I'm anticipating that I'm missing something glaringly obvious here.

I'm trying to build a demonstration of overfitting. I've got a quadratic generating function from which I've drawn 20 samples, and I now want to fit polynomial linear models of increasing degree to the sampled data.

For some reason, regardless which model I use, every time I run `predict`

I get N predictions back, where N is the number of records used to train my model.

```
set.seed(123)
N=20
xv = seq(1,5,length.out=1e4)
x=sample(xv,N)
gen=function(v){v^2 + 2*rnorm(length(v))}
y=gen(x)
df = data.frame(x,y)
# convenience function for building formulas for polynomial regression
build_formula = function(N){
fpart = paste(lapply(2:N, function(i) {paste('+ poly(x,',i,',raw=T)')} ), collapse="")
paste('y~x',fpart)
}
## Example:
## build_formula(4)="y~x + poly(x, 2 ,raw=T)+ poly(x, 3 ,raw=T)+ poly(x, 4 ,raw=T)"
model = lm(build_formula(10), data=df)
predict(model, data=xv) # returns 20 values instead of 1000
predict(model, data=1) # even *this* spits out 20 results. WTF?
```

This behavior is present regardless of the degree of polynomial in the formula, including the trivial case `'y~x'`

:

```
formulas = sapply(c(2,10,20), build_formula)
formulas = c('y~x', formulas)
pred = lapply(formulas
,function(f){
predict(
lm(f, data=df)
,data=xv)
})
lapply(pred, length) # 4 x 20 predictions, expecting 4 x 1000
# unsuccessful sanity check
m1 = lm('y~x', data=df)
predict(m1,data=xv)
```

This is driving me insane. What am I doing wrong?