I am trying to plot some of my model estimates. I am new to mixed effects models and the effects package, and have some trouble. My model looks like this:

```
nurse_female.lmer8 <- lmer(F1 ~ (phoneme|individual) + (1|word) + frequency, data = nurse_female)
Linear mixed model fit by REML ['lmerMod']
Formula: F1 ~ (phoneme | individual) + (1 | word) + frequency
Data: nurse_female
REML criterion at convergence: 693.4
Scaled residuals:
Min 1Q Median 3Q Max
-3.6681 -0.5060 -0.0163 0.4837 3.0160
Random effects:
Groups Name Variance Std.Dev. Corr
word (Intercept) 0.12345 0.3514
individual (Intercept) 0.37990 0.6164
phonemeIr 0.08146 0.2854 0.07
phonemeVr 0.21856 0.4675 -0.42 -0.39
Residual 0.29672 0.5447
Number of obs: 334, groups: word, 116; individual, 23
Fixed effects:
Estimate Std. Error t value
(Intercept) -0.1043 0.2860 -0.365
frequencylow 0.7845 0.2661 2.948
frequencymid 0.0876 0.4005 0.219
frequencyvery high 1.1477 0.3965 2.895
Correlation of Fixed Effects:
(Intr) frqncyl frqncym
frequencylw -0.884
frequencymd -0.592 0.632
frqncyvryhg -0.584 0.634 0.406
```

I tried using the effects package, but as far as I know I can only plot the fixed predictor frequency (which is categorised in 'low, mid, high, very high'). I used the following code to do this:

```
nurse_female_F1.effect <- effect("frequency", nurse_female.lmer8)
summary(nurse_female_F1.effect)
# For plotting, convert the effect list object into a data frame
nurse_female_F1.effect <- as.data.frame(nurse_female_F1.effect)
nurse_female_F1.effect
# Plotting using ggplot2
ggplot(nurse_female_F1.effect, aes(frequency, fit)) +
geom_point() +
geom_errorbar(aes(ymin = fit-se, ymax = fit + se), width = 0.4) +
theme_classic()
```

This works fine and I think I have a somewhat useful plot.

Is there a way to do something similar for the crossed random (phoneme|individual) and random (1|word) predictors? Most important, however, would be the crossed random one.

Thanks in advance!!! If you need any further information, just let me know.

`?ranef`