ksmooth
Kernel Regression Smoother
Description
Performs scatterplot smoothing using kernel estimates.
Usage
ksmooth(x, y, kernel = c("box", "normal"), bandwidth = 0.5,
    range.x = range(x), n.points = max(100, length(x)), x.points)
Arguments
| x | a vector of x data.
Missing values (NAs) are not accepted. | 
| y | a vector of y data.
This must be same length as x, and
missing values (NAs) are not accepted. | 
| kernel | a character string that determines the smoothing kernel. 
kernel can be one of the following. |  | "box" | a rectangular box (the default). |  |  | "normal" | the gaussian density function. | 
 | 
| bandwidth | the kernel bandwidth smoothing parameter.
All kernels are scaled so the upper and lower quartiles of the
kernel (viewed as a probability density) are +/- 0.25.
Larger values of bandwidth make smoother estimates; 
smaller values of bandwidth make less smooth estimates. | 
| range.x | a vector containing the minimum and maximum values of x at which to
compute the estimate. If not specified,
this argument is set to range(x). | 
| n.points | the number of points to smooth in the interval range.x.
n.points is set to the length of x.point
if x.points is supplied. | 
| x.points | a vector specifying where the kernel estimate is computed.
If this argument is not specified,
it is set to seq.int(range.x[1], range.x[2], length=n.points). | 
 
Value
returns a list containing the following components:
| x | a vector of sorted x values at which the kernel estimate was computed. | 
| y | a vector of smoothed estimates for the regression at the corresponding x. | 
References
Silverman, B. W. 1986.  Density Estimation for Statistics and Data Analysis. London, UK: Chapman and Hall.
Watson, G. S. 1966. Smooth regression analysis. Sankha, Ser. A.  Volume 26. 359-378.
See Also
Examples
# Make up some data:
set.seed(50)
x <- rnorm(100)
eps <- rnorm(100, 0, .1)
y <- sin(x) + eps
# A kernel regression estimate for y on x.
ksmxy <- ksmooth(x, y, kern="normal", band=.5, n=50)