Two robust estimators of a matrix-valued location parameter are introduced and discussed. Each is the average of the members of a subsample–typically of covariance or cross-spectrum matrices–with the subsample chosen to minimize a function of its average. In one case this function is the Kullback–Leibler discrimination information loss incurred when the subsample is summarized by its average; in the other it is the determinant, subject to a certain side condition. For each, the authors give an efficient computing algorithm, and show that the estimator has, asymptotically, the maximum possible breakdown point. The main motivation is the need for efficient and robust estimation of cross-spectrum matrices, and they present a case study in whic...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...
An original interface between robust estimation theory and random matrix theory for the estimation o...
International audienceAn original interface between robust estimation theory and random matrix theor...
The estimation of covariance matrices is of prime importance to analyze the distribution of multivar...
The information matrix (IM) equality can be used to test for misspecification of a parametric model....
International audienceIn many statistical signal processing applications, the estimation of nuisance...
Abstract—A number of signal processing applications require the estimation of covariance matrices. S...
Reliable estimation of covariance matrices from high-dimen-sional electroencephalographic recordings...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
A modified version of the usual M-estimation problem is proposed, and sample median is shown to be a...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
Let X,V1,...,Vn-1 be n random vectors in with joint density of the formwhere both [theta] and [Sigma...
International audienceCovariance matrices usually exhibit specific spectral structures, such as low-...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...
An original interface between robust estimation theory and random matrix theory for the estimation o...
International audienceAn original interface between robust estimation theory and random matrix theor...
The estimation of covariance matrices is of prime importance to analyze the distribution of multivar...
The information matrix (IM) equality can be used to test for misspecification of a parametric model....
International audienceIn many statistical signal processing applications, the estimation of nuisance...
Abstract—A number of signal processing applications require the estimation of covariance matrices. S...
Reliable estimation of covariance matrices from high-dimen-sional electroencephalographic recordings...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
A modified version of the usual M-estimation problem is proposed, and sample median is shown to be a...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
Let X,V1,...,Vn-1 be n random vectors in with joint density of the formwhere both [theta] and [Sigma...
International audienceCovariance matrices usually exhibit specific spectral structures, such as low-...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
International audienceThe Sample Covariance Matrix (SCM) is widely used in signal processing applica...
International audienceIn array processing, a common problem is to estimate the angles of arrival of ...