Journal ArticleAbstract-This paper presents an adaptive step-size gradient adaptive filter. The step size of the adaptive filter is changed according to a gradient descent algorithm designed to reduce the squared estimation error during each iteration. An approximate analysis of the performance of the adaptive filter when its inputs are zero mean, white, and Gaussian and the set of optimal coefficients are time varying according to a random walk model is presented in the paper. The algorithm has very good convergence speed and low steady-state misadjustment. Furthermore, the tracking performance of these algorithms in nonstationary environments is relatively insensitive to the choice of the parameters of the adaptive filter and is very clos...
Journal ArticleAbstract-This paper presents a theoretical analysis of the stochastic gradient adapti...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
Journal ArticleThis paper presents two adaptive step-size gradient adaptive filters. The step sizes ...
Journal ArticleAbstract-Convergence analysis of stochastic gradient adaptive filters using the sign ...
AbstractWe propose a new adaptive algorithm with decreasing step-size for stochastic approximations....
We design step-size schemes that make stochastic gradient descent (SGD) adaptive to (i) the noise σ ...
A stochastic approximation (SA) algorithm with new adaptive step sizes for solving unconstrained mi...
We propose a new adaptive algorithm with decreasing step-size for stochastic approximations. The use...
Adaptive filtering is a technique used to implement filtering in time-varying environments. The alg...
We propose a new adaptive algorithm with decreasing step-size for stochastic approximations. The use...
This paper develops the optimality criterion governing the choice of the convergence factor for the ...
DoctorAdaptive filters that self-adjust their transfer functions according to optimization algorithm...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
We study convergence rates of AdaGrad-Norm as an exemplar of adaptive stochastic gradient methods (S...
Journal ArticleAbstract-This paper presents a theoretical analysis of the stochastic gradient adapti...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...
Journal ArticleThis paper presents two adaptive step-size gradient adaptive filters. The step sizes ...
Journal ArticleAbstract-Convergence analysis of stochastic gradient adaptive filters using the sign ...
AbstractWe propose a new adaptive algorithm with decreasing step-size for stochastic approximations....
We design step-size schemes that make stochastic gradient descent (SGD) adaptive to (i) the noise σ ...
A stochastic approximation (SA) algorithm with new adaptive step sizes for solving unconstrained mi...
We propose a new adaptive algorithm with decreasing step-size for stochastic approximations. The use...
Adaptive filtering is a technique used to implement filtering in time-varying environments. The alg...
We propose a new adaptive algorithm with decreasing step-size for stochastic approximations. The use...
This paper develops the optimality criterion governing the choice of the convergence factor for the ...
DoctorAdaptive filters that self-adjust their transfer functions according to optimization algorithm...
In this book, the authors provide insights into the basics of adaptive filtering, which are particul...
We study convergence rates of AdaGrad-Norm as an exemplar of adaptive stochastic gradient methods (S...
Journal ArticleAbstract-This paper presents a theoretical analysis of the stochastic gradient adapti...
Adaptive filters that self-adjust their transfer functions according to optimizing algorithms are po...
This paper derives an expression for the optimal error nonlinearity in adaptive filter design. Usi...