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I have included a toy example to recreate my error:

data(cars)
cars$dist[cars$dist<5]<-NA
cars$fast<- (cars$speed>10)*1

fit<-lm(speed~dist,cars)


cl   <- function(dat,fm, cluster){
  require(sandwich, quietly = TRUE)
  require(lmtest, quietly = TRUE)
  M <- length(unique(cluster))
  N <- length(cluster)
  K <- fm$rank
  dfc <- (M/(M-1))*((N-1)/(N-K))
  uj  <- apply(estfun(fm),2, function(x) tapply(x, cluster, sum));
  vcovCL <- dfc*sandwich(fm, meat=crossprod(uj)/N)
  result<-coeftest(fm, vcovCL)
  return(result)}

cl(cars,fit,cars$fast)

Error in tapply(x, cluster, sum) : arguments must have same length

The issue is that the original dataframe is bigger than the dataframe used in the regresssion due to the removed NA's and subset regression. I need to compute the robust standard errors, so I have to compute the SEs with the function cl, but how do I identify the NAs removed and appropriately subset so I can identify the correct cluster to go with the dataframe.

Thanks in advance.

share|improve this question
    
May I inquire why you have "dat" in the argument list since the cl function does not reference it? –  BondedDust Jul 11 '13 at 23:14
    
You are correct, I should remove that. Since cluster is a vector that supposedly matches the dataframe used in the regression. –  mumpy Jul 11 '13 at 23:44

1 Answer 1

up vote 2 down vote accepted

You can use complete.cases to indentify the NAs in your data but in this case it will be better to use the information in your lm object on the way it handled NA's (Thanks to @Dwin for pointing better way to access this information and more generally how to simplify this answer).

data(cars)
cars$dist
cars$dist[cars$dist < 5] <- NA
cars$fast<- (cars$speed > 10) * 1
which(!complete.cases(cars))
## [1] 1 3

fit <- lm(speed ~ dist, data = cars)
fit$na.action
## 1 3 
## 1 3 
## attr(,"class")
## [1] "omit"

Therefore, your final function should like this

cl   <- function(fm, cluster){
    require(sandwich, quietly = TRUE)
    require(lmtest, quietly = TRUE)
    M <- length(unique(cluster))
    N <- length(cluster)
    K <- fm$rank
    dfc <- (M/(M-1))*((N-1)/(N-K))
    uj  <- apply(estfun(fm),2, function(x) tapply(x, cluster[-fm$na.action], sum));
    vcovCL <- dfc*sandwich(fm, meat=crossprod(uj)/N)
    result<-coeftest(fm, vcovCL)
    result}

cl(fit,cars$fast)
## t test of coefficients:

##             Estimate Std. Error t value Pr(>|t|)
## (Intercept)   8.8424     2.9371    3.01  0.00422
## dist          0.1561     0.0426    3.67  0.00063
share|improve this answer
    
Rather than the "double negative" you could just use cluster[complete.cases(dat)], but my preference would be to use the cluster[-fit$na.action] vector. –  BondedDust Jul 11 '13 at 23:23
    
@DWin this simplify things a lot thanks... –  dickoa Jul 11 '13 at 23:25
    
First, thanks for the help! I realized I made a mistake in my question. I guess missingness (NA) is not the only source of where the dataframe in the regression is smaller. Some of my regression are subset regression. So my proposed solution is to subset the original dataframe with the same subset parameters and then perform the regression? Is there a more elegant way to do this? –  mumpy Jul 12 '13 at 0:15

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