How Relevant is the Long Tail? A Relevance Assessment Study on Million Short
June 20, 2016 Β· Declared Dead Β· π Conference and Labs of the Evaluation Forum
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Authors
Philipp Schaer, Philipp Mayr, Sebastian SΓΌnkler, Dirk Lewandowski
arXiv ID
1606.06081
Category
cs.IR: Information Retrieval
Citations
10
Venue
Conference and Labs of the Evaluation Forum
Last Checked
4 months ago
Abstract
Users of web search engines are known to mostly focus on the top ranked results of the search engine result page. While many studies support this well known information seeking pattern only few studies concentrate on the question what users are missing by neglecting lower ranked results. To learn more about the relevance distributions in the so-called long tail we conducted a relevance assessment study with the Million Short long-tail web search engine. While we see a clear difference in the content between the head and the tail of the search engine result list we see no statistical significant differences in the binary relevance judgments and weak significant differences when using graded relevance. The tail contains different but still valuable results. We argue that the long tail can be a rich source for the diversification of web search engine result lists but it needs more evaluation to clearly describe the differences.
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