I am trying to compute a structural equation model with the sem-function in R with the package lavaan. (This is for a term paper and I have done that with other data once before, but now I got stuck and I would be very grateful if you could help me.)

There are two categorial variables (one latent exogenous and one latent endogenous) I wish to include in the final version of the model.

As soon as I include one of the categorial variables in the model, however, R produces the following warning:

1: In estimateVCOV(lavaanModel, samplestats = lavaanSampleStats, options = lavaanOptions, : lavaan WARNING: could not compute standard errors!

2: In computeTestStatistic(lavaanModel, partable = lavaanParTable, : lavaan WARNING: could not compute scaled test statistic

Here is the code I used:

(This is a very small version of the final model and here I introduce only one categorial variable. The warning is the same for the complex and any simple version of the model).

```
model1 <- '
Wertschaetzung_Essen =~ abwechslungsreiche_M + schnell_zubereitbar + koche_sehr_gerne + koche_sehr_haeufig
Fleischverzicht =~ Ern_Index1
Fleischverzicht ~ Wertschaetzung_Essen
'
fit_model1 <- sem(model1, data=survey2_subset, ordered = c("Ern_Index1"))
```

The output of str(survey2_subset) is as follows:

```
'data.frame': 3676 obs. of 116 variables:
$ abwechslungsreiche_M : num 4 2 3 4 3 3 4 3 3 3 ...
$ schnell_zubereitbar : num 0 3 2 0 0 1 3 2 1 1 ...
$ koche_sehr_gerne : num 1 3 3 1 3 1 4 4 4 3 ...
$ koche_sehr_haeufig : num 2 2 3 NA 3 2 2 4 3 3 ...
$ Ern_Index1 : num 1 1 1 1 0 0 1 0 1 0 ...
```

And the output of

```
`summary(fit_model1, fit.measures = TRUE, standardized=TRUE)`
```

is:

```
lavaan (0.5-15) converged normally after 31 iterations
Used Total
Number of observations 3469 3676
Estimator DWLS Robust
Minimum Function Test Statistic 13.716 NA
Degrees of freedom 4 4
P-value (Chi-square) 0.008 NA
Scaling correction factor NA
Shift parameter
for simple second-order correction (Mplus variant)
Model test baseline model:
Minimum Function Test Statistic 2176.159 1582.139
Degrees of freedom 10 10
P-value 0.000 0.000
User model versus baseline model:
Comparative Fit Index (CFI) 0.996 NA
Tucker-Lewis Index (TLI) 0.989 NA
Root Mean Square Error of Approximation:
RMSEA 0.026 NA
90 Percent Confidence Interval 0.012 0.042 NA NA
P-value RMSEA <= 0.05 0.994 NA
Parameter estimates:
Information Expected
Standard Errors Robust.sem
Estimate Std.err Z-value P(>|z|) Std.lv Std.all
Latent variables:
Wertschaetzung_Essen =~
abwchslngsr_M 1.000 0.363 0.436
schnll_zbrtbr 1.179 0.428 0.438
koche_shr_grn 2.549 0.925 0.846
koche_shr_hfg 2.530 0.918 0.775
Fleischverzicht =~
Ern_Index1 1.000 0.249 0.249
Regressions:
Fleischverzicht ~
Wrtschtzng_Es 0.302 0.440 0.440
Intercepts:
abwchslngsr_M 3.133 3.133 3.760
schnll_zbrtbr 1.701 1.701 1.741
koche_shr_grn 2.978 2.978 2.725
koche_shr_hfg 2.543 2.543 2.148
Wrtschtzng_Es 0.000 0.000 0.000
Fleischvrzcht 0.000 0.000 0.000
Thresholds:
Ern_Index1|t1 0.197 0.197 0.197
Variances:
abwchslngsr_M 0.562 0.562 0.810
schnll_zbrtbr 0.771 0.771 0.808
koche_shr_grn 0.339 0.339 0.284
koche_shr_hfg 0.559 0.559 0.399
Ern_Index1 0.938 0.938 0.938
Wrtschtzng_Es 0.132 1.000 1.000
Fleischvrzcht 0.050 0.806 0.806
```

I suppose that the model is not identified, but there should be enough degrees of freedom and the loadings of the first manifest items are set to one as well.

What to do and try next?

I would be very grateful, if someone could help me or give me a hint what to do to make the model estimable with standard errors and a scaled test statistic.

`str(survey2_subset)`

– BondedDust Apr 9 '14 at 15:01`summary`

function for such objects, night wahr? – BondedDust Apr 9 '14 at 15:09