Authors
William Webber, Alistair Moffat, Justin Zobel
Publication date
2010/11/23
Journal
ACM Transactions on Information Systems (TOIS)
Volume
28
Issue
4
Pages
1-38
Publisher
ACM
Description
Ranked lists are encountered in research and daily life and it is often of interest to compare these lists even when they are incomplete or have only some members in common. An example is document rankings returned for the same query by different search engines. A measure of the similarity between incomplete rankings should handle nonconjointness, weight high ranks more heavily than low, and be monotonic with increasing depth of evaluation; but no measure satisfying all these criteria currently exists. In this article, we propose a new measure having these qualities, namely rank-biased overlap (RBO). The RBO measure is based on a simple probabilistic user model. It provides monotonicity by calculating, at a given depth of evaluation, a base score that is non-decreasing with additional evaluation, and a maximum score that is nonincreasing. An extrapolated score can be calculated between these bounds if …
Total citations
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Scholar articles
W Webber, A Moffat, J Zobel - ACM Transactions on Information Systems (TOIS), 2010