Black-box Variational Inference for Stochastic Differential Equations
Ryder, Thomas, Golightly, Andrew, McGough, A. Stephen, Prangle, Dennis
Parameter inference for stochastic differential equations is challenging due to the presence of a latent diffusion process. Working with an Euler-Maruyama discretisation for the diffusion, we use variational inference to jointly learn the parameters and the diffusion paths. We use a standard mean-field variational approximation of the parameter posterior, and introduce a recurrent neural network to approximate the posterior for the diffusion paths conditional on the parameters. This neural network learns how to provide Gaussian state transitions which bridge between observations in a very similar way to the conditioned diffusion process. The resulting black-box inference method can be applied to any SDE system with light tuning requirements. We illustrate the method on a Lotka-Volterra system and an epidemic model, producing accurate parameter estimates in a few hours.
Mar-13-2018
- Country:
- Asia (0.28)
- Genre:
- Research Report (0.64)
- Industry:
- Transportation > Air (0.62)
- Health & Medicine
- Therapeutic Area (0.49)
- Epidemiology (0.47)
- Technology: