**13**

votes

**1**answer

6k views

### Extract prediction band from lme fit

I have following model
x<-rep(seq(0,100,by=1),10)
y<-15+2*rnorm(1010,10,4)*x+rnorm(1010,20,100)
id<-NULL
for (i in 1:10){
id<-c(id, rep(i,101))}
dtfr<-data.frame(x=x,y=y, id=id)
...

**11**

votes

**3**answers

16k views

### How to get coefficients and their confidence intervals in mixed effects models?

In lm and glm models, I use functions coef and confint to achieve the goal:
m = lm(resp ~ 0 + var1 + var1:var2) # var1 categorical, var2 continuous
coef(m)
confint(m)
Now I added random effect to ...

**3**

votes

**2**answers

3k views

### Converting Repeated Measures mixed model formula from SAS to R

There are several questions and posts about mixed models for more complex experimental designs, so I thought this more simple model would help other beginners in this process as well as I.
So, my ...

**4**

votes

**1**answer

2k views

### How to plot random intercept and slope in a mixed model with multiple predictors?

Is it possible to plot the random intercept or slope of a mixed model when it has more than one predictor?
With one predictor I would do like this:
#generate one response, two predictors and one ...

**4**

votes

**1**answer

7k views

### R: Interaction Plot with a continuous and a categorical variable for a GLMM (lme4)

I would like to make an interaction plot to visually display the difference or similarity in slopes of interaction of a categorical variable (4 levels) and a standardized continuous variable from the ...

**2**

votes

**1**answer

802 views

### R: analyzing multiple responses (i.e. dependent variables) in a mixed effects model (lme4)

I have a, what I thought, really simple question. In a longitudinal experiment with a group of participants has everyone rated everyone else on, let's say, 10 variables (e.g. "This person is ...

**2**

votes

**1**answer

586 views

### how to allow for factor-specific variance of random effect in lme

I assume that the random effects variances in my mixed effect model will be different for different levels of the fixed factor BTyp.
Here is my model
fm2 <- lme(CA ~ 1 + ...