We study the fundamental limits on learning latent community structure in dynamic networks. Specifically, we study dynamic stochastic block models where nodes change their community membership over time, but where edges are generated independently at each time step. In this setting (which is a special case of several existing models), we are able to derive the detectability threshold exactly, as a function of the rate of change and the strength of the communities. Below this threshold, we claim that no algorithm can identify the communities better than chance. We then give two algorithms that are optimal in the sense that they succeed all the way down to this limit. The first uses belief propagation (BP), which gives asymptotically optimal ...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
International audienceThis article considers the problem of community detection in sparse dynamical ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
The detection of communities within a dynamic network is a common means for obtaining a coarse-grain...
International audienceThis article considers the problem of community detection in sparse dynamical ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
Given an underlying graph, we consider the following dynamics: Initially, each node locally chooses ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
International audienceThis article considers the problem of community detection in sparse dynamical ...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...
We study the inference of a model of dynamic networks in which both communities and links keep memor...