Multilevel Particle Filters for the Non-Linear Filtering Problem in Continuous Time (1907.06328v3)
Abstract: In the following article we consider the numerical approximation of the non-linear filter in continuous-time, where the observations and signal follow diffusion processes. Given access to high-frequency, but discrete-time observations, we resort to a first order time discretization of the non-linear filter, followed by an Euler discretization of the signal dynamics. In order to approximate the associated discretized non-linear filter, one can use a particle filter (PF). Under assumptions, this can achieve a mean square error of $\mathcal{O}(\epsilon2)$, for $\epsilon>0$ arbitrary, such that the associated cost is $\mathcal{O}(\epsilon{-4})$. We prove, under assumptions, that the multilevel particle filter (MLPF) of Jasra et al (2017) can achieve a mean square error of $\mathcal{O}(\epsilon2)$, for cost $\mathcal{O}(\epsilon{-3})$. This is supported by numerical simulations in several examples.
- Ajay Jasra (116 papers)
- Fangyuan Yu (13 papers)
- Jeremy Heng (17 papers)