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Stability of Optimal Filter Higher-Order Derivatives

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arxiv 1806.09595 v3 pith:HNCQJSH2 submitted 2018-06-25 math.PR math.OCmath.STstat.TH

Stability of Optimal Filter Higher-Order Derivatives

classification math.PR math.OCmath.STstat.TH
keywords derivativesfilteroptimalhigher-orderparameterstabilitystate-spaceconditions
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In many scenarios, a state-space model depends on a parameter which needs to be inferred from data. Using stochastic gradient search and the optimal filter (first-order) derivative, the parameter can be estimated online. To analyze the asymptotic behavior of online methods for parameter estimation in non-linear state-space models, it is necessary to establish results on the existence and stability of the optimal filter higher-order derivatives. The existence and stability properties of these derivatives are studied here. We show that the optimal filter higher-order derivatives exist and forget initial conditions exponentially fast. We also show that the optimal filter higher-order derivatives are geometrically ergodic. The obtained results hold under (relatively) mild conditions and apply to state-space models met in practice.

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