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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
...
...
share|improve this question
    
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
up vote 10 down vote accepted

How about something like this:

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)
share|improve this answer
    
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

head(boot.1$t)
##        [,1]   [,2]      [,3]
## [1,] 522.11 7.2342 -1.453204
## [2,] 626.88 4.6283  0.031324
## [3,] 479.74 3.2531  0.637298
## [4,] 557.79 4.5284  0.161462
## [5,] 568.72 5.4613 -0.875126
## [6,] 379.04 7.0707 -1.092860
share|improve this answer
    
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
    
@baha-kev No...because the first step of the algorithm is to split the dataset (of 200 rows) in 10 block of 20 rows (y_1, y_2, ..., y_10) and the resample the dataset by block e.g (y_1, y_10, y_3, ...., y_1), (y2, y_9, ..., y3) and so on. And because of the organisation of the Grunfeld dataset each y_* correspond to one firm (every 20 rows). For more info look at Bootstrap method and their Application (page 396). – dickoa Aug 12 '12 at 21:39

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