Quantile regression has become a powerful complement to the usual mean regression. A simple approach to use quantile regression in marginal analysis of longitudinal data is to assume working independence. However, this may incur potential efficiency loss. On the other hand, correctly specifying a working correlation in quantile regression can be difficult. We propose a new quantile regression model by combining multiple sets of unbiased estimating equations. This approach can account for correlations between the repeated measurements and produce more efficient estimates. Because the objective function is discrete and non-convex, we propose induced smoothing for fast and accurate computation of the parameter estimates, as well as their asymp...
<p>In linear quantile regression, the regression coefficients for different quantiles are typically ...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
As an alternative to the mean regression model, the quantile regression model has been studied exten...
Quantile regression is a powerful statistical methodology that complements the classical linear regr...
This paper proposes a linear quantile regression analysis method for longitudinal data that combines...
Quantile regression is a powerful statistical methodology that complements the classical linear reg...
This thesis consists of four papers dealing with estimation and inference for quantile regression of...
Specifying a correlation matrix is challenging in quantile regression with longitudinal data. A naiv...
We provide an overview of linear quantile regression models for continuous responses repeatedly meas...
This paper examines a weighted version of the quantile regression estimator defined by Koenker and B...
In ordinary quantile regression, quantiles of different order are estimated one at a time. An altern...
We propose to smooth the entire objective function rather than only the check function in a linear q...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
AbstractThe penalized least squares interpretation of the classical random effects estimator suggest...
Quantile regression, as a generalization of median regression, has been widely used in statistical m...
<p>In linear quantile regression, the regression coefficients for different quantiles are typically ...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
As an alternative to the mean regression model, the quantile regression model has been studied exten...
Quantile regression is a powerful statistical methodology that complements the classical linear regr...
This paper proposes a linear quantile regression analysis method for longitudinal data that combines...
Quantile regression is a powerful statistical methodology that complements the classical linear reg...
This thesis consists of four papers dealing with estimation and inference for quantile regression of...
Specifying a correlation matrix is challenging in quantile regression with longitudinal data. A naiv...
We provide an overview of linear quantile regression models for continuous responses repeatedly meas...
This paper examines a weighted version of the quantile regression estimator defined by Koenker and B...
In ordinary quantile regression, quantiles of different order are estimated one at a time. An altern...
We propose to smooth the entire objective function rather than only the check function in a linear q...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
AbstractThe penalized least squares interpretation of the classical random effects estimator suggest...
Quantile regression, as a generalization of median regression, has been widely used in statistical m...
<p>In linear quantile regression, the regression coefficients for different quantiles are typically ...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
As an alternative to the mean regression model, the quantile regression model has been studied exten...