ClusteringWiki: A Framework for Personalized Clustering of Search Results
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چکیده
How to organize and present search results plays a critical role in the utility of search engines. Due to the unprecedented scale of the Web and diversity of search results, the common strategy of ranked lists has become increasingly inadequate, and clustering has been considered as a promising alternative. Clustering divides a long list of disparate search results into a few topic-coherent clusters, allowing the user to quickly locate relevant results by topic navigation. While many clustering algorithms have been proposed that innovate on the automatic clustering procedure, we introduce ClusteringWiki, the first prototype and framework for personalized clustering that allows direct user editing of the clustering results. Through a Wiki interface, the user can edit and annotate the membership, structure and labels of clusters for a personalized presentation. In addition, the edits and annotations can be shared among users as a mass-collaborative way of improving search result organization and search engine utility.
منابع مشابه
Dynamical Clustering of Personalized Web Search Results
Most current search engines present the user a ranked list given the submitted user query. Top ranked search results generally cover few aspects of all search results. However, in many cases, the users are interested in the main themes of search results besides the ranked list so that the user will have a global view of search results. This goal is often achieved through clustering approaches. ...
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