Publication | Closed Access
Kernel LMS
34
Citations
8
References
2007
Year
Unknown Venue
Kernel LmsAdaptive FilterNonlinear Adaptive AlgorithmNonlinear FilteringMachine LearningData ScienceEngineeringNonlinear Signal ProcessingAdaptive AlgorithmSignal ProcessingKernel MethodNonlinear Time Series
In this paper a nonlinear adaptive algorithm based on a kernel space least mean squares (LMS) approach is presented. With most of the neural network based methods for time series modeling it is difficult to implement a sample-by-sample adaptation method. This puts a serious limitation on the applicability of adaptive nonlinear filters in many optimal signal processing and communication applications where data arrives sequentially. This paper shows that the kernel LMS algorithm provides a computational simple and an effective algorithm to train nonlinear systems for system modeling without the need for regularization, without convergence to local minima and without the need for a separate book of data as a training set.
| Year | Citations | |
|---|---|---|
Page 1
Page 1