Hi
I have used Stata's SEM for a linear regression SEM model which worked fine and got some nice results.
Nevertheless I didn't get an upper bound for RMSEA:
RMSEA | 0.000
90% CI, lower bound | 0.000
upper bound | .
pclose | 0.994 Probability RMSEA <= 0.05
When I tested the exact same model (and same dataset) on AMOS (hoping to get a 90% ci) the results were different. All the regression estimates were identcal and SEs and p-values were almost the same with the exception of one estimate (effect of gender on a biochemical index) where, although the effect was the same, the SE and therefore the p-value differed significanlty (p=0.25 in Stata vs <0.001 in AMOS). In all other estimates the differences were negligible.
What was even more impressive (and frustrating) was the huge differences in RMSEA. Compared to the abovementioned values form Stata in AMOS the results were disappointing:
RMSEA
The differences are huge and what puzzles me is that I don't think it's some technical difference in estimation routines that has generated these results
Any thoughts why these discrepancies exist??
Thanks
I have used Stata's SEM for a linear regression SEM model which worked fine and got some nice results.
Nevertheless I didn't get an upper bound for RMSEA:
RMSEA | 0.000
90% CI, lower bound | 0.000
upper bound | .
pclose | 0.994 Probability RMSEA <= 0.05
When I tested the exact same model (and same dataset) on AMOS (hoping to get a 90% ci) the results were different. All the regression estimates were identcal and SEs and p-values were almost the same with the exception of one estimate (effect of gender on a biochemical index) where, although the effect was the same, the SE and therefore the p-value differed significanlty (p=0.25 in Stata vs <0.001 in AMOS). In all other estimates the differences were negligible.
What was even more impressive (and frustrating) was the huge differences in RMSEA. Compared to the abovementioned values form Stata in AMOS the results were disappointing:
RMSEA
Model | RMSEA | LO 90 | HI 90 | PCLOSE |
Default model | .359 | .309 | .411 | .000 |
The differences are huge and what puzzles me is that I don't think it's some technical difference in estimation routines that has generated these results
Any thoughts why these discrepancies exist??
Thanks
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