Search Result Clustering via Randomized Partitioning of Query-Induced Subgraphs

In this paper, we present an approach to search result clustering, using partitioning of underlying link graph. We define the notion of "query-induced subgraph" and formulate the problem of search result clustering as a problem of efficient partitioning of a given subgraph into topic-relat...

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Bibliographic Details
Main Author: A. Bradic
Format: Article
Language:English
Published: Telecommunications Society, Academic Mind 2009-06-01
Series:Telfor Journal
Subjects:
Online Access:http://journal.telfor.rs/Published/Vol1No1/Vol1No1_A7.pdf
Description
Summary:In this paper, we present an approach to search result clustering, using partitioning of underlying link graph. We define the notion of "query-induced subgraph" and formulate the problem of search result clustering as a problem of efficient partitioning of a given subgraph into topic-related clusters. Also, we propose a novel algorithm for approximative partitioning of such a graph, which results in a cluster quality comparable to the one obtained by deterministic algorithms, while operating in a more efficient computation time, suitable for practical implementations. Finally, we present a practical clustering search engine developed as a part of this research and use it to get results about real-world performance of proposed concepts.
ISSN:1821-3251