AbstractIn this paper we consider robust parameter estimation based on a certain cross entropy and divergence. The robust estimate is defined as the minimizer of the empirically estimated cross entropy. It is shown that the robust estimate can be regarded as a kind of projection from the viewpoint of a Pythagorean relation based on the divergence. This property implies that the bias caused by outliers can become sufficiently small even in the case of heavy contamination. It is seen that the asymptotic variance of the robust estimator is naturally overweighted in proportion to the ratio of contamination. One may surmise that another form of cross entropy can present the same behavior as that discussed above. It can be proved under some condi...
Abstract. There are several methods for obtaining very robust estimates of regression parameters tha...
nP i=1 lg e(xi; v) in the cross-entropy H (X; e) = P x2X p(x) lg(e(x; v)) where p(v) is a real pro...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
AbstractIn this paper we consider robust parameter estimation based on a certain cross entropy and d...
We consider a robust parameter estimator minimizing an empirical approximation to the q-entropy and ...
This reports describes the basic ideas behind a novel parameter identification algorithm exhibiting ...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
This paper describes the basic ideas behind a novel prediction error parameter identification algori...
We study the problem of performing statistical inference based on robust estimates when the distrib...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
A new class of estimates for the linear model is introduced. These estimates, that we call C-estimat...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
ABSTRACT: In the present paper we will establish a fundamental result which has been used in the pri...
Relative error estimation has been recently used in regression analysis. A crucial issue of the exis...
Abstract. There are several methods for obtaining very robust estimates of regression parameters tha...
nP i=1 lg e(xi; v) in the cross-entropy H (X; e) = P x2X p(x) lg(e(x; v)) where p(v) is a real pro...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
AbstractIn this paper we consider robust parameter estimation based on a certain cross entropy and d...
We consider a robust parameter estimator minimizing an empirical approximation to the q-entropy and ...
This reports describes the basic ideas behind a novel parameter identification algorithm exhibiting ...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
This paper describes the basic ideas behind a novel prediction error parameter identification algori...
We study the problem of performing statistical inference based on robust estimates when the distrib...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
A new class of estimates for the linear model is introduced. These estimates, that we call C-estimat...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
The principle of minimum cross-entropy is an inference procedure for specifying an updated probabili...
ABSTRACT: In the present paper we will establish a fundamental result which has been used in the pri...
Relative error estimation has been recently used in regression analysis. A crucial issue of the exis...
Abstract. There are several methods for obtaining very robust estimates of regression parameters tha...
nP i=1 lg e(xi; v) in the cross-entropy H (X; e) = P x2X p(x) lg(e(x; v)) where p(v) is a real pro...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...