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Searching and Browsing Using Tags Nikos Sarkas Social Information Systems Seminar DCS, University of Toronto, Winter 2007.

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Presentation on theme: "Searching and Browsing Using Tags Nikos Sarkas Social Information Systems Seminar DCS, University of Toronto, Winter 2007."— Presentation transcript:

1 Searching and Browsing Using Tags Nikos Sarkas Social Information Systems Seminar DCS, University of Toronto, Winter 2007

2 Social Resource Sharing The del.icio.us paradigm. Users store links to web pages of interest along with arbitrary, user-specified tags in a server. The model is independent of the resource being shared. Music (Last.fm) Photos (Flickr) Publications (CiteULike) …

3 Part I: Searching

4 Ranking Web Search Results Two prevalent models. Ranking based on query-document similarity. TF/IDF Metadata extraction Link analysis Query independent static ranking. PageRank “Quality” based

5 Similarity Ranking, Take I Query q={q 1,q 2,…,q n }. Tags of URL p, T(p)={t 1,t 2,…,t m }. Define similarity as |q∩T(p)|/|T(p)|. Problems Synonymy (according to the authors) Others? Synonymy example Linux, Ubuntu and Gnome

6 Similarity Ranking, Take II Use tags with “similar” meaning to enrich query. Create 3 matrices M TP, tag-URL count matrix S T, tag-tag similarity matrix S P, URL-URL similarity matrix

7 Similarity Ranking, Take II Iterate Similarly update S P, until convergence. Then, similarity between a query q and a url p is

8 Social PageRank “Popular web pages are tagged by many up- to-date users, using hot tags”. Transfer popularity between entities. Define matrices M PU, M UT, M TP. Iterate

9 Putting It All Together Train a ranking function (RankSVM) using the following features BM25 similarity between query and url content Simple query-url tags similarity measure Complex query-url tags similarity measure PageRank Social PageRank Results Precision, NDCG at k Small improvement over BM25, up to 25% for NDCG and synthetic queries

10 Part II: Browsing

11 Tag Assisted Browsing Currently two methods for tag driven browsing Keyword search Clouds of popular tags We would like to support Semantic browsing: also present URLs annotated with similar tags Hierarchical browsing: browse in a top-down fashion

12 Semantic Browsing Define similarity between tags: Synonymic tags: similarity above a threshold. The synonymic tags and the tag itself defines its semantic concept. Given that the user has selected L tags, that define semantic concepts S c ={C 1,…,C L }, related URLs are:

13 Hierarchical Browsing Observations No neat tree structure Multiple ways to target resource URLs associated with different categories Dynamic structure: leafs can become inner nodes

14 Hierarchical Browsing Generating sub-tags Train a classifier to identify which of the tags in the semantic concept are sub-tags Features used: ratio of tag counts, intersection size, etc. Clustering sub-tags Ranks tags based on a complex formula Greedy clustering technique


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