supsmu(x, y, wt, span = "cv", periodic = FALSE, bass = 0)"cv" to choose this by leave-one-out
cross-validation.TRUE, the x values are assumed to be in
[0, 1] and of period 1.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 pre-specified fixed span smoother (span >
0) should be used. Reasonable span values are 0.2 to 0.4.” Cases with non-finite values of x, y or wt are
dropped, with a warning.pprrequire(graphics)
with(cars, {
plot(speed, dist)
lines(supsmu(speed, dist))
lines(supsmu(speed, dist, bass = 7), lty = 2)
})
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