lms.bcg {VGAM} | R Documentation |
LMS Quantile Regression with a Box-Cox transformation to a Gamma Distribution
Description
LMS quantile regression with the Box-Cox transformation to the gamma distribution.
Usage
lms.bcg(percentiles = c(25, 50, 75), zero = c("lambda", "sigma"),
llambda = "identitylink", lmu = "identitylink", lsigma = "loglink",
idf.mu = 4, idf.sigma = 2, ilambda = 1, isigma = NULL)
Arguments
percentiles |
A numerical vector containing values between 0 and 100, which are the quantiles. They will be returned as 'fitted values'. |
zero |
See |
llambda , lmu , lsigma |
See |
idf.mu , idf.sigma |
See |
ilambda , isigma |
See |
Details
Given a value of the covariate, this function applies a
Box-Cox transformation to the response to best obtain a
gamma distribution. The parameters chosen to do this are
estimated by maximum likelihood or penalized maximum likelihood.
Similar details can be found at lms.bcn
.
Value
An object of class "vglmff"
(see vglmff-class
).
The object is used by modelling functions
such as vglm
,
rrvglm
and vgam
.
Warning
This VGAM family function comes with the same
warnings as lms.bcn
.
Also, the expected value of the second derivative with
respect to lambda may be incorrect (my calculations do
not agree with the Lopatatzidis and Green manuscript.)
Note
Similar notes can be found at lms.bcn
.
Author(s)
Thomas W. Yee
References
Lopatatzidis A. and Green, P. J. (unpublished manuscript). Semiparametric quantile regression using the gamma distribution.
Yee, T. W. (2004). Quantile regression via vector generalized additive models. Statistics in Medicine, 23, 2295–2315.
See Also
lms.bcn
,
lms.yjn
,
qtplot.lmscreg
,
deplot.lmscreg
,
cdf.lmscreg
,
bmi.nz
,
amlexponential
.
Examples
# This converges, but deplot(fit) and qtplot(fit) do not work
fit0 <- vglm(BMI ~ sm.bs(age, df = 4), lms.bcg, bmi.nz, trace = TRUE)
coef(fit0, matrix = TRUE)
## Not run:
par(mfrow = c(1, 1))
plotvgam(fit0, se = TRUE) # Plot mu function (only)
## End(Not run)
# Use a trick: fit0 is used for initial values for fit1.
fit1 <- vgam(BMI ~ s(age, df = c(4, 2)), etastart = predict(fit0),
lms.bcg(zero = 1), bmi.nz, trace = TRUE)
# Difficult to get a model that converges. Here, we prematurely
# stop iterations because it fails near the solution.
fit2 <- vgam(BMI ~ s(age, df = c(4, 2)), maxit = 4,
lms.bcg(zero = 1, ilam = 3), bmi.nz, trace = TRUE)
summary(fit1)
head(predict(fit1))
head(fitted(fit1))
head(bmi.nz)
# Person 1 is near the lower quartile of BMI amongst people his age
head(cdf(fit1))
## Not run:
# Quantile plot
par(bty = "l", mar=c(5, 4, 4, 3) + 0.1, xpd = TRUE)
qtplot(fit1, percentiles=c(5, 50, 90, 99), main = "Quantiles",
xlim = c(15, 90), las = 1, ylab = "BMI", lwd = 2, lcol = 4)
# Density plot
ygrid <- seq(15, 43, len = 100) # BMI ranges
par(mfrow = c(1, 1), lwd = 2)
(aa <- deplot(fit1, x0 = 20, y = ygrid, xlab = "BMI", col = "black",
main = "PDFs at Age = 20 (black), 42 (red) and 55 (blue)"))
aa <- deplot(fit1, x0 = 42, y = ygrid, add=TRUE, llty=2, col="red")
aa <- deplot(fit1, x0 = 55, y = ygrid, add=TRUE, llty=4, col="blue",
Attach = TRUE)
aa@post$deplot # Contains density function values
## End(Not run)