Title of article :
The Kernel Recursive Least-Squares Algorithm
Author/Authors :
Y. Engel، نويسنده , , S. Mannor، نويسنده , , and R. Meir، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
We present a nonlinear version of the recursive least
squares (RLS) algorithm. Our algorithm performs linear regression
in a high-dimensional feature space induced by a Mercer
kernel and can therefore be used to recursively construct minimum
mean-squared-error solutions to nonlinear least-squares problems
that are frequently encountered in signal processing applications.
In order to regularize solutions and keep the complexity of the
algorithm bounded, we use a sequential sparsification process that
admits into the kernel representation a new input sample only if
its feature space image cannot be sufficiently well approximated
by combining the images of previously admitted samples. This
sparsification procedure allows the algorithm to operate online,
often in real time. We analyze the behavior of the algorithm,
compare its scaling properties to those of support vector machines,
and demonstrate its utility in solving two signal processing
problems—time-series prediction and channel equalization.
Keywords :
online algorithms , Recursive estimation , recursive least squares. , Kernel methods , nonlinear regression
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING
Journal title :
IEEE TRANSACTIONS ON SIGNAL PROCESSING