We consider the problem of partitioning, in a highly accurate and highly e±cient way, a set of n documents lying in a met- ric space into k non-overlapping clusters. We augment the well-known furthest-point-¯rst algorithm for k-center clus- tering in metric spaces with a ¯ltering scheme based on the triangular inequality. We apply this algorithm to Web snip- pet clustering, comparing it against strong baselines consist- ing of recent, fast variants of the classical k-means iterative algorithm. Our main conclusion is that our method attains solutions of better or comparable accuracy, and does this within a fraction of the time required by the baselines. Our algorithm is thus valuable when, as in Web snippet clus- tering, either the real-time nature of the task or the large amount of data make the poorly scalable, traditional clus- tering methods unsuitable.

A scalable algorithm for high-quality clustering of Web snippets

Geraci F;Pellegrini M;Sebastiani F
2006

Abstract

We consider the problem of partitioning, in a highly accurate and highly e±cient way, a set of n documents lying in a met- ric space into k non-overlapping clusters. We augment the well-known furthest-point-¯rst algorithm for k-center clus- tering in metric spaces with a ¯ltering scheme based on the triangular inequality. We apply this algorithm to Web snip- pet clustering, comparing it against strong baselines consist- ing of recent, fast variants of the classical k-means iterative algorithm. Our main conclusion is that our method attains solutions of better or comparable accuracy, and does this within a fraction of the time required by the baselines. Our algorithm is thus valuable when, as in Web snippet clus- tering, either the real-time nature of the task or the large amount of data make the poorly scalable, traditional clus- tering methods unsuitable.
2006
Istituto di informatica e telematica - IIT
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Meta Search Engines
Web Snippets
Clustering
Metric Spaces
H.3.3 Information Search and Retrieval. Clustering
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/151108
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