Automatically clustering social tags into semantic communities would greatly boost the ability of Web services search engines to retrieve the most relevant ones at the same time improve the accuracy of tag-based service recommendation. In this paper, we first investigate the different collaborative intention between co-occurring tags in Seekda as well as their dynamical aspects. Inspired by the relationships between co-occurring tags, we designed the social tag network. By analyzing the networks constructed, we show that the social tag network have scale free properties. In order to identify densely connected semantic communities, we then introduce a novel graph-based clustering algorithm for weighted networks based on the concept of edge b...
In social annotation systems, users label digital resources by using tags which are freely chosen t...
Abstract—The increasing popularity of social media is short-ening the distance between people. Socia...
International audienceBuilding on top of our results on semantic social network analysis, we present...
Collaborative tagging is the process by which users classify shared content using keywords. Although...
In social annotation systems, users label digital resources by using tags which are freely chosen te...
In social annotation systems, users label digital resources by using tags which are freely chosen te...
The rapidly growing social data created by users through Web 2.0 applications has intrigued active r...
Summary. A distributed classification paradigm known as collaborative tagging has been widely adopte...
Collaboration and sharing of information are the basis of modern social web system. Users in the soc...
Social tagging, also called social annotation and collaborative tagging, is a recent phenomenon in t...
Social tagging networks have become highly popular for publishing and searching contents. Users in s...
Discovering social communities of web users through clustering analysis of heterogeneous link associ...
Under social tagging systems, a typical Web 2.0 appli-cation, users label digital data sources by us...
Social bookmarking has gained popularity since the advent of Web 2.0. Keywords known as tags are cre...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
In social annotation systems, users label digital resources by using tags which are freely chosen t...
Abstract—The increasing popularity of social media is short-ening the distance between people. Socia...
International audienceBuilding on top of our results on semantic social network analysis, we present...
Collaborative tagging is the process by which users classify shared content using keywords. Although...
In social annotation systems, users label digital resources by using tags which are freely chosen te...
In social annotation systems, users label digital resources by using tags which are freely chosen te...
The rapidly growing social data created by users through Web 2.0 applications has intrigued active r...
Summary. A distributed classification paradigm known as collaborative tagging has been widely adopte...
Collaboration and sharing of information are the basis of modern social web system. Users in the soc...
Social tagging, also called social annotation and collaborative tagging, is a recent phenomenon in t...
Social tagging networks have become highly popular for publishing and searching contents. Users in s...
Discovering social communities of web users through clustering analysis of heterogeneous link associ...
Under social tagging systems, a typical Web 2.0 appli-cation, users label digital data sources by us...
Social bookmarking has gained popularity since the advent of Web 2.0. Keywords known as tags are cre...
AbstractThis study mainly focuses on the methodology of weighted graph clustering with the purpose o...
In social annotation systems, users label digital resources by using tags which are freely chosen t...
Abstract—The increasing popularity of social media is short-ening the distance between people. Socia...
International audienceBuilding on top of our results on semantic social network analysis, we present...