Efficient Inference for Coupled Hidden Markov Models in Continuous Time and Discrete Space
About
Systems of interacting continuous-time Markov chains are a powerful model class, but inference is typically intractable in high dimensional settings. Auxiliary information, such as noisy observations, is typically only available at discrete times, and incorporating it via a Doob's $h$-transform gives rise to an intractable posterior process that requires approximation. We introduce Latent Interacting Particle Systems, a model class parameterizing the generator of each Markov chain in the system. Our inference method involves estimating look-ahead functions (twist potentials) that anticipate future information, for which we introduce an efficient parameterization. We incorporate this approximation in a twisted Sequential Monte Carlo sampling scheme. We demonstrate the effectiveness of our approach on a challenging posterior inference task for a latent SIRS model on a graph, and on a neural model for wildfire spread dynamics trained on real data.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Fire Spread Prediction | WildfireSpreadTS (test) | Binary Cross-Entropy0.877 | 16 | |
| Parameter Estimation | SIRS model 32 nodes | α00.115 | 6 | |
| Parameter Estimation | SIRS graph model 64-node | alpha_0 Estimate0.066 | 5 |