# simulate a linear model 100 times

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?

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## migrated from stats.stackexchange.comJan 28 '13 at 2:16

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Welcome to CV, Karl! Because your problem really stems from how you allocate and address arrays in R, it is more suited for SO, where we will migrate it. However, by searching CV--or just reading enough questions--you will find many examples 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
What does "CV" stand for? – SavedByJESUS Jan 28 '13 at 2:28
CrossValidated: stats.stackexchange.com , the StackExchange site for statistics – Ben Bolker Jan 28 '13 at 2:29

Something like:

a <- 3
B <- 0.5
C <- -0.7

results <- matrix(nrow=100,ncol=3)
for (i in 1:100){
x1 <- rnorm(200, mean=0, sd=1)
x2 <- rnorm(200, mean=0, sd=1)
e <- rnorm(200, mean=0, sd=1)
y1 <- a+B*x1+C*x2+e

y<- lm(y1~x1+x2)
results[i,] <- coef(y)
}


This assumes that you only need to save the coefficients from each run. A more elegant solution would be something like:

simfun <- function(a=3,B=0.5,C=-0.7,n=200,x1.sd=1,x2.sd=1,e.sd=1) {
x1 <- rnorm(n, mean=0, sd=x1.sd)
x2 <- rnorm(n, mean=0, sd=x2.sd)
e <-  rnorm(n, mean=0, sd=e.sd)
y1 <- a+B*x1+C*x2+e
data.frame(x1,x2,y1)
}

statfun <- function(d) {
coef(lm(y1~x1+x2,data=d))
}

library(plyr)
raply(100,statfun(simfun()))

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You could probably get rid of plyr and just use replicate - but to each their own. – Dason Jan 28 '13 at 3:22
Yes. I like raply's convenient built-in progress bar, but that's neither necessary nor shown here. – Ben Bolker Jan 28 '13 at 3:53
    a <- 3
B <- 0.5
C <- -0.7
sims <- 100

#initialize a data frame to collect results
df <- data.frame(matrix(ncol = 3, nrow = sims))
colnames(df) <- c('a', 'B' , 'C')

for(i in 1:sims){
##vectors each  200 long
x1 <- rnorm(200)
x2 <- rnorm(200)
e <- rnorm(200)

y <- a + B*x1 + C*x2 +e
#collect results for each itter
df[i,] <- data.frame(t(lm(y ~x1 + x2)\$coeff))
}

#results
df

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Same as Ben's Solution -- I should probably delete this- as soon as I figure out how to – user2016781 Jan 28 '13 at 2:43