Sciweavers

CLEF
2007
Springer

Using Centrality to Rank Web Snippets

13 years 10 months ago
Using Centrality to Rank Web Snippets
We describe our participation in the WebCLEF 2007 task, targeted at snippet retrieval from web data. Our system ranks snippets based on a simple similarity-based centrality, inspired by the web page ranking algorithms. We experimented with retrieval units (sentences and paragraphs) and with the similarity functions used for centrality computations (word overlap and cosine similarity). We found that using paragraphs with the cosine similarity function shows the best performance with precision around 20% and recall around 25% according to human assessments of the first 7,000 bytes of responses for individual topics.
Valentin Jijkoun, Maarten de Rijke
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where CLEF
Authors Valentin Jijkoun, Maarten de Rijke
Comments (0)