An M-quantile regression model is developed for the analysis of multiple dependent outcomes by introducing the notion of directional M-quantiles for multivariate responses. In order to incorporate the correlation structure of the data into the estimation framework, a robust marginal M-quantile model is proposed extending the well-known generalized estimating equations approach to the case of regression M-quantiles with Huber's loss function. The estimation of the model and the asymptotic properties of estimators are discussed. In addition, the idea of M-quantile contours is introduced to describe the dependence between the response variables and to investigate the effect of covariates on the location, spread and shape of the distribution of...
The quantile regression model is an active area of statistical research that has received a lot of a...
In this article, we develop a unified regression approach to model unconditional quantiles, M-quanti...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
Motivated by the analysis of data from the UK Millennium Cohort Study on emotional and behavioural d...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
M-quantile regression generalizes both quantile and expectile regression using M-estimation ideas. T...
Quantile regression investigates the conditional quantile func-tions of a response variables in term...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
In this paper we develop the unconditional M-quantile regression for modeling unconditional M-quanti...
This paper develops a Mixed Hidden Markov Model for joint estimation of multiple quantiles in a mult...
Quantile regression models are a powerful tool for studying different points of the conditional dist...
The quantile regression model is an active area of statistical research that has received a lot of a...
In this article, we develop a unified regression approach to model unconditional quantiles, M-quanti...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
An M-quantile regression model is developed for the analysis of multiple dependent outcomes by intro...
In the present work we generalize the univariate M-quantile regression to the analysis of multivaria...
Motivated by the analysis of data from the UK Millennium Cohort Study on emotional and behavioural d...
The goal of this thesis is to bridge the gap between univariate and multivariate quantiles by extend...
M-quantile regression generalizes both quantile and expectile regression using M-estimation ideas. T...
Quantile regression investigates the conditional quantile func-tions of a response variables in term...
Parametric and semiparametric regression beyond the mean have become important tools for multivariat...
This paper proposes a maximum likelihood approach to jointly estimate marginal conditional quantiles...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...
In this paper we develop the unconditional M-quantile regression for modeling unconditional M-quanti...
This paper develops a Mixed Hidden Markov Model for joint estimation of multiple quantiles in a mult...
Quantile regression models are a powerful tool for studying different points of the conditional dist...
The quantile regression model is an active area of statistical research that has received a lot of a...
In this article, we develop a unified regression approach to model unconditional quantiles, M-quanti...
Quantile regression investigates the conditional quantile functions of a response variable in terms ...