© 2018, Allerton Press, Inc. An observation of a cumulative distribution function F with finite variance is said to be contaminated according to the inflated variance model if it has a large probability of coming from the original target distribution F, but a small probability of coming from a contaminating distribution that has the same mean and shape as F, though a larger variance. It is well known that in the presence of data contamination, the ordinary sample mean looses many of its good properties, making it preferable to use more robust estimators. It is insightful to see to what extent an intuitive estimator such as the sample mean becomes less favorable in a contaminated setting. In this paper, we investigate under which conditions ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
In many situations one is interested in identifying observations that come from sources of variation...
This paper investigates a simple procedure to estimate robustly the mean of an asymmetric distributi...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
We study the problem of performing statistical inference based on robust estimates when the distrib...
A contaminated regression model allows a second regression regime to de-scribe a subpopulation to wh...
In many situations one is interested in identifying ...
In order to describe or generate so-called outliers in univariate statistical data, contamination mo...
Academy of Sciences of the Czech Republic An estimator of the contamination level of data is propose...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider in this paper a contamined regression model where the distribution of the contaminating ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
In many situations one is interested in identifying observations that come from sources of variation...
This paper investigates a simple procedure to estimate robustly the mean of an asymmetric distributi...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
We study the problem of performing statistical inference based on robust estimates when the distrib...
A contaminated regression model allows a second regression regime to de-scribe a subpopulation to wh...
In many situations one is interested in identifying ...
In order to describe or generate so-called outliers in univariate statistical data, contamination mo...
Academy of Sciences of the Czech Republic An estimator of the contamination level of data is propose...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider in this paper a contamined regression model where the distribution of the contaminating ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...