Check out the help page for `loess()`

- it has a couple of examples of specifying the formula. Basically, you need to put your data into a `data.frame`

object with variables given appropriate names, then the formula will be `y ~ x`

, where `x`

and `y`

are the names of the variables you want on the x- and y-axis, respectively.

I prefer the function `lowess()`

, which is a faster, simpler alternative. It has fewer adjustable parameters than `loess()`

but it just as good in many applications.
Here are some links describing the differences between the two functions.

Below is a simple example for both `loess()`

and `lowess()`

```
## create an example data set
x <- sort(rpois(100,10) + rnorm(100,0,2))
y <- x^2 + rnorm(100,0,7)
df <- data.frame(x = x,y = y)
plot(x,y)
## fit a lowess and plot it
l.fit1 <- lowess(x,y,f = 0.3)
lines(l.fit1, col = 2,lwd = 2)
## fit a loess and plot it
l.fit2 <- loess(y ~ x, data = df)
lines(x,predict(l.fit2,x), col = 3,lwd = 2)
```