Predict method for COBS Fits
Compute predicted values and simultaneous or pointwise confidence
bounds for cobs
objects.
## S3 method for class 'cobs' predict(object, z, deriv = 0L, minz = knots[1], maxz = knots[nknots], nz = 100, interval = c("none", "confidence", "simultaneous", "both"), level = 0.95, ...)
object |
object of class |
z |
vector of grid points at which the fitted values are
evaluated; defaults to an equally spaced grid with |
deriv |
scalar integer specifying (the order of) the derivative that should be computed. |
minz |
numeric needed if |
maxz |
analogous to |
nz |
number of grid points in |
interval |
type of interval calculation, see below |
level |
confidence level |
... |
further arguments passed to and from methods. |
a matrix of predictions and bounds if interval
is set (not
"none"). The columns are named z
, fit
, further
cb.lo
and cb.up
for the simultaneous
confidence
band, and ci.lo
and ci.up
the pointwise
confidence
intervals according to specified level
.
If z
has been specified, it is unchanged in the result.
Martin Maechler, based on He and Ng's code in cobs()
.
cobs
the model fitting function.
example(cobs) # continuing : (pRbs <- predict(Rbs)) #str(pSbs <- predict(Sbs, xx, interval = "both")) str(pSbs <- predict(Sbs, xx, interval = "none")) plot(x,y, xlim = range(xx), ylim = range(y, pSbs[,2], finite = TRUE), main = "COBS Median smoothing spline, automatical lambda") lines(pSbs, col = "red") lines(spline(x,f.true), col = "gray40") #matlines(pSbs[,1], pSbs[,-(1:2)], # col= rep(c("green","blue"),c(2,2)), lty=2)
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