We study the properties of an M-estimator arising from the minimization of an integrated version of the quantile loss function. The estimator depends on a tuning parameter which controls the degree of robustness. We show that the sample median and the sample mean are obtained as limit cases. Consistency and asymptotic normality are established and a link with the Hodges\u2013Lehmann estimator and the Wilcoxon test is discussed. Asymptotic results indicate that high levels of efficiency can be reached by specific choices of the tuning parameter. A Monte Carlo analysis investigates the finite sample properties of the estimator. Results indicate that efficiency can be preserved in finite samples by setting the tuning parameter to a low fractio...
In experimental science measurements are typically repeated only a few times, yielding a sample size...
Robust estimation often relies on a dispersion function that is more slowly varying at large values ...
Many univariate robust estimators are based on quantiles. As already theoretically pointed out by Fe...
We study the properties of an M-estimator arising from the minimization of an integrated version of ...
A modified version of the usual M-estimation problem is proposed, and sample median is shown to be a...
A novel method is proposed for choosing the tuning parameter associated with a family of robust esti...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Simultaneous robust estimates of location and scale parameters are derived from minimizing a minimum...
A problem which often arises in statistical signal processing is the detection of a parameterized si...
Robust estimation, M-, L- and R-estimators, asymptotic biases, asymptotic variances, asymmetric cont...
Optimal robust M-estimates of a multidimensional parameter are described using Hampel's infinitesima...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
Robust optimization determines how the input variables dispersion is propagated on the output variab...
In experimental science measurements are typically repeated only a few times, yielding a sample size...
Robust estimation often relies on a dispersion function that is more slowly varying at large values ...
Many univariate robust estimators are based on quantiles. As already theoretically pointed out by Fe...
We study the properties of an M-estimator arising from the minimization of an integrated version of ...
A modified version of the usual M-estimation problem is proposed, and sample median is shown to be a...
A novel method is proposed for choosing the tuning parameter associated with a family of robust esti...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Small-area estimation techniques have typically relied on plug-in estimation based on models contain...
Simultaneous robust estimates of location and scale parameters are derived from minimizing a minimum...
A problem which often arises in statistical signal processing is the detection of a parameterized si...
Robust estimation, M-, L- and R-estimators, asymptotic biases, asymptotic variances, asymmetric cont...
Optimal robust M-estimates of a multidimensional parameter are described using Hampel's infinitesima...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
Robust optimization determines how the input variables dispersion is propagated on the output variab...
In experimental science measurements are typically repeated only a few times, yielding a sample size...
Robust estimation often relies on a dispersion function that is more slowly varying at large values ...
Many univariate robust estimators are based on quantiles. As already theoretically pointed out by Fe...