I am trying to validate a psychometric using CFA in R, the scale was measure using 5-point likert scale. 6-factor model, 66 items in the model, N = 200. Here is part of my model:

```
first.model<-'
Plan=~AS8+PL1+FO8+ID3
Improvement=~IO3+IO8+IO6+IO2+IO4+IO5+AS1+AS2
Influence=~IN4+IN13+IN6+IN15+IN2+IN12+IN7+IN9+IN11+IN8+IN5
Idea=~PR2+A16+O8+PR1+O12+PR11+O4+PR3+O14+O13+A11
Active=~PR8+AS6+AC1+AS7+AC8+AS13+AS10+AC6+AS9+E4+PL4
+A15+PL7+PR12+PR15+E10+AS3
Goal=~GF11+GF4+GF10+GF1+GF13+GF7+GF14+GF6+GF2+GF8
+PL9+GF5+PL10+E7+PL6
'
first.fit<-cfa(first.model, data=NE2, ordered =
c("AS8","PL1","FO8","ID3","IO3","IO8","IO6","IO2","IO4",
"IO5","AS1","AS2","IN4","IN13","IN6","IN15","IN2","IN12",
"IN7","IN9","IN11","IN8","IN5","PR2","A16","O8","PR1",
"O12","PR11","O4","PR3","O14","O13","A11","PR8","AS6",
"AC1","AS7","AC8","AS13","AS10","AC6","AS9","E4","PL4",
"A15","PL7","PR12","PR15","E10","AS3","GF11","GF4","GF10",
"GF1","GF13","GF7","GF14","GF6","GF2","GF8","PL9","GF5",
"PL10","E7","PL6"),std.lv=T)'
```

However, after I run the second part (categorical part), I receive a warning message that says: **Warning message:
In lav_model_vcov(lavmodel = lavmodel, lavsamplestats = lavsamplestats, :
lavaan WARNING:
The variance-covariance matrix of the estimated parameters (vcov)
does not appear to be positive definite! The smallest eigenvalue
(= -9.174795e-17) is smaller than zero. This may be a symptom that
the model is not identified.**

When I checked for heywood cases there was no negative variances or covariances greater than 1:

```
Variances:
Estimate Std.Err z-value P(>|z|) Std.lv
.AS8 0.594 0.594
.PL1 0.215 0.215
.FO8 0.659 0.659
.ID3 0.973 0.973
.IO3 0.652 0.652
.IO8 0.699 0.699
... (rows omitted)
Covariances:
Estimate Std.Err z-value P(>|z|)
Plan ~~
Imprvmnt 0.470 0.060 7.809 0.000
Influence 0.512 0.060 8.514 0.000
Idea 0.688 0.056 12.331 0.000
Active 0.696 0.051 13.650 0.000
Goal 0.545 0.057 9.558 0.000
... (etc etc)
```

Any suggestions for steps forward please advice. Thank you!