The problem in your function is that you refer to `MyData`

in the last line even though you do not pass this dataset to the function. Actually, the function does look into your global environment and finds `MyData`

there. But your z-scored variables and `Interaktion`

are not included in this version of `MyData`

, so the function reports an error about "missing variables in dataset".

It works with the following changes:

```
Moderation <- function(Mod, UV, AV) {
require(lavaan) #This ensures the function works even if you did not do library(lavaan) first.
ZMod <- scale(Mod) #I simplified stuff here. The "scale" function is equivalent to what you did.
ZUV <- scale(UV)
Interaktion <- ZUV*ZMod
MyData <- as.data.frame(list(ZMod=ZMod, ZUV=ZUV, AV=AV, Interaktion=Interaktion)) #Here, MyData is generated so that you can use it further below
Moderation.fit <- 'AV ~ ZUV + ZMod + Interaktion' #nothing changed here
summary(sem(model = Moderation.fit, data = MyData, meanstructure = TRUE))
}
```

I tested it with the popular `mtcars`

dataset:

```
data(mtcars)
Moderation(mtcars$am, mtcars$hp, mtcars$mpg)
##lavaan 0.6-7 ended normally after 28 iterations
##
## Estimator ML
## Optimization method NLMINB
## Number of free parameters 5
##
## Number of observations 32
##
##Model Test User Model:
##
## Test statistic 0.000
## Degrees of freedom 0
##
##Parameter Estimates:
##
## Standard errors Standard
## Information Expected
## Information saturated (h1) model Structured
##
##Regressions:
## Estimate Std.Err z-value P(>|z|)
## AV ~
## ZUV -4.043 0.560 -7.225 0.000
## ZMod 2.633 0.513 5.134 0.000
## Interaktion 0.014 0.527 0.026 0.979
##
##Intercepts:
## Estimate Std.Err z-value P(>|z|)
## .AV 20.094 0.505 39.785 0.000
##
##Variances:
## Estimate Std.Err z-value P(>|z|)
## .AV 7.670 1.917 4.000 0.000
```

Viel Erfolg und Spass damit!

`MyData`

– coffeinjunky Nov 22 '20 at 16:40`ZAV`

defined? – YBS Nov 22 '20 at 16:59