In the code below the `lavaan()`

package is used. Sample data is created based on the question to fit `ML`

(`maximum likelihood`

). The `likelihood="wishart"`

was used similar to MPlus program. The packages can be downloaded from here: `cfa()`

, `lavaan()`

if manual installation is needed. Please note that the model implementation may vary based on the data and parameters.Documentation discusses alternative ways to set up the model. In this sample model, all factors were not used because it ran into problems with variances.

**Import libraries**

```
library(lavaan)
library(cfa)
```

**Create sample dataframe**

```
# Create sample data
Voluntary_Turnover_measure <- floor(runif(100,0,1.5))
IV_customerinjustice <- abs(rnorm(100,sd=.1))*2
Mod1_performance <- abs(rnorm(100,sd=.1))/10
Mod2_exhaustion <- abs(rnorm(100,sd=.1))/100
dem_age <- abs(floor(runif(100)*100))
Demands <- abs(rnorm(100))
DJ <- abs(rnorm(100))*20
PJ <- abs(rnorm(100))*10
IntJ <- runif(100,1,100)
InfJ <- IntJ**2
plot(IntJ, InfJ)
# Create dataframe
df <- data.frame(Voluntary_Turnover_measure, IV_customerinjustice, Mod1_performance, Mod2_exhaustion,
dem_age, Demands, DJ, PJ, IntJ, InfJ)
```

**Normalize dataframe values**

```
df_scaled <- scale(df)
df_scaled[,'Voluntary_Turnover_measure'] <- df[,'Voluntary_Turnover_measure'] # Response variable kept not normalized
```

**Specify the model**

```
model1 <- 'Voluntary_Turnover_measure = ~ DJ + PJ + IntJ + dem_age + Demands'
```

**Estimate the model parameters**

```
model1.fit <- cfa(model1, data=df_scaled)
summary(model1.fit)
```

**MLR Estimator**

```
mlr.fit <- cfa(model1,
data = df_scaled,
likelihood = "wishart",
estimator='MLR'
)
summary(mlr.fit)
```