Plots a probability density function associated with a LMS quantile regression.
deplot.lmscreg(object, newdata = NULL, x0, y.arg, show.plot = TRUE, ...)
Optional data frame containing secondary variables such as sex. It should have a maximum of one row. The default is to use the original data.
Numeric. The value of the primary variable at which to make the `slice'.
Numerical vector. The values of the response variable at which to evaluate the density. This should be a grid that is fine enough to ensure the plotted curves are smooth.
Logical. Plot it? If FALSE
no plot will
be done.
Graphical parameter that are passed into
plotdeplot.lmscreg
.
The original object
but with a list
placed in the slot post
, called
@post$deplot
. The list has components
The argument newdata
above, or a one-row
data frame constructed out of the x0
argument.
The argument y.arg
above.
Vector of the density function values evaluated at y.arg
.
This function calls, e.g., deplot.lms.yjn
in order to compute
the density function.
Yee, T. W. (2004). Quantile regression via vector generalized additive models. Statistics in Medicine, 23, 2295--2315.
plotdeplot.lmscreg
,
qtplot.lmscreg
,
lms.bcn
,
lms.bcg
,
lms.yjn
.
# NOT RUN {
fit <- vgam(BMI ~ s(age, df = c(4, 2)), fam = lms.bcn(zero = 1), data = bmi.nz)
ygrid <- seq(15, 43, by = 0.25)
deplot(fit, x0 = 20, y = ygrid, xlab = "BMI", col = "green", llwd = 2,
main = "BMI distribution at ages 20 (green), 40 (blue), 60 (red)")
deplot(fit, x0 = 40, y = ygrid, add = TRUE, col = "blue", llwd = 2)
deplot(fit, x0 = 60, y = ygrid, add = TRUE, col = "red", llwd = 2) -> a
names(a@post$deplot)
a@post$deplot$newdata
head(a@post$deplot$y)
head(a@post$deplot$density)
# }
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