SPQR: An R Package for Semi-Parametric Density and Quantile Regression
- URL: http://arxiv.org/abs/2210.14482v1
- Date: Wed, 26 Oct 2022 05:10:15 GMT
- Title: SPQR: An R Package for Semi-Parametric Density and Quantile Regression
- Authors: Steven G. Xu, Reetam Majumder and Brian J. Reich
- Abstract summary: We develop an R package that implements the semi-parametric quantile regression (SPQR) method in Xu and Reich ( 2021 )
In this article, we detail how this framework is implemented in SPQR and illustrate how this package should be used in practice through simulated and real data examples.
- Score: 0.12891210250935145
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We develop an R package SPQR that implements the semi-parametric quantile
regression (SPQR) method in Xu and Reich (2021). The method begins by fitting a
flexible density regression model using monotonic splines whose weights are
modeled as data-dependent functions using artificial neural networks.
Subsequently, estimates of conditional density and quantile process can all be
obtained. Unlike many approaches to quantile regression that assume a linear
model, SPQR allows for virtually any relationship between the covariates and
the response distribution including non-linear effects and different effects on
different quantile levels. To increase the interpretability and transparency of
SPQR, model-agnostic statistics developed by Apley and Zhu (2020) are used to
estimate and visualize the covariate effects and their relative importance on
the quantile function. In this article, we detail how this framework is
implemented in SPQR and illustrate how this package should be used in practice
through simulated and real data examples.
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