# block bootstrap from subject list

I'm trying to efficiently implement a block bootstrap technique to get the distribution of regression coefficients. The main outline is as follows:

I have a panel data set, say `firm` and `year` are the indices. For each iteration of the bootstrap, I wish to sample with replacement n subjects. From this sample, I need to construct a new data frame that is an `rbind()` stack of all the observations for each sampled subject. With this new data.frame, I can run the regression and pull out the coefficients. Repeat for a bunch of iterations, say 100.

• Each firm can potentially be selected multiple times, so I need to include its data multiple times in each iteration's data set.
• Using a loop and subset approach, like below, seems computationally burdensome.
• My real data frame, n, and # iterations is much larger than the example below.

My thoughts initially are to break the existing total data frame into a list by `subject` using the `split()` command. From there, use `sample(unique(df1\$subject),n,replace=TRUE)` to get the new list, then perhaps implement `quickdf()` from the `plyr` package to construct a new data frame?

Any thoughts are appreciated!

Example slow code:

``````require(plm)
data("Grunfeld", package="plm")

firms = unique(Grunfeld\$firm)
n = 10
iterations = 100
mybootresults=list()

for(j in 1:iterations){

v = sample(length(firms),n,replace=TRUE)
newdata = NULL

for(i in 1:n){
newdata = rbind(newdata,subset(Grunfeld, firm == v[i]))
}

reg1 = lm(value ~ inv + capital, data = newdata)
mybootresults[[j]] = coefficients(reg1)

}

mybootresults = as.data.frame(t(matrix(unlist(mybootresults),ncol=iterations)))
names(mybootresults) = names(reg1\$coefficients)
mybootresults

(Intercept)      inv    capital
1    373.8591 6.981309 -0.9801547
2    370.6743 6.633642 -1.4526338
3    528.8436 6.960226 -1.1597901
4    331.6979 6.239426 -1.0349230
5    507.7339 8.924227 -2.8661479
...
...
``````
-
Have you looked at the `boot` package? – seancarmody Aug 12 '12 at 5:03
Yes, I have looked at and used the `boot` package. I don't think it has the ability to do this type of block bootstrap, however. – baha-kev Aug 12 '12 at 5:05
It's a bit of a fudge and probably overkill using `boot`, but I think the answer I posted does the job. – seancarmody Aug 12 '12 at 6:19

``````myfit <- function(x, i) {
mydata <- do.call("rbind", lapply(i, function(n) subset(Grunfeld, firm==x[n])))
coefficients(lm(value ~ inv + capital, data = mydata))
}

firms <- unique(Grunfeld\$firm)

b0 <- boot(firms, myfit, 999)
``````
-
This appears to do exactly what I want -- thanks and extra credit for utilizing the `boot` package. I have not used `do.call` before so this is helpful for that reason as well. Cheers- – baha-kev Aug 12 '12 at 20:01
Do you know offhand how to deal with fixed effects (i.e. `factor(region)`) within `lm()` in the `boot` paradigm. Since some factors might not show up in each iteration, the number of coefficients differs and it errors out. Thoughts? – baha-kev Aug 12 '12 at 20:23
Thanks, this was really helpful. Did you sort out the fixed-effects issue, by any chance? For this same reason, I'm having trouble comparing my target statistic across repetitions. My current strategy is to omit all FE coefficients in the vector I return in the 'myfit' function, but that seems a bit amateurish.. – daanoo Jul 5 '15 at 17:57

You can also use the tsboot function in the `boot` package with fixed block resampling scheme.

``````require(plm)
require(boot)
data(Grunfeld)

### each firm is of length 20
table(Grunfeld\$firm)
##  1  2  3  4  5  6  7  8  9 10
## 20 20 20 20 20 20 20 20 20 20

blockboot <- function(data)
{
coefficients(lm(value ~ inv + capital, data = data))

}

### fixed length (every 20 obs, so for each different firm) block bootstrap
set.seed(321)
boot.1 <- tsboot(Grunfeld, blockboot, R = 99, l = 20, sim = "fixed")

boot.1
## Bootstrap Statistics :
##      original     bias    std. error
## t1* 410.81557 -25.785972    174.3766
## t2*   5.75981   0.451810      2.0261
## t3*  -0.61527   0.065322      0.6330

dim(boot.1\$t)
## [1] 99  3

`l=20` in your `tsboot()` statement will inevitably take a block with say 15 observations of one firm and 5 observations of another (=20), which is not what I want to do. I either want to include all a firm's observations, or none, sometimes including the same firm's observations multiple times. – baha-kev Aug 12 '12 at 19:59