Greetings,
I'm running Mac OSX on Stata 15.1. I'd like to test whether a mental health battery is measurement invariant across racial/ethnic groups. However, the indicators comprising this mental health index are ordinal/Likert scales. Stata's SEM assumes that indicators are normally distributed (an assumption likely to be violated with ordinal indicators). I'm thus not sure how to proceed. Is there an estimation method that is robust to this violation? I know that there is one in R's laavan package (WLS), but I'm not proficient in R so I'm stuck using Stata. What can/should I do? Should I simply treat the indicators as if they were continuous variables (i.e., ignore the assumption of normality)? Any thoughts or advice you have is much appreciated. Thanks!
Best,
Zach
I'm running Mac OSX on Stata 15.1. I'd like to test whether a mental health battery is measurement invariant across racial/ethnic groups. However, the indicators comprising this mental health index are ordinal/Likert scales. Stata's SEM assumes that indicators are normally distributed (an assumption likely to be violated with ordinal indicators). I'm thus not sure how to proceed. Is there an estimation method that is robust to this violation? I know that there is one in R's laavan package (WLS), but I'm not proficient in R so I'm stuck using Stata. What can/should I do? Should I simply treat the indicators as if they were continuous variables (i.e., ignore the assumption of normality)? Any thoughts or advice you have is much appreciated. Thanks!
Best,
Zach
Comment