Publication | Closed Access
Optimal Estimation in the Presence of Unknown Parameters
108
Citations
5
References
1969
Year
State EstimationAdaptive FilterStatistical Signal ProcessingParameter IdentificationEngineeringMachine LearningParameter EstimationUncertainty QuantificationHidden Markov ModelUnknown ParametersSystems EngineeringSignal ProcessingInverse ProblemsStatistical InferenceBayes OptimalSeparation TechniqueEstimation TheoryStatistics
An adaptive approach is presented for optimal estimation of a sampled stochastic process with finite-state unknown parameters. It is shown that, for processes with an implicit generalized Markov property, the optimal (conditional mean) state estimates can be formed from 1) a set of optimal estimates based on known parameters, and 2) a set of "learning" statistics which are recursively updated. The formulation thus provides a separation technique which simplifies the optimal solution of this class of nonlinear estimation problems. Examples of the separation technique are given for prediction of a non-Gaussian Markov process with unknown parameters and for filtering the state of a Gauss-Markov process with unknown parameters. General results are given on the convergence of optimal estimation systems operating in the presence of unknown parameters. Conditions are given under which a Bayes optimal (conditional mean) adaptive estimation system will converge in performance to an optimal system which is "told" the value of unknown parameters.
| Year | Citations | |
|---|---|---|
Page 1
Page 1