midq2q.RdThis function recovers ordinary quantiles from fitted mid-quantile objects.
# S3 method for class 'midquantile'
midq2q(object, observed = FALSE, ...)
# S3 method for class 'midrq'
midq2q(object, observed = FALSE, ..., newdata, offset, na.action = na.pass)an object of class midquantile or midrq.
logical flag. If TRUE, ordinary quantiles are recovered from observed sample values. Otherwise, they are calcuated as rounded mid-quantiles. See details.
optionally, a data frame in which to look for variables with which to predict. If omitted, the fitted values are used.
an optional offset to be included in the model frame (when newdata is provided).
function determining what should be done with missing values in newdata. The default is to predict NA.
not used.
If the values of the support of the random variable are equally spaced integers, then observed should ideally be set to FALSE so that the ordinary quantile is obtained by rounding the predicted mid-quantile. Otherwise, the function returns an integer observed in the sample. See Geraci and Farcomeni for more details.
a vector or a matrix of estimated ordinary quantiles. The attribute Fhat provides the corresponding estimated cumulative distribution.
Geraci, M. and A. Farcomeni. Mid-quantile regression for discrete responses. arXiv:1907.01945 [stat.ME]. URL: https://arxiv.org/abs/1907.01945.
if (FALSE) { # \dontrun{
# Esterase data
data(esterase)
# Fit conditional mid-quantiles 0.1, 0.15, ..., 0.85
fit <- midquantile(esterase$Count, probs = 2:17/20)
# Recover ordinary quantile function
print(Qhat <- midq2q(fit))
# Plot
plot(Qhat)
# Fit conditional mid-quantiles 0.1, 0.15, ..., 0.85
fit <- midrq(Count ~ Esterase, tau = 2:17/20, data = esterase, type = 3, lambda = 0)
# Recover ordinary quantile function
xx <- seq(min(esterase$Esterase), max(esterase$Esterase), length = 5)
print(Qhat <- midq2q(fit, newdata = data.frame(Esterase = xx)))
# Plot
plot(Qhat, sub = TRUE)
} # }