Relative error estimation has been recently used in regression analysis. A crucial issue of the existing relative error estimation procedures is that they are sensitive to outliers. To address this issue, we employ the γ -likelihood function, which is constructed through γ -cross entropy with keeping the original statistical model in use. The estimating equation has a redescending property, a desirable property in robust statistics, for a broad class of noise distributions. To find a minimizer of the negative γ -likelihood function, a majorize-minimization (MM) algorithm is constructed. The proposed algorithm is guaranteed to decrease the negative γ -likelihood function at each iteration. We also ...
Maximum likelihood (ML) is a popular and widely used statistical method, and while it is effective, ...
A reasonable approach to robust regression estimation is minimizing a robust scale estimator of the...
The Kaplan-Meier estimator of a survival function is well known to be asymp- totically efficient whe...
International audienceIn this paper, we studied an alternative estimator of the regression function ...
In this paper, we propose the problem of estimating a regression function recursively based on the m...
AbstractIn this paper we consider robust parameter estimation based on a certain cross entropy and d...
International audienceThis paper deals with the problem of nonparametric relative error regression f...
We first review the concepts fundamental to the statistical inference procedures using nonparametric...
International audienceThis article considers an adaptive method based on the relative error criteria...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
Let $ (T_i)_{i }$ be a sequence of independent identically distributed (i.i.d.) random variables (r...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
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 ...
This paper describes the basic ideas behind a novel prediction error parameter identification algori...
Maximum likelihood (ML) is a popular and widely used statistical method, and while it is effective, ...
A reasonable approach to robust regression estimation is minimizing a robust scale estimator of the...
The Kaplan-Meier estimator of a survival function is well known to be asymp- totically efficient whe...
International audienceIn this paper, we studied an alternative estimator of the regression function ...
In this paper, we propose the problem of estimating a regression function recursively based on the m...
AbstractIn this paper we consider robust parameter estimation based on a certain cross entropy and d...
International audienceThis paper deals with the problem of nonparametric relative error regression f...
We first review the concepts fundamental to the statistical inference procedures using nonparametric...
International audienceThis article considers an adaptive method based on the relative error criteria...
The concept and the mathematical properties of entropy play an im- portant role in statistics, cyber...
Let $ (T_i)_{i }$ be a sequence of independent identically distributed (i.i.d.) random variables (r...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
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 ...
This paper describes the basic ideas behind a novel prediction error parameter identification algori...
Maximum likelihood (ML) is a popular and widely used statistical method, and while it is effective, ...
A reasonable approach to robust regression estimation is minimizing a robust scale estimator of the...
The Kaplan-Meier estimator of a survival function is well known to be asymp- totically efficient whe...