12

I try to put some 2SLS regression outputs generated via ivreg() from the AER package into a Latex document using the stargazer package. I have a couple of problems however that I can't seem to solve myself.

  1. I can't figure out on how to insert model diagnostics as provided by the summary of ivreg(). Namely weak instruments tests, Wu-Hausmann and Sargan Test. I would like to have them with the statistics usually reported underneath the table like number of observations, R-squared, and Resid. SE. The stargazer function doesn't seem to have an argument where you can provide a list with additional diagnostics. I didn't put this into my example because I honestly have no clue where to begin.
  2. I want to exchange the normal standard errors with robust standard errors and the only way to do this that i found is producing objects with robust standard errors and adding them in the stargazer() function with se=list(). I put this into the minimum working example below. Is there maybe a more elegant way to code this or maybe re-estimate the model and save it with robust standard errors?
library(AER)
library(stargazer)

y <- rnorm(100, 5, 10)
x <- rnorm(100, 3, 15)
z <- rnorm(100, 3, 7)
a <- rnorm(100, 1, 7)
b <- rnorm(100, 3, 5)

# Fitting IV models
fit1 <- ivreg(y ~ x + a  |
             a + z,
             model = TRUE)
fit2 <- ivreg(y ~ x + a  |
             a + b + z,
             model = TRUE)

# Here are the se's and the diagnostics i want
summary(fit1, vcov = sandwich, diagnostics=T)
summary(fit2, vcov = sandwich, diagnostics=T)

# Getting robust se's, i think HC0 is the standard
# used with "vcov=sandwich" from the  above summary
cov1        <- vcovHC(fit1, type = "HC0")
robust1     <- sqrt(diag(cov1))
cov2        <- vcovHC(fit2, type = "HC0")
robust2     <- sqrt(diag(cov1))

# Create latex table
stargazer(fit1, fit2, type = "latex", se=list(robust1, robust2))
1

1 Answer 1

19

Here's one way to do what you want:

require(lmtest)

rob.fit1        <- coeftest(fit1, function(x) vcovHC(x, type="HC0"))
rob.fit2        <- coeftest(fit2, function(x) vcovHC(x, type="HC0"))
summ.fit1 <- summary(fit1, vcov. = function(x) vcovHC(x, type="HC0"), diagnostics=T)
summ.fit2 <- summary(fit2, vcov. = function(x) vcovHC(x, type="HC0"), diagnostics=T)

stargazer(fit1, fit2, type = "text", 
          se = list(rob.fit1[,"Std. Error"], rob.fit2[,"Std. Error"]), 
          add.lines = list(c(rownames(summ.fit1$diagnostics)[1], 
                             round(summ.fit1$diagnostics[1, "p-value"], 2), 
                             round(summ.fit2$diagnostics[1, "p-value"], 2)), 
                           c(rownames(summ.fit1$diagnostics)[2], 
                             round(summ.fit1$diagnostics[2, "p-value"], 2), 
                             round(summ.fit2$diagnostics[2, "p-value"], 2)) ))

Which will yield:

==========================================================
                                  Dependent variable:     
                              ----------------------------
                                           y              
                                   (1)            (2)     
----------------------------------------------------------
x                                 -1.222        -0.912    
                                 (1.672)        (1.002)   

a                                 -0.240        -0.208    
                                 (0.301)        (0.243)   

Constant                          9.662         8.450**   
                                 (6.912)        (4.222)   

----------------------------------------------------------
Weak instruments                   0.45          0.56     
Wu-Hausman                         0.11          0.18     
Observations                       100            100     
R2                                -4.414        -2.458    
Adjusted R2                       -4.526        -2.529    
Residual Std. Error (df = 97)     22.075        17.641    
==========================================================
Note:                          *p<0.1; **p<0.05; ***p<0.01

As you can see, this allows manually including the diagnostics in the respective models.


You could automate this approach by creating a function that takes in a list of models (e.g. list(summ.fit1, summ.fit2)) and outputs the objects required by se or add.lines arguments.

gaze.coeft <- function(x, col="Std. Error"){
    stopifnot(is.list(x))
    out <- lapply(x, function(y){
        y[ , col]
    })
    return(out)
}
gaze.coeft(list(rob.fit1, rob.fit2))
gaze.coeft(list(rob.fit1, rob.fit2), col=2)

Will both take in a list of coeftest objects, and yield the SEs vector as expected by se:

[[1]]
(Intercept)           x           a 
  6.9124587   1.6716076   0.3011226 

[[2]]
(Intercept)           x           a 
  4.2221491   1.0016012   0.2434801

Same can be done for the diagnostics:

gaze.lines.ivreg.diagn <- function(x, col="p-value", row=1:3, digits=2){
    stopifnot(is.list(x))
    out <- lapply(x, function(y){
        stopifnot(class(y)=="summary.ivreg")
        y$diagnostics[row, col, drop=FALSE]
    })
    out <- as.list(data.frame(t(as.data.frame(out)), check.names = FALSE))
    for(i in 1:length(out)){
        out[[i]] <- c(names(out)[i], round(out[[i]], digits=digits))
    }
    return(out)
}
gaze.lines.ivreg.diagn(list(summ.fit1, summ.fit2), row=1:2)
gaze.lines.ivreg.diagn(list(summ.fit1, summ.fit2), col=4, row=1:2, digits=2)

Both calls will yield:

$`Weak instruments`
[1] "Weak instruments" "0.45"             "0.56"            

$`Wu-Hausman`
[1] "Wu-Hausman" "0.11"       "0.18"      

Now the stargazer() call becomes as simple as this, yielding identical output as above:

stargazer(fit1, fit2, type = "text", 
      se = gaze.coeft(list(rob.fit1, rob.fit2)), 
      add.lines = gaze.lines.ivreg.diagn(list(summ.fit1, summ.fit2), row=1:2))

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.