# bootstraping a linear regression model in R

this is the first time i use the boot package and i'm having a problem generating some bootstrapped regression data.

the dataframe i have is `df` (original data are much bigger):

``````     aX          gX         pos
-0.02422145  -0.4127358    14749
0.19770304  -0.3913043    13649
0.01587302  -0.7250000    11349
-0.03744150  -0.2436149    14449
0.05079826  -0.4273319    15349
0.12209738  -0.4259067    13249
``````

and i'm applying the following function that will apply a linear regression:

``````regr.fun <- function(data, indices, step) {
l=20000
data <- data[indices,]

for(i in seq(1,l,step)) {
for(j in seq(1,l,step)) {
for( ind in 1:nrow(data)) {

if( dis(i, j) >= l/2 ){
data[ind,]\$nval = dis( data[ind,]\$pos, i) )
}
else{
data[ind,]\$nval = dis( i, data[ind,]\$pos, l )/l
}
}
mAx=lm(ax ~ nval, data)
errorAx=sum(residuals(mAx)^2)

mGx=lm(gx ~ nval, data)
errorGx=sum(residuals(mGx)^2)
resdf <-rbind(resdf, data.frame(resi = i, resj=j, errA=errorAx, errG=errorGx)

}
}
return(resdf)
}
``````

and the function `dis` is a function that do some small calculation which are not important at this point.

and then what i do is the bootstrap:

``````reg.boot <- boot(data=df,statistic =reg.fun,step=1000, R=10, sim="permutation")
``````

so what i'm supposed to get is a bootstraped permuted data.

so in this case i have 2 problems:

1- when i print the reg.boot, the std.error and bias are equal to 0 and i can't understand the output.

``````DATA PERMUTATION

Call:
boot(data = df, statistic = regr.fun, R = 10,
sim = "permutation", stepsize = 1000)

Bootstrap Statistics :
original  bias    std. error
t1* 16001.000000       0           0
t2* 16001.000000       0           0
t3*     1.802046       0           0
t4*     1.532456       0           0
``````

2- in a permutation test i'm supposed to get p-values to check the significance of each pair of i,j in the random data based on the observed and in this case i can choose the lowest p-value, but i'm not getting any here??

am i doing something wrong with the analysis ??

-
Since you don't get any variability, your custom function must be returning a constant set of coefficients in every bootstrap sample. Debug it by providing more output in the intermediate steps, and try different small data sets where you kinda know what to expect in the output. –  StasK Feb 5 '13 at 17:36
thank you for your reply, i've update my code to fill the result into a dataframe and then return it, but still i'm getting the error after the function finished printing all the bootstraps. `Error in boot(data = df, statistic = reg.fun, step = 1000, : incorrect number of subscripts on matrix` –  ifreak Feb 6 '13 at 9:38