A Stable Particle Filter in High-Dimensions
Alex Beskos, Dan Crisan, Ajay Jasra, Kengo Kamatani, Yan Zhou

TL;DR
This paper introduces a novel space-time particle filter designed for high-dimensional state-space models, demonstrating improved stability and scalability over traditional particle filters through theoretical analysis and numerical simulations.
Contribution
The paper develops a new particle filter that maintains stability in high dimensions and scales better than standard methods, with theoretical guarantees and practical validation.
Findings
The space-time particle filter exhibits stability properties as dimension increases.
The algorithm scales with cost (nNd^2) independently of dimension.
Numerical simulations confirm improved performance in high-dimensional models.
Abstract
We consider the numerical approximation of the filtering problem in high dimensions, that is, when the hidden state lies in with large. For low dimensional problems, one of the most popular numerical procedures for consistent inference is the class of approximations termed particle filters or sequential Monte Carlo methods. However, in high dimensions, standard particle filters (e.g. the bootstrap particle filter) can have a cost that is exponential in for the algorithm to be stable in an appropriate sense. We develop a new particle filter, called the \emph{space-time particle filter}, for a specific family of state-space models in discrete time. This new class of particle filters provide consistent Monte Carlo estimates for any fixed , as do standard particle filters. Moreover, we expect that the state-space particle filter will scale much better with than…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Particle Dynamics in Fluid Flows
