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Robust Filtering
Journal article   Open access   Peer reviewed

Robust Filtering

Laurent E. Calvet, Veronika Czellar and Elvezio Ronchetti
Journal of the American Statistical Association, Vol.110(512), pp.1591-1606
01/10/2015

Abstract

Kalman filter Particle filter Robust statistics State-space model Weight degeneracy
Filtering methods are powerful tools to estimate the hidden state of a statespace model from observations available in real time. However, they are known to be highly sensitive to the presence of small misspecifications of the underlying model and to outliers in the observation process. In this paper, we show that the methodology of robust statistics can be adapted to sequential filtering. We define a filter as being robust if the relative error in the state distribution caused by misspecifications is uniformly bounded by a linear function of the perturbation size. Since standard filters are nonrobust even in the simplest cases, we propose robustified filters which provide accurate state and parameter inference in the presence of model misspecifications. In particular, the robust particle filter naturally mitigates the degeneracy problems that plague the bootstrap particle filter (Gordon, Salmond and Smith, 1993) and its many extensions. We illustrate the good properties of robust filters in linear and nonlinear state-space examples.
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4 Electrical Engineering, Electronics & Computer Science
4.29 Automation & Control Systems
4.29.587 Target Tracking
Web of Science research areas
Statistics & Probability
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