
Cluster labeling with Linked Data
In this article, we would like to introduce our approach to cluster labeling with Linked Data. Clustering web pages into semantically related groups promises better performance in searching the Web. Nowadays, only special semantic search engines provide clustering of results. Other engines are doubtful as far as the quality of clusters and moreover a dependable system for labeling these clusters is lacking. Linked Data is a set of principles for publishing structured data in a machine readable way with regards to linking with other Web resources. This enables data from different sources to be connected and queried over the Internet. The information from Linked Data can be used for preliminary estimates of topics covered by a set of documents. Topics are represented as resources from Linked Data and are used for smooth humanreadable labeling of clusters.
Keywords: Cluster labeling, Linked Data, Clustering, Semantic web
Year: 2013

Authors of this publication:

Martin Dostal
E-mail: madostal@kiv.zcu.cz

Karel Ježek
Phone: +420 377632475
E-mail: jezek_ka@kiv.zcu.cz
WWW: https://cs.wikipedia.org/wiki/Karel_Je%C5%BEek_(informatik)

Michal Nykl
E-mail: nyklm@kiv.zcu.cz
WWW: http://home.zcu.cz/~nyklm/
Related Projects:

Document Clustering and Linked Data | |
Authors: | Karel Ježek, Martin Dostal |
Desc.: | Unsupervised methods for automatic tagging and clustering based on information extraction from Linked data. |