QuantifQuantile: An R package for performing quantile regression through optimal quantization

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Abstract

In quantile regression, various quantiles of a response variable Y are modelled as functions of covariates (rather than its mean). An important application is the construction of reference curves/surfaces and conditional prediction intervals for Y. Recently, a nonparametric quantile regression method based on the concept of optimal quantization was proposed. This method competes very well with k-nearest neighbor, kernel, and spline methods. In this paper, we describe an R package, called QuantifQuantile, that allows to perform quantization-based quantile regression. We describe the various functions of the package and provide examples.

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APA

Charlier, I., Paindaveine, D., & Saracco, J. (2015). QuantifQuantile: An R package for performing quantile regression through optimal quantization. R Journal, 7(2), 65–80. https://doi.org/10.32614/rj-2015-021

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