We introduce a probabilistic model for the factorisation of continuous Poisson process rate functions. Our model can be thought of as a topic model for Poisson point processes in which each point is assigned to one of a set of latent rate functions that are shared across multiple outputs. We show that the model brings a means of incorporating structure in point process inference beyond the state-of-the-art. We derive an efficient variational inference scheme for the model based on sparse Gaussian processes that scales linearly in the number of data points. Finally, we demonstrate, using examples from spatial and temporal statistics, how the model can be used for discovering hidden structure with greater precision than standard frequentist a...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Generally, practitioner in data analysis have recognized Poisson process as a tool for the temporal ...
AbstractThis study shows that when a point process is partitioned into certain uniformly sparse subp...
We introduce a probabilistic model for the factorisation of continuous Poisson process rate function...
We consider the problem of estimating a latent point process, given the realization of another point...
Networks play a central role in modern data anal-ysis, enabling us to reason about systems by studyi...
This paper presents a Bayesian generative model for dependent Cox point processes, alongside an effi...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Abstract This paper describes methods for randomly thinning two main classes of spatial point proces...
I consider two classes of statistical models: networks and point processes. These random structures ...
We consider the problem of estimating a latent point process, given the realization of another point...
The inhomogeneous Poisson process is a point process that has varying intensity across its domain (u...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We summarize and discuss the current state of spatial point process theory and directions for future...
We consider conditions under which parametric estimates of the intensity of a spatial-temporal point...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Generally, practitioner in data analysis have recognized Poisson process as a tool for the temporal ...
AbstractThis study shows that when a point process is partitioned into certain uniformly sparse subp...
We introduce a probabilistic model for the factorisation of continuous Poisson process rate function...
We consider the problem of estimating a latent point process, given the realization of another point...
Networks play a central role in modern data anal-ysis, enabling us to reason about systems by studyi...
This paper presents a Bayesian generative model for dependent Cox point processes, alongside an effi...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Abstract This paper describes methods for randomly thinning two main classes of spatial point proces...
I consider two classes of statistical models: networks and point processes. These random structures ...
We consider the problem of estimating a latent point process, given the realization of another point...
The inhomogeneous Poisson process is a point process that has varying intensity across its domain (u...
This thesis introduces new unsupervised machine learning algorithms for complex event data. Event da...
We summarize and discuss the current state of spatial point process theory and directions for future...
We consider conditions under which parametric estimates of the intensity of a spatial-temporal point...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Generally, practitioner in data analysis have recognized Poisson process as a tool for the temporal ...
AbstractThis study shows that when a point process is partitioned into certain uniformly sparse subp...