I need to simulate n=100 times a linear model, but get lost in the R commands.

I am still learning the basics of statistic and R, and I am a bit confused with this exercise:

I need to replicate a basic linear model 100 times using OLS and collect the N estimates in order to perform a test of consistency and efficiency. I have tried to solve the problem this way:

```
a <- 3
B <- 0.5
C <- -0.7
for (i in 1:100){
x1[i] <- rnorm(200, mean=0, sd=1)
x2[i] <- rnorm(200, mean=0, sd=1)
e[i] <- rnorm(200, mean=0, sd=1)
y1[i] <- a+(B*x1[i])+(C*x2[i])+e[i]
y<- lm(y1[i]~x1[i]+x2[i]))
results <-data.frame(coef(y))
}
```

but R keeps telling me there are errors. Could someone help me with this?

`R`

, it is more suited for SO, where we will migrate it. However, by searching CV--or just reading enough questions--you will findmanyexamples of exactly this kind of simulation here, with full code and output, which you can immediately start using. – whuber Jan 28 '13 at 2:16