Abstract — This paper provides a performance analysis of a least mean square (LMS) dominant invariant subspace algorithm. Based on an unconstrained minimization problem, this algorithm is a stochastic gradient algorithm driving the columns of a matrix W to an orthonormal basis of a dominant invariant subspace of a correlation matrix. We consider the stochastic algorithm governing the evolution of WWH to the projection matrix onto this dominant invariant subspace and study its asymptotic distribution. A closed-form expression of its asymp-totic covariance is given in the case of independent observations and is further analyzed to provide some insights into the behavior of this LMS type algorithm. In particular, it is shown that even though t...
In this article we consider the Data Projection Method (DPM), which constitutes a simple and reliabl...
This work develops ways of describing small and large perturbations of matrix subspaces. It is shown...
A novel random-gradient-based algorithm is developed for online tracking the minor component (MC) as...
ABSTRACT. The LMS adaptive algorithm is the most popular algorithm for adaptive ltering because of i...
A subspace tracking technique has drawn a lot of attentions due to its wide applications. The main o...
Traditional adaptive lters assume that the eective rank of the input signal is the same as the input...
The convergence rate of the Least Mean Squares (LMS) algorithm is poor whenever the adaptive lter in...
In this paper, we address an adaptive estimation method for eigenspaces of covariance matrices. We a...
. The LMS adaptive algorithm is the most popular algorithm for adaptive filtering because of its sim...
Abstract—For the least mean square (LMS) algorithm, we ana-lyze the correlation matrix of the filter...
A new algorithm is presented for principal component anal-ysis and subspace tracking, which improves...
International audienceThis paper studies the behavior of the low rank LMS adaptive algorithm for the...
In this paper the effect of some weighting matrices on the asymptotic variance of the estimates of l...
This paper presents a stochastic model for the least-mean-square algorithm with symmetric/antisymmet...
International audienceIn this paper, we focus on tracking the signal subspace under a sparsity const...
In this article we consider the Data Projection Method (DPM), which constitutes a simple and reliabl...
This work develops ways of describing small and large perturbations of matrix subspaces. It is shown...
A novel random-gradient-based algorithm is developed for online tracking the minor component (MC) as...
ABSTRACT. The LMS adaptive algorithm is the most popular algorithm for adaptive ltering because of i...
A subspace tracking technique has drawn a lot of attentions due to its wide applications. The main o...
Traditional adaptive lters assume that the eective rank of the input signal is the same as the input...
The convergence rate of the Least Mean Squares (LMS) algorithm is poor whenever the adaptive lter in...
In this paper, we address an adaptive estimation method for eigenspaces of covariance matrices. We a...
. The LMS adaptive algorithm is the most popular algorithm for adaptive filtering because of its sim...
Abstract—For the least mean square (LMS) algorithm, we ana-lyze the correlation matrix of the filter...
A new algorithm is presented for principal component anal-ysis and subspace tracking, which improves...
International audienceThis paper studies the behavior of the low rank LMS adaptive algorithm for the...
In this paper the effect of some weighting matrices on the asymptotic variance of the estimates of l...
This paper presents a stochastic model for the least-mean-square algorithm with symmetric/antisymmet...
International audienceIn this paper, we focus on tracking the signal subspace under a sparsity const...
In this article we consider the Data Projection Method (DPM), which constitutes a simple and reliabl...
This work develops ways of describing small and large perturbations of matrix subspaces. It is shown...
A novel random-gradient-based algorithm is developed for online tracking the minor component (MC) as...