Publication | Closed Access
A Closed Form Solution for a Nonlinear Wiener Filter
16
Citations
9
References
2006
Year
Unknown Venue
Nonlinear ExtensionNonlinear System IdentificationNonlinear FilteringEngineeringFiltering TechniqueWiener FilterNonlinear Wiener FilterNonlinear Signal ProcessingAutocorrelation FunctionSignal ProcessingFilter (Signal Processing)Nonlinear Time Series
In this paper a nonlinear extension to the Wiener filter is presented. A direct approach has been devised of replacing the autocorrelation function with a novel function called correntropy, derived from ideas on kernel-based learning theory and information theoretic learning. The linear Wiener filter, widely used because of its simplicity and optimality for linear systems and Gaussian distribution, is no longer effective when dealing with nonlinear time series data. The proposed method incorporates higher order moments in the general form of autocorrelation and improves upon the linear filter. Moreover, the computation cost is still lower than some kernel based methods and has a closed form solution to the problem unlike neural network based methods.
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