International audienceCharlier et al. (2015a,b) developed a new nonparametric quantile regression method based on the concept of optimal quantization and showed that the resulting estimators often dominate their classical, kernel-type, competitors. The construction, however, remains limited to single-output quantile regression. In the present work, we therefore extend the quantization-based quantile regression method to the multiple-output context. We show how quantization allows to approximate the population multiple-output regression quantiles introduced in Hallin et al. (2015), which are conditional versions of the location multivariate quantiles from Hallin et al. (2010). We prove that this approximation becomes arbitrarily accurate as ...
Based on the novel concept of multivariate center-outward quantiles introduced recently in Chernozhu...
Quantile regression extends the statistical analysis of the response models beyond conditional means...
A procedure relying on linear programming techniques is developed to compute (regression) quantile r...
International audienceCharlier et al. (2015a,b) developed a new nonparametric quantile regression me...
Charlier et al. (2015a,b) developed a new nonparametric quantile regression method based on the conc...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
A new quantile regression concept, based on a directional version of Koenker and Bassett's tradition...
Quantile regression is about estimating the quantiles of some d-dimensional response Y conditional o...
A new multivariate concept of quantile, based on a directional version of Koenker and Bassett’s trad...
In this paper, we use quantization to construct a nonparametric estimator of conditional quantiles o...
This paper presents a Bayesian approach to multiple-output quantile regression. The unconditional mo...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
Based on the novel concept of multivariate center-outward quantiles introduced recently in Chernozhu...
Quantile regression extends the statistical analysis of the response models beyond conditional means...
A procedure relying on linear programming techniques is developed to compute (regression) quantile r...
International audienceCharlier et al. (2015a,b) developed a new nonparametric quantile regression me...
Charlier et al. (2015a,b) developed a new nonparametric quantile regression method based on the conc...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Small-sample properties of a nonparametric estimator of conditional quantiles based on optimal quant...
Quantile regression is a popular method with a wide range of scientific applications, but the comput...
A new quantile regression concept, based on a directional version of Koenker and Bassett's tradition...
Quantile regression is about estimating the quantiles of some d-dimensional response Y conditional o...
A new multivariate concept of quantile, based on a directional version of Koenker and Bassett’s trad...
In this paper, we use quantization to construct a nonparametric estimator of conditional quantiles o...
This paper presents a Bayesian approach to multiple-output quantile regression. The unconditional mo...
© 2020, Springer-Verlag GmbH Germany, part of Springer Nature. The widespread use of quantile regres...
Based on the novel concept of multivariate center-outward quantiles introduced recently in Chernozhu...
Quantile regression extends the statistical analysis of the response models beyond conditional means...
A procedure relying on linear programming techniques is developed to compute (regression) quantile r...