Many univariate robust estimators are based on quantiles. As already theoretically pointed out by Fernholz (in J. Stat. Plan. Inference 57(1), 29-38, 1997), smoothing the empirical distribution function with an appropriate kernel and bandwidth can reduce the variance and mean squared error (MSE) of some quantile-based estimators in small data sets. In this paper we apply this idea on several robust estimators of location, scale and skewness. We propose a robust bandwidth selection and bias reduction procedure. We show that the use of this smoothing method indeed leads to smaller MSEs, also at contaminated data sets. In particular, we obtain better performances for the medcouple which is a robust measure of skewness that can be used for outl...
The presence of outliers is a common feature in real data applications. It has been well established...
Quantile and semiparametric M estimation are methods for estimating a censored linear regression mod...
To develop estimators with stronger efficiencies than the trimmed means which use the empirical quan...
In this study, we consider some of univariate quantile-based robust estimators. We focus on the esti...
Statistics deals with gaining information from data. In practice, data often contain some randomness...
In the density estimation it is known that estimators are heavily biased. We applied a bias reducing...
In the density estimation it is known that estimators are heavily biased. We applied a bias reducing...
The analysis of the empirical distribution of univariate data often includes the computation of loca...
This is an Accepted Manuscript of an article published by Taylor & Francis in Journal of Business an...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
In statistics, classical methods often heavily rely on assumptions which cannot always be met in pra...
When using small area estimation models, the presence of outlying observations in the response and/o...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
In this article, we summarize some quantile estimators and related bandwidth selection methods and g...
The presence of outliers is a common feature in real data applications. It has been well established...
Quantile and semiparametric M estimation are methods for estimating a censored linear regression mod...
To develop estimators with stronger efficiencies than the trimmed means which use the empirical quan...
In this study, we consider some of univariate quantile-based robust estimators. We focus on the esti...
Statistics deals with gaining information from data. In practice, data often contain some randomness...
In the density estimation it is known that estimators are heavily biased. We applied a bias reducing...
In the density estimation it is known that estimators are heavily biased. We applied a bias reducing...
The analysis of the empirical distribution of univariate data often includes the computation of loca...
This is an Accepted Manuscript of an article published by Taylor & Francis in Journal of Business an...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of th...
Small area estimators associated with M-quantile regression methods have been recently proposed by C...
In statistics, classical methods often heavily rely on assumptions which cannot always be met in pra...
When using small area estimation models, the presence of outlying observations in the response and/o...
In this paper we propose two bias correction approaches in order to reduce the prediction bias of t...
In this article, we summarize some quantile estimators and related bandwidth selection methods and g...
The presence of outliers is a common feature in real data applications. It has been well established...
Quantile and semiparametric M estimation are methods for estimating a censored linear regression mod...
To develop estimators with stronger efficiencies than the trimmed means which use the empirical quan...