The prediction of graph evolution is an important and chal-lenging problem in the analysis of networks and of the Web in particular. But while the appearance of new links is part of virtually every model of Web growth, the disappearance of links has received much less attention in the literature. To fill this gap, our approach DecLiNe (an acronym for Decay of Links in Networks) aims to predict link decay in networks, based on structural analysis of corresponding graph models. In analogy to the link prediction problem, we show that anal-ysis of graph structures can help to identify indicators for superfluous links under consideration of common network models. In doing so, we introduce novel metrics that denote the likelihood of certain links...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
Link prediction is a key tool for studying the structure and evolution mechanism of complex networks...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
© 2012, Australian Computer Society, Inc. Link prediction in large networks, especially social netwo...
Received; accepted Abstract In social networks, link prediction predicts missing links in current ne...
In social networks of human individuals, social relationships do not necessarily last forever as the...
Many real world, complex phenomena have underlying structures of evolving networks where nodes and l...
We propose a new method for characterizing the dynamics of complex networks with its application to ...
In social networks of human individuals, social relationships do not necessarily last forever as the...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
In network science several topology--based link prediction methods have been developed so far. The c...
Social networks can be helpful for the analysis of behaviour of people. An existing social network i...
The problem of link prediction has gained a lot of atten-tion recently from the research community. ...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
Link prediction aims to uncover the underlying relationship behind networks, which could be utilize...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
Link prediction is a key tool for studying the structure and evolution mechanism of complex networks...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
© 2012, Australian Computer Society, Inc. Link prediction in large networks, especially social netwo...
Received; accepted Abstract In social networks, link prediction predicts missing links in current ne...
In social networks of human individuals, social relationships do not necessarily last forever as the...
Many real world, complex phenomena have underlying structures of evolving networks where nodes and l...
We propose a new method for characterizing the dynamics of complex networks with its application to ...
In social networks of human individuals, social relationships do not necessarily last forever as the...
Alongside the continuous development of Internet technologies, traditional social\ud networks are ru...
In network science several topology--based link prediction methods have been developed so far. The c...
Social networks can be helpful for the analysis of behaviour of people. An existing social network i...
The problem of link prediction has gained a lot of atten-tion recently from the research community. ...
The challenge in predicting future links over large scale networks (social networks) is not only mai...
Link prediction aims to uncover the underlying relationship behind networks, which could be utilize...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
Link prediction is a key tool for studying the structure and evolution mechanism of complex networks...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...