supsmu {modreg} | R Documentation |
Smooth the (x, y) values by Friedman's “super smoother”.
supsmu(x, y, wt = rep(1, length(y)), span = "cv", periodic = FALSE,
bass = 0)
x |
x values for smoothing |
y |
y values for smoothing |
wt |
case weights |
span |
the fraction of the observations in the span of the running
lines smoother, or |
periodic |
if |
bass |
controls the smoothness of the fitted curve. Values of up to 10 indicate increasing smoothness. |
supsmu
is a running lines smoother which chooses between three
spans for the lines. The running lines smoothers are symmetric, with
k/2
data points each side of the predicted point, and values of
k
as 0.5 * n
, 0.2 * n
and 0.05 * n
, where
n
is the number of data points. If span
is specified,
a single smoother with span span * n
is used.
The best of the three smoothers is chosen by cross-validation for each prediction. The best spans are then smoothed by a running lines smoother and the final prediction chosen by linear interpolation.
The FORTRAN code says: “For small samples (n < 40
) or if there
are substantial serial correlations between observations close in x -
value, then a prespecified fixed span smoother (span > 0
)
should be used. Reasonable span values are 0.2 to 0.4.”
A list with components
x |
the input values in increasing order with duplicates removed. |
y |
the corresponding y values on the fitted curve. |
B. D. Ripley
Friedman, J. H. (1984) SMART User's Guide. Laboratory for Computational Statistics, Stanford University Technical Report No. 1.
Friedman, J. H. (1984) A variable span scatterplot smoother. Laboratory for Computational Statistics, Stanford University Technical Report No. 5.
ppr
data(cars)
attach(cars)
plot(speed, dist)
lines(supsmu(speed, dist))
lines(supsmu(speed, dist, bass=7), lty=2)
detach()