# Tagged Questions

**1**

vote

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38 views

### Multiple correlated random non-nested intercepts in R

I am trying to estimate a longitudinal model in R in which there are several random intercepts that are correlated with each other, and the data are non-nested. For example, consider a simple ...

**0**

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**0**answers

42 views

### Random effects assumption and testing level 2 predictor variables

I was wondering if someone has any advice about the analysis I’m carrying out, or just give a recommended reference? I’m using a random effects modelling approach to account for clustering of patients ...

**1**

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**1**answer

434 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 + ...

**0**

votes

**0**answers

227 views

### Simulating random effects / mixed models in SAS

I'm trying to create a simulation of drug concentration based on the dose of a drug given. I have some preliminary data and I used a random effects model to analyze the relationship between log(dose), ...

**2**

votes

**1**answer

269 views

### R, lme: specifying random effects for mixed model of before-after-gradient analysis

I'm trying to measure the biological impacts of an industrial development using a Before-After-Gradient approach. I am using a linear mixed model approach in R, and am having trouble specifying an ...

**3**

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 ...

**9**

votes

**3**answers

14k 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 ...