rbox()
is used to specify a rectangular box evaluation
structure for locfit.raw()
. The structure begins
by generating a bounding box for the data, then recursively divides
the box to a desired precision.rbox(cut=0.8, type="tree", ll, ur)
type="tree"
, the cells are recursively divided according to
the bandwidths at each corner of the cell; see Chapter 11 of Loader (1999).
If type="kdtree"
, the K-D tree structure used in Loess
(Cleveland and Grosse, 1991) is usecut
results in a
larger tree with more nodes being generated.locfit.raw()
.ll
and
ur
are generated as the bounding box for the data.Cleveland, W. and Grosse, E. (1991). Computational Methods for Local Regression. Statistics and Computing 1.
data(ethanol, package="locfit")
plot.eval(locfit(NOx~E+C,data=ethanol,scale=0,ev=rbox(cut=0.8)))
plot.eval(locfit(NOx~E+C,data=ethanol,scale=0,ev=rbox(cut=0.3)))
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