We propose a novel probabilistic framework to model continuously generated interaction events data. Our goal is to infer the \emphimplicit community structure underlying the temporal interactions among entities, and also to exploit how the latent structure influence their interaction dynamics. To this end, we model the reciprocating interactions between individuals using mutually-exciting Hawkes processes. The base rate of the Hawkes process for each pair of individuals is built upon the latent representations inferred using the hierarchical gamma process edge partition model (HGaP-EPM). In particular, our model allows the interaction dynamics between each pair of individuals to be modulated by their respective affiliated communities.Moreov...
The increasing availability of temporal-spatial events produced from natural and social systems prov...
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 ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
Hawkes Processes are probabilistic models useful for modelling the occurrences of events over time. ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
We apply Hawkes process to the analysis of dyadic interaction. Hawkes process is applicable to excit...
Communication in social networks tends to exhibit complex dynamics both in terms of the users involv...
To model recurrent interaction events in continuous time, an extension of the stochastic block model...
The stochastic block model (SBM) is one of the most widely used generative models for network data. ...
Network data, particularly social network data, is widely collected in the context of interactions b...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
The increasing availability of temporal-spatial events produced from natural and social systems prov...
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 ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
We propose a novel probabilistic framework to model continuously generated interaction events data. ...
Hawkes Processes are probabilistic models useful for modelling the occurrences of events over time. ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
In evolving complex systems such as air traffic and social organisations, collective effects emerge ...
We apply Hawkes process to the analysis of dyadic interaction. Hawkes process is applicable to excit...
Communication in social networks tends to exhibit complex dynamics both in terms of the users involv...
To model recurrent interaction events in continuous time, an extension of the stochastic block model...
The stochastic block model (SBM) is one of the most widely used generative models for network data. ...
Network data, particularly social network data, is widely collected in the context of interactions b...
This thesis is concerned with the statistical learning of probabilistic models for graph-structured ...
The increasing availability of temporal-spatial events produced from natural and social systems prov...
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 ...