Auxiliary Gibbs Sampling for Inference in Piecewise-Constant Conditional Intensity Models (2015)
by Zhen Qin and Christian R. Shelton
Abstract: 
A piecewise-constant conditional intensity model (PCIM) is a
 non-Markovian model of temporal stochastic dependencies in
 continuous-time event streams.  It allows efficient learning and
 forecasting given complete trajectories.  However, no general
 inference algorithm has been developed for PCIMs.  We propose an
 effective and efficient auxiliary Gibbs sampler for inference in
 PCIM, based on the idea of thinning for inhomogeneous Poisson
 processes. The sampler alternates between sampling a finite set of
 auxiliary virtual events with adaptive rates, and performing an
 efficient forward-backward pass at discrete times to generate
 samples.
 We show that our sampler can successfully
 perform inference tasks in both Markovian and non-Markovian models,
 and can be employed in Expectation-Maximization PCIM
 parameter estimation and structural learning 
 with partially observed data.
Download Information
| Zhen Qin and Christian R. Shelton (2015). "Auxiliary Gibbs Sampling for Inference in Piecewise-Constant Conditional Intensity Models." Proceedings of the Thirty-First Conference on Uncertainty in Artificial Intelligence.
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Bibtex citation
@inproceedings{QinShe15,
     author = "Zhen Qin and Christian R. Shelton",
     title = "Auxiliary Gibbs Sampling for Inference in Piecewise-Constant Conditional Intensity Models",
     booktitle = "Proceedings of the Thirty-First Conference on Uncertainty in Artificial Intelligence",
     booktitleabbr = "UAI",
     year = 2015,
}
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