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SIGPRO
2016

Moment conditions for convergence of particle filters with unbounded importance weights

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Moment conditions for convergence of particle filters with unbounded importance weights
In this paper, we derive moment conditions for particle filter importance weights, which ensure the mean square and almost sure convergence of particle filter estimates even when the importance weights are unbounded. The result extends the previously derived conditions by not requiring the boundedness of weights, but only finite second or fourth order moments. We show that the boundedness of the second order moments of the weights implies the convergence of the estimates bounded functions in the mean square sense, and the L4 convergence as well as the almost sure convergence are assured by the boundedness of the fourth order moments of the weights. We also present an example class of models and importance distributions where the moment conditions hold, but the boundedness does not. The unboundedness in these models is caused by isolated singularities in the weights which still leave the weight moments bounded. We show by using simulated data that the particle filter for this kind ...
Isambi S. Mbalawata, Simo Särkkä
Added 09 Apr 2016
Updated 09 Apr 2016
Type Journal
Year 2016
Where SIGPRO
Authors Isambi S. Mbalawata, Simo Särkkä
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