I'm trying to apply inverse probability weights to a regression, but lm() only uses analytic weights. This is part of a replication I'm working on where the original author is using pweight in Stata, but I'm trying to replicate it in R. The analytic weights are providing lower standard errors which is causing problems with some of my variable being significance.

I've tried looking at the survey package, but am not sure how to prepare a survey object for use with svyglm(). Is this the approach I want, or is there an easier way to apply inverse probability weights?

dput :

data <- structure(list(lexptot = c(9.1595012302023, 9.86330744180814, 
8.92372556833205, 8.58202430280175, 10.1133857229336), progvillm = c(1L, 
1L, 1L, 1L, 0L), sexhead = c(1L, 1L, 0L, 1L, 1L), agehead = c(79L, 
43L, 52L, 48L, 35L), weight = c(1.04273509979248, 1.01139605045319, 
1.01139605045319, 1.01139605045319, 0.76305216550827)), .Names = c("lexptot", 
"progvillm", "sexhead", "agehead", "weight"), class = c("tbl_df", 
"tbl", "data.frame"), row.names = c(NA, -5L))

Linear Model (using analytic weights)

prog.lm <- lm(lexptot ~ progvillm + sexhead + agehead, data = data, weight = weight)
  • 1
    Haven't used it before, but a search on RSeek turned up the ipw package. It's not currently on CRAN, but you could install an archived version. – Gregor Feb 11 '15 at 2:00
  • @Gregor I've looked at that package, but being that it's out of data and not available in CRAN I didn't think of installing. Also, it appears that survey has taken it's place, but I can't figure out how to get the object for regression. – Vedda Feb 11 '15 at 2:02
  • it is worth mentioning that the survey package does not only use inverse probability weights, but more importantly also accounts for design based standard errors. pweights alone are also implemented in the 'glm' function and there is no need to use the survey package if you do not need design based standard errors. – joaoal May 4 at 11:42
up vote 4 down vote accepted

Alright, so I figured it out and thought I would update the post incase others were trying to figure it out. It's actually pretty straightforward.

data$X <- 1:nrow(data)
des1 <- svydesign(id = ~X,  weights = ~weight, data = data)
prog.lm <- svyglm(lexptot ~ progvillm + sexhead + agehead, design=des1)

Standard errors are now correct.

  • Are you sure it is correct? The id argument is for specifying clustered designs. Id should be ~0 or ~1 for simple random designs. – Michał Sep 3 '15 at 14:29
  • @Michał Yes this is correct. The standard errors are now correct. I don't see the need to id, but if you have a suggestion please provide an answer. – Vedda Sep 19 '15 at 17:27
  • 1
    This topic is two years old, but it is useful :) I will add that that svydesign(id = ~1, ...) is simplier and produces exactly the same results! – Roah May 1 '17 at 9:28

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