Conditional Quantile Processes based on Series or Many Regressors
Alexandre Belloni, Victor Chernozhukov, Denis Chetverikov, Iv\'an, Fern\'andez-Val

TL;DR
This paper develops a nonparametric quantile regression series framework for inference on the entire conditional quantile function and its functionals, accommodating many regressors and providing robust resampling methods.
Contribution
It introduces a novel QR-series approach for nonparametric inference on the full conditional quantile function with many regressors, including new resampling techniques.
Findings
Uniform strong approximations to the QR-series coefficient process.
Four resampling methods for inference on the entire coefficient function.
Application to estimating price elasticity and testing demand conditions.
Abstract
Quantile regression (QR) is a principal regression method for analyzing the impact of covariates on outcomes. The impact is described by the conditional quantile function and its functionals. In this paper we develop the nonparametric QR-series framework, covering many regressors as a special case, for performing inference on the entire conditional quantile function and its linear functionals. In this framework, we approximate the entire conditional quantile function by a linear combination of series terms with quantile-specific coefficients and estimate the function-valued coefficients from the data. We develop large sample theory for the QR-series coefficient process, namely we obtain uniform strong approximations to the QR-series coefficient process by conditionally pivotal and Gaussian processes. Based on these strong approximations, or couplings, we develop four resampling methods…
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Taxonomy
TopicsStatistical Methods and Inference
