Publication | Closed Access
Improving pseudo-relevance feedback in web information retrieval using web page segmentation
249
Citations
12
References
2003
Year
Unknown Venue
Natural Language ProcessingPseudo-relevance FeedbackEngineeringInformation RetrievalData ScienceData MiningIntelligent Information RetrievalRelevance FeedbackWeb Information RetrievalWeb PageWeb Page SegmentationWeb Track DatasetQuery AnalysisQuery ExpansionSearch Engine DesignVision-based Page SegmentationText MiningInteractive Information Retrieval
In contrast to traditional document retrieval, a web page as a whole is not a good information unit to search because it often contains multiple topics and a lot of irrelevant information from navigation, decoration, and interaction part of the page. In this paper, we propose a VIsion-based Page Segmentation (VIPS) algorithm to detect the semantic content structure in a web page. Compared with simple DOM based segmentation method, our page segmentation scheme utilizes useful visual cues to obtain a better partition of a page at the semantic level. By using our VIPS algorithm to assist the selection of query expansion terms in pseudo-relevance feedback in web information retrieval, we achieve 27% performance improvement on Web Track dataset.
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