refcurv | R Documentation |
This function obtain univariate conditional quantiles as described in Martinez-Silva et. al (2016).
refcurv(mu = "y~s(x)", sigma = "~s(x)", data = data)
mu |
A formula object for the response mean model following the mgcv package structure (see example below). |
sigma |
a formula object for fitting a model to the response variance (see example below). |
data |
A data frame containing both the response, and predictor variables. |
In the Martinez Silva et. al (2016) the non linear effects of the continuous covariates are estimating through polynomial kernel smoother, in this package we implement the same methodology but using penalized splines in order to reduce computational cost.
This function returns univariate conditional quantiles estimated using a non parametric location scale model.
Martinez–Silva, I., Roca–Pardinas, J., & Ordonez, C. (2016). Forecasting SO2 pollution incidents by means of quantile curves based on additive models. Environmetrics, 27(3), 147–157.
#--- Glycation hemoglobin reference curve depending on age dm_no <- subset(aegis, aegis$dm == "no") fit1 <- refcurv(mu = "hba1c~s(age)", sigma = "~s(age)", data = dm_no) plot(fit1, newdata = data.frame(age = 18:90), tau = c(0.025, 0.05, 0.10, 0.90, 0.95, 0.975))
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