Abstract
To make a prediction of a response variable from an explanatory one which takes into account features such as multimodality, a nonparametric approach based on an estimate of the conditional density is advocated and considered. In particular, we build point and interval predictors based on the quantile-copula estimator of the conditional density by Faugeras (20098. Faugeras , O. P. ( 2009 ). A quantile-copula approach to conditional density estimation . J. Multivariate Anal. 100 ( 9 ): 2083 – 2099 . View all references). The consistency of these predictors is proved through a uniform consistency result of the conditional density estimator. Eventually, the practical implementation of these predictors is discussed. A simulation on a real data set illustrates the proposed methods.
Replaces
Olivier Faugeras, “Prediction via the Quantile-Copula Conditional Density Estimator”, TSE Working Paper, n. 09-124, December 7, 2009.
Reference
Olivier Faugeras, “Prediction via the Quantile-Copula Conditional Density Estimator”, Communications in Statistics - Theory and Methods, vol. 41, n. 1, 2012, pp. 16–33.
See also
Published in
Communications in Statistics - Theory and Methods, vol. 41, n. 1, 2012, pp. 16–33