Nonparametric Estimation of Conditional CDF and Quantile Functions With Mixed Categorical and Continuous Data 论文

2008Journal of Business and Economic Statistics引用 254
Statistical Methods and InferenceBayesian Methods and Mixture ModelsStatistical Methods and Bayesian Inference

摘要

We propose a new nonparametric conditional cumulative distribution function kernel estimator that admits a mix of discrete and categorical data along with an associated nonparametric conditional quantile estimator. Bandwidth selection for kernel quantile regression remains an open topic of research. We employ a conditional probability density function-based bandwidth selector proposed by Hall, Racine, and Li that can automatically remove irrelevant variables and has impressive performance in this setting. We provide theoretical underpinnings including rates of convergence and limiting distributions. Simulations demonstrate that this approach performs quite well relative to its peers; two illustrative examples serve to underscore its value in applied settings.