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Model fit indices for a logistic regr... |
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Hello, I am trying to conduct a multiple group logistic regression, and I am getting weird model fit statistics. Is my model underidentified? Here is the input: VARIABLE: USEVARIABLES ARE y1 x1 x2 x3 x4 x5 x6 x7 x8 x9 x78 x79; CATEGORICAL = y1; MISSING IS .; GROUPING = x1(0=male 1=female); ANALYSIS: ITERATIONS = 100000; MODEL: y1 ON x1 x2 x3 x4 x5 x6 x7 x8 x9 x78 x79; And here is some of the output: MODEL FIT INFORMATION Number of Free Parameters 22 Chi-Square Test of Model Fit Value 0.000* Degrees of Freedom 0 P-Value 0.0000 Chi-Square Contribution From Each Group MALE 0.000 FEMALE 0.000 RMSEA (Root Mean Square Error Of Approximation) Estimate 0.000 90 Percent C.I. 0.000 0.000 Probability RMSEA <= .05 0.000 CFI/TLI CFI 1.000 TLI 1.000 |
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This model is "just-identified" so that no overall model test of fit is available. You can test if there is gender equality. The way your model is now written, you let males and females have different estimates. |
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Dr. Muthen, Thank you for your response. I am interested specifically in the path y1 ON x78. x1-x5 are control variables in the analysis and I do not have any theoretical reason as to why they should be unconstrained. Should I then, in service of having a more parsimonious model, have the paths y1 ON x1-x5 constrained, and then compare the model that also constrains the y1 on x78 path? I disagree with a colleague on this topic. I believe that I should constrain the control variable path but they believe I should leave it unconstrained and only try constraining the path I am interested in and test the difference. Is there a good article/book that would walk through this sort of decision? Thank you for your insight! |
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I think you could argue both ways depending on the situation. You want to test gender invariance for one of the paths. The best way to do that is in a model that is close to the correct model so that other sources of misfit don't play in. So if you really think/have evidence that the control variable influences are gender invariant, you should hold them invariant. If you don't, holding them invariant starts the testing of what you are interested in using a model that is too far from the correct one. |
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