Variational Inference for Gaussian Process Modulated Poisson Processes
About
We present the first fully variational Bayesian inference scheme for continuous Gaussian-process-modulated Poisson processes. Such point processes are used in a variety of domains, including neuroscience, geo-statistics and astronomy, but their use is hindered by the computational cost of existing inference schemes. Our scheme: requires no discretisation of the domain; scales linearly in the number of observed events; and is many orders of magnitude faster than previous sampling based approaches. The resulting algorithm is shown to outperform standard methods on synthetic examples, coal mining disaster data and in the prediction of Malaria incidences in Kenya.
Chris Lloyd, Tom Gunter, Michael A. Osborne, Stephen J. Roberts• 2014
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Point process intensity estimation | Stationary Synthetic Data | L Test Statistic155.3 | 14 | |
| Point process intensity estimation | Nonstationary Synthetic Data | L-test Score172.9 | 14 | |
| Point process intensity estimation | Redwoods | Ltest Score77.06 | 10 | |
| Point process intensity estimation | Coal | L Test Statistic219.2 | 10 | |
| Point process intensity estimation | taxi | Ltest Score6.16e+3 | 10 |
Showing 5 of 5 rows