Create an interpolation spline, either from x
and y
vectors (default
method), or from a formula
/ data.frame
combination (formula
method).
interpSpline(obj1, obj2, bSpline = FALSE, period = NULL,
ord = 4L,
na.action = na.fail, sparse = FALSE)
either a numeric vector of x
values or a formula.
if obj1
is numeric this should be a numeric vector
of the same length. If obj1
is a formula this can be an
optional data frame in which to evaluate the names in the formula.
if TRUE
the b-spline representation is returned,
otherwise the piecewise polynomial representation is returned.
Defaults to FALSE
.
an optional positive numeric value giving a period for a periodic interpolation spline.
an integer specifying the spline order, the number of
coefficients per interval. ord = 4
) are implemented.
a optional function which indicates what should happen
when the data contain NA
s. The default action
(na.omit
) is to omit any incomplete observations. The
alternative action na.fail
causes interpSpline
to print
an error message and terminate if there are any incomplete
observations.
logical passed to the underlying
splineDesign
. If true, saves memory and is faster when
there are more than a few hundred points.
An object that inherits from (S3) class spline
. The object can be in
the B-spline representation, in which case it will be of class
nbSpline
for natural B-spline, or in the piecewise polynomial
representation, in which case it will be of class npolySpline
.
# NOT RUN {
<!-- % tests also in ../tests/spline-tst.R -->
# }
# NOT RUN {
require(graphics); require(stats)
ispl <- interpSpline( women$height, women$weight )
ispl2 <- interpSpline( weight ~ height, women )
# ispl and ispl2 should be the same
plot( predict( ispl, seq( 55, 75, length.out = 51 ) ), type = "l" )
points( women$height, women$weight )
plot( ispl ) # plots over the range of the knots
points( women$height, women$weight )
splineKnots( ispl )
# }
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