Literature DB >> 16779053

Using incomplete citation data for MEDLINE results ranking.

Jorge R Herskovic1, Elmer V Bernstam.   

Abstract

Information overload is a significant problem for modern medicine. Searching MEDLINE for common topics often retrieves more relevant documents than users can review. Therefore, we must identify documents that are not only relevant, but also important. Our system ranks articles using citation counts and the PageRank algorithm, incorporating data from the Science Citation Index. However, citation data is usually incomplete. Therefore, we explore the relationship between the quantity of citation information available to the system and the quality of the result ranking. Specifically, we test the ability of citation count and PageRank to identify "important articles" as defined by experts from large result sets with decreasing citation information. We found that PageRank performs better than simple citation counts, but both algorithms are surprisingly robust to information loss. We conclude that even an incomplete citation database is likely to be effective for importance ranking.

Mesh:

Year:  2005        PMID: 16779053      PMCID: PMC1560575     

Source DB:  PubMed          Journal:  AMIA Annu Symp Proc        ISSN: 1559-4076


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