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smooth.lf
is a simple interface to the Locfit library.
The input consists of a predictor vector (or matrix) and response.
The output is a list with vectors of fitting points and fitted values.
Most locfit.raw
options are valid.
smooth.lf(x, y, xev=x, direct=FALSE, ...)
A list with components x
(fitting points) and y
(fitted values).
Also has a call
component, so update()
will work.
Vector (or matrix) of the independent variable(s).
Response variable. If omitted, x
is treated as the response and
the predictor variable is 1:n
.
Fitting Points. Default is the data vector x
.
Logical variable. If T
, local regression is performed directly
at each fitting point. If F
, the standard Locfit method combining
fitting and interpolation is used.
Other arguments to locfit.raw()
.
locfit()
,
locfit.raw()
,
density.lf()
.
# using smooth.lf() to fit a local likelihood model.
data(morths)
fit <- smooth.lf(morths$age, morths$deaths, weights=morths$n,
family="binomial")
plot(fit,type="l")
# update with the direct fit
fit1 <- update(fit, direct=TRUE)
lines(fit1,col=2)
print(max(abs(fit$y-fit1$y)))
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