This paper deals with the problem of exploring hierarchical semantics from social annotations. Recently, social annotation services have become more and more popular in Semantic Web. It allows users to arbitrarily annotate web resources, thus, largely lowers the barrier to cooperation. Furthermore, through providing abundant meta-data resources, social annotation might become a key to the development of Semantic Web. However, on the other hand, social annotation has its own apparent limitations, for instance, 1) ambiguity and synonym phenomena and 2) lack of hierarchical information. In this paper, we propose an unsupervised model to automatically derive hierarchical semantics from social annotations. Using a social bookmark service Del.icio.us as example, we demonstrate that the derived hierarchical semantics has the ability to compensate those shortcomings. We further apply our model on another data set from Flickr to testify our model's applicability on different environments. The experimental results demonstrate our model's effciency.
%0 Book
%1 aberer_semantic_2007
%B LNCS
%C Berlin, Heidelberg
%D 2007
%E Aberer, Karl
%E Choi, Key-Sun
%E Noy, Natasha
%E Allemang, Dean
%E Lee, Kyung-Il
%E Nixon, Lyndon J B
%E Golbeck, Jennifer
%E Mika, Peter
%E Maynard, Diana
%E Schreiber, Guus
%E Cudré-Mauroux, Philippe
%I Springer Verlag
%K semantic_web
%P 673--686
%T The Semantic Web — ISWC/ASWC2008: 6th International Semantic Web Conference and 2nd Asian Semantic Web Conference, Busan, South Korea
%V 4825
%X This paper deals with the problem of exploring hierarchical semantics from social annotations. Recently, social annotation services have become more and more popular in Semantic Web. It allows users to arbitrarily annotate web resources, thus, largely lowers the barrier to cooperation. Furthermore, through providing abundant meta-data resources, social annotation might become a key to the development of Semantic Web. However, on the other hand, social annotation has its own apparent limitations, for instance, 1) ambiguity and synonym phenomena and 2) lack of hierarchical information. In this paper, we propose an unsupervised model to automatically derive hierarchical semantics from social annotations. Using a social bookmark service Del.icio.us as example, we demonstrate that the derived hierarchical semantics has the ability to compensate those shortcomings. We further apply our model on another data set from Flickr to testify our model's applicability on different environments. The experimental results demonstrate our model's effciency.
@book{aberer_semantic_2007,
abstract = {This paper deals with the problem of exploring hierarchical semantics from social annotations. Recently, social annotation services have become more and more popular in Semantic Web. It allows users to arbitrarily annotate web resources, thus, largely lowers the barrier to cooperation. Furthermore, through providing abundant meta-data resources, social annotation might become a key to the development of Semantic Web. However, on the other hand, social annotation has its own apparent limitations, for instance, 1) ambiguity and synonym phenomena and 2) lack of hierarchical information. In this paper, we propose an unsupervised model to automatically derive hierarchical semantics from social annotations. Using a social bookmark service Del.icio.us as example, we demonstrate that the derived hierarchical semantics has the ability to compensate those shortcomings. We further apply our model on another data set from Flickr to testify our model's applicability on different environments. The experimental results demonstrate our model's effciency.},
added-at = {2009-02-19T14:19:12.000+0100},
address = {Berlin, Heidelberg},
biburl = {https://www.bibsonomy.org/bibtex/24a4e7ccd7bd92622067d487fed5fe278/ivan},
editor = {Aberer, Karl and Choi, {Key-Sun} and Noy, Natasha and Allemang, Dean and Lee, {Kyung-Il} and Nixon, {Lyndon J B} and Golbeck, Jennifer and Mika, Peter and Maynard, Diana and Schreiber, Guus and {Cudré-Mauroux}, Philippe},
interhash = {77c51281e03eb713e067b2a109098990},
intrahash = {4a4e7ccd7bd92622067d487fed5fe278},
keywords = {semantic_web},
month = {November},
pages = {673--686},
publisher = {Springer Verlag},
series = {{LNCS}},
timestamp = {2009-02-19T14:19:13.000+0100},
title = {The Semantic Web — {ISWC/ASWC2008:} 6th International Semantic Web Conference and 2nd Asian Semantic Web Conference, Busan, South Korea},
volume = 4825,
year = 2007
}