I am trying to calculate the Gini coefficient as the average over five repetitions. My code doesn't correctly work, and I cannot find a way to do it.

inequal7 is a user-written command.

gen gini=.
forval i=1/5 {
    mi xeq `i' : inequal7 income [aw=hw0010]
    gen gini_`i'=.
    scalar gini_`i'  = r(gini)
    replace gini_`i'= r(gini)
    if `i' ==5 {
        replace gini = sum(gini_1+gini_2+gini_3+gini_4+gini_5)/5

Can someone help me?

  • 1
    Can you please explain what is right and wrong with this? We don't know your goal/what the "gini coeffiecient..." means. – Avery Feb 16 at 18:40
  • 1
    See stackoverflow.com/help/mcve for how to ask questions. As @Avery tactfully implies "My code is wrong" is not informative in itself. – Nick Cox Feb 16 at 19:07
  • A pointless edit changed "My code is wrong" to what you can read now. – Nick Cox Feb 18 at 21:05

There is no context on or example of the dataset you're using. This may not work but it's likely to be closer to legal and correct than what you have.

scalar gini = 0 
forval i=1/5 {
    mi xeq `i' : inequal7 income [aw=hw0010]
    scalar gini  = scalar(gini) + r(gini)
scalar gini = scalar(gini) / 5 


  1. Using variables to hold constants is legal, but not necessarily good style.

  2. sum() gives the running or cumulative sum; applied to a variable that's a constant it does far more work than you need, and at best the correct answer will just be that in observation 1. As you're feeding it the sum of 5 values, it's redundant any way.

  3. Watch out: names for scalars and variables occupy the same namespace.

If this is a long way off what you want, and you get no better answer, you're likely to need to give much more detail.

  • Thank you for you reply. I have survey data which are multiply imputed - five times. There is no official solution that I know of in Stata for Gini coefficients under multiple imputation and weighted data. I can account for weighted data using mi xeq: [aw=weight] but no for multiply imputed data. So, my idea is that once I have the Gini coefficient for one implicate, I can repeat this calculation for the other 4 implicates. By averaging them I will get the multiple imputation estimate of the Gini coefficient. I tried the code provided but I got an error: type mismatch r(109); – Ilias Geo Feb 17 at 8:35
  • I've tested the code to do with scalars independently, so the problem is, I guess, with your call to inequal7 or some other part of the code you're not showing us. Check for string variables that should be numeric. I've never used mi xeq. As already commented, the question is a long way short of an MCVE. – Nick Cox Feb 17 at 8:46
  • Yes, indeed. The problem was with inequal7. I tried a different user-written command and it works. Thanks. – Ilias Geo Feb 17 at 10:24

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