Hi Everyone,
We have been looking for clear guidelines for investigating invariance with heavily skewed continuous predictors.
Although we are curious about general principles, the case we are looking at is a three factor structure with three different targets of the questions (rules for self, men, woman). We are treating this as longitudinal model, as each participant completes all three scales (equivalence of the same structure across all three targets / within subjects; i.e., using longFacNames and long.equal within measEq.syntax() ). (No Minimal reproducible example given theoretical discussion and guidelines).
Example indicator distribution attached.

1. When modelling a standard CFA for each model individually, it appears that WLS are better indicated given the distribution of some of the indicators. ML/MLR are strong methods of obtaining parameters when distributions are closer to normal, however, when this is substantially violated, WLS is better - essentially treating the indicators as ordinal. Given difficulties with converging, DWLS is often used here. (Forero et al., 2009;
https://doi.org/10.1080/10705510903203573).
When taking this approach, would we need to specify all indicators as categorical (Note that here we are using 0-100, however, often Likert 1-7 is used), and do the standard alternative fit indices make sense (SRMR, RMSEA, CFI, NNFI)?
2. However, when then running invariance through standard sequential constraint of parameters, it is unclear whether the standard approach to change in CFI is still meaningful using DWLS and not ML/MLR. Can we still use change in CFI at .01 (liberal) and .005 / .002 being more stringent benchmarks for change.
With Kind Regards and thanks for your help in advance,
Conal Monaghan