We present a probabilistic model for learning from dynamic relational data, wherein the observed interactions among networked nodes are modeled via the Bernoulli Poisson link function, and the underlying network structure are characterized by nonnegative latent node-group memberships, which are assumed to be gamma distributed. The latent memberships evolve according to a Markov process. The optimal number of latent groups can be determined by data itself. The computational complexity of our method scales with the number of non-zero links, which makes it scalable to large sparse dynamic relational data. We present batch and online Gibbs sampling algorithms to perform model inference. Finally, we demonstrate the model’s performance on both s...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Stochastic block models characterize observed network relationships via latent community memberships...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
<p>We present a probabilistic model for learning from dynamic relational data, wherein the observed ...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
A probabilistic framework based on the covariate-dependent relational gamma process is developed to ...
A probabilistic framework based on the covariate-dependent relational gamma process is developed to ...
Relational data—like graphs, networks, and matrices—is often dynamic, where the relational struc-tur...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Stochastic block models characterize observed network relationships via latent community memberships...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
<p>We present a probabilistic model for learning from dynamic relational data, wherein the observed ...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
We present a probabilistic model for learning from dynamic relational data, wherein the observed int...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
A probabilistic framework based on the covariate-dependent relational gamma process is developed to ...
A probabilistic framework based on the covariate-dependent relational gamma process is developed to ...
Relational data—like graphs, networks, and matrices—is often dynamic, where the relational struc-tur...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
Stochastic block models characterize observed network relationships via latent community memberships...