experiments on TREC data demonstrate that impact-based BM25 is as good as or better than the original term..
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Funding Acknowledgements
The first and third authors were supported by the Australian Research Council, and the second by the Japan Society for the Promotion of Science. We thank the reviewers for their constructive comments.