In this paper the steady-state tracking performance of minimum kernel risk-sensitive loss (MKRSL) in a non-stationary environment is analyzed. In order to model a non-stationary environment, a first-order random-walk model is used to describe the variations of optimum weight vector over time. Moreover, the measurement noise is considered to have non-Gaussian distribution. The energy conservation relation is utilized to extract an approximate closed-form expression for the steady-state excess mean square error (EMSE). Our analysis shows that unlike for the stationary case, the EMSE curve is not an increasing function of step-size parameter. Hence, the optimum step-size which minimizes the EMSE is derived. We also discuss that our approach ca...
Recently, inspired by correntropy, kernel risk-sensitive loss (KRSL) has emerged as a novel nonlinea...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
The kernel least-mean-square (KLMS) algorithm is a popular algorithm in nonlinear adaptive filtering...
International audienceThe kernel least-mean-square (KLMS) algorithm is a popular algorithm in nonlin...
In a recent work we proposed a kernel recursive least-squares tracker (KRLS-T) algorithm that is cap...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Tracking analysis of the normalized least mean square (NLMS) algorithm is carried out in the presenc...
Generally in most of the applications of estimation theory using the Method of Maximum Likelihood Es...
Tracking analysis of normalized adaptive algorithms is carried out in the presence of two sources of...
Journal ArticleAbstract-This paper presents a tracking analysis of the adaptive filters equipped wit...
Adaptive signal processing algorithms derived from LS (least squares) cost functions are known to co...
Adaptive filtering is in principle intended for tracking non-stationary systems. However, most adapt...
This paper considers robust filtering for a nominal Gaussian state-space model, when a rela...
Abstract—Kernel adaptive filters have drawn increasing attention due to their advantages such as uni...
Recently, inspired by correntropy, kernel risk-sensitive loss (KRSL) has emerged as a novel nonlinea...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...
The kernel least-mean-square (KLMS) algorithm is a popular algorithm in nonlinear adaptive filtering...
International audienceThe kernel least-mean-square (KLMS) algorithm is a popular algorithm in nonlin...
In a recent work we proposed a kernel recursive least-squares tracker (KRLS-T) algorithm that is cap...
In this paper, the problem of designing the feasible Kalman filter under a non-Gaussian stochastic e...
Tracking analysis of the normalized least mean square (NLMS) algorithm is carried out in the presenc...
Generally in most of the applications of estimation theory using the Method of Maximum Likelihood Es...
Tracking analysis of normalized adaptive algorithms is carried out in the presence of two sources of...
Journal ArticleAbstract-This paper presents a tracking analysis of the adaptive filters equipped wit...
Adaptive signal processing algorithms derived from LS (least squares) cost functions are known to co...
Adaptive filtering is in principle intended for tracking non-stationary systems. However, most adapt...
This paper considers robust filtering for a nominal Gaussian state-space model, when a rela...
Abstract—Kernel adaptive filters have drawn increasing attention due to their advantages such as uni...
Recently, inspired by correntropy, kernel risk-sensitive loss (KRSL) has emerged as a novel nonlinea...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
A large class of physical phenomenon observed in practice exhibit non-Gaussian behavior. In this let...