Sparse system identification has received a great deal of attention due to its broad applicability. The proportionate normalized least mean square (PNLMS) algorithm, as a popular tool, achieves excellent performance for sparse system identification. In previous studies, most of the cost functions used in proportionate-type sparse adaptive algorithms are based on the mean square error (MSE) criterion, which is optimal only when the measurement noise is Gaussian. However, this condition does not hold in most real-world environments. In this work, we use the minimum error entropy (MEE) criterion, an alternative to the conventional MSE criterion, to develop the proportionate minimum error entropy (PMEE) algorithm for sparse system identificatio...
A general framework is proposed to derive proportionate adaptive algorithms for sparse system identi...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
Sparse system identification has received a great deal of attention due to its broad applicability. ...
This work proposes a linear phase sparse minimum error entropy adaptive filtering algorithm. The lin...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
To address the sparse system identification problem under noisy input and non-Gaussian output measur...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
In this paper, we propose Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an altern...
The minimum error entropy (MEE) algorithm is known to be superior in signal processing applications ...
A general zero attraction (GZA) proportionate normalized maximum correntropy criterion (GZA-PNMCC) a...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
As one of the recently proposed algorithms for sparse system identification, l0 norm constraint Leas...
A general framework is proposed to derive proportionate adaptive algorithms for sparse system identi...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...
Sparse system identification has received a great deal of attention due to its broad applicability. ...
This work proposes a linear phase sparse minimum error entropy adaptive filtering algorithm. The lin...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
To address the sparse system identification problem under noisy input and non-Gaussian output measur...
In this paper, we develop the adaptive algorithm for system identification where the model is sparse...
Abstract—In order to improve the performance of Least Mean Square (LMS) based system identification ...
In this paper, we propose Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an altern...
The minimum error entropy (MEE) algorithm is known to be superior in signal processing applications ...
A general zero attraction (GZA) proportionate normalized maximum correntropy criterion (GZA-PNMCC) a...
2 In this paper, we propose a Minimum Error Entropy with self adjusting step-size (MEE-SAS) as an al...
Standard least mean square/fourth (LMS/F) is a classical adaptive algorithm that combined the advant...
As one of the recently proposed algorithms for sparse system identification, l0 norm constraint Leas...
A general framework is proposed to derive proportionate adaptive algorithms for sparse system identi...
Abstract—We consider adaptive system identification problems with convex constraints and propose a f...
Sparse system identification has attracted much attention in the field of adaptive algorithms, and t...