2

I am trying to use the lm.cluster function in the package miceadds to get robust clustered standard errors for a multiply imputed dataset.

I am able to get the standard version of it to run but I get the following error when I try to add a subset or weights:

Error in eval(substitute(subset), data, env) : 
..1 used in an incorrect context, no ... to look in

Example that works without subset or weights:

require("mice")
require("miceadds")
data(data.ma01)
# imputation of the dataset: use six imputations
dat <- data.ma01[ , - c(1:2) ]
imp <- mice::mice( dat , maxit=3 , m=6 )
datlist <- miceadds::mids2datlist( imp )
# linear regression with cluster robust standard errors
mod <- lapply(datlist, FUN = function(data){miceadds::lm.cluster( data=data ,         
formula=read ~ paredu+ female ,  cluster = data.ma01$idschool )}  )

# extract parameters and covariance matrix
betas <- lapply( mod , FUN = function(rr){ coef(rr) } )
vars <- lapply( mod , FUN = function(rr){ vcov(rr) } )
# conduct statistical inference
summary(pool_mi( qhat = betas, u = vars ))

Example that breaks with subset:

mod <- lapply(datlist, FUN = function(data){miceadds::lm.cluster( data=data ,         
formula=read ~ paredu+ female ,  cluster = data.ma01$idschool, subset=
(data.ma01$urban==1))}  )

Error during wrapup: ..1 used in an incorrect context, no ... to look in

Example that breaks with weights:

mod <- lapply(datlist, FUN = function(data){miceadds::lm.cluster( data=data ,         
formula=read ~ paredu+ female ,  cluster = data.ma01$idschool,
weights=data.ma01$studwgt)}  )

Error during wrapup: ..1 used in an incorrect context, no ... to look in

From searching, I think I am encountering similar issues as others when passing these commands through an lm or glm wrapper (such as: Passing Argument to lm in R within Function or R : Pass argument to glm inside an R function or Passing the weights argument to a regression function inside an R function)

However, I am not sure how to address the issue with the imputed datasets & existing lm.cluster command.

Thanks

2 Answers 2

2

This works fine with the estimatr package which is on CRAN and the estimatr::lm_robust() function. Two notes: (1) you can change the type of standard errors using se_type = and (2) I keep idschool in the data because we like the clusters to be in the same data.frame as we fit the model on.

library(mice)
library(miceadds)
library(estimatr)

# imputation of the dataset: use six imputations
data(data.ma01)
dat <- data.ma01[, -c(1)] # note I keep idschool in data
imp <- mice::mice( dat , maxit = 3, m = 6)
datlist <- miceadds::mids2datlist(imp)

# linear regression with cluster robust standard errors
mod <- lapply(
  datlist, 
  function (dat) {
    estimatr::lm_robust(read ~ paredu + female, dat, clusters = idschool)
  }
)

# subset
mod <- lapply(
  datlist, 
  function (dat) {
    estimatr::lm_robust(read ~ paredu + female, dat, clusters = idschool, subset = urban == 1)
  }
)

# weights
mod <- lapply(
  datlist, 
  function (dat) {
    estimatr::lm_robust(read ~ paredu + female, dat, clusters = idschool, weights = studwgt)
  }
)

# note that you can use the `se_type` argument of lm_robust() 
# to change the vcov estimation

# extract parameters and covariance matrix
betas <- lapply(mod, coef)
vars <- lapply(mod, vcov)
# conduct statistical inference
summary(pool_mi( qhat = betas, u = vars ))
1

I'm no expert, but there is an issue with the passing of the weights to lm(). I know this is not an ideal situation, but I managed to get it to work by modifying the lm.cluster() function to hard code the weights pass and then just used my own.

lm.cluster <- function (data, formula, cluster, wgts=NULL, ...) 
{
  TAM::require_namespace_msg("multiwayvcov")
  if(is.null(wgts)) {
    mod <- stats::lm(data = data, formula = formula)
  } else {
    data$.weights <- wgts
    mod <- stats::lm(data = data, formula = formula, weights=data$.weights)
  }
  if (length(cluster) > 1) {
    v1 <- cluster
  }
  else {
    v1 <- data[, cluster]
  }
  dfr <- data.frame(cluster = v1)
  vcov2 <- multiwayvcov::cluster.vcov(model = mod, cluster = dfr)
  res <- list(lm_res = mod, vcov = vcov2)
  class(res) <- "lm.cluster"
  return(res)
}

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.