0
votes
1answer
28 views

Partially nested/blocked experimental design in R

The design of the experiment involves 10 participants. All of them go through conditions A, B, C, D for treatment, however for participants 1-5 go through conditions E,F and participants 6-10 go ...
0
votes
2answers
822 views

Get 95% confidence interval with glm(..) in R

Here are some data dat = data.frame(y = c(9,7,7,7,5,6,4,6,3,5,1,5), x = c(1,1,2,2,3,3,4,4,5,5,6,6), color = rep(c('a','b'),6)) and the plot of these data if you wish require(ggplot) ggplot(dat, ...
1
vote
2answers
914 views

Specifying a correlation structure for a linear mixed model using the ramps package in R

I am trying to create a linear mixed model (lmm) that allows for a spatial correlation between points (have lat/long for each point). I would like the spatial correlation to be based upon the great ...
1
vote
1answer
166 views

nlme and lme4 Ignoring squared terms

I am trying to build on a standard translog demand function, which is: lnY = lnP + lnZ + lnY*lnZ + lnY^2 + lnZ^2 Where Y = demand, P = price, and Z = income. However, when I include the squared ...
2
votes
3answers
734 views

accessing random effects variance estimate in nlme's lme

Is there any way of obtaining the variance of a random term in a nlme package lme model? Random effects: Formula: ~t | UID Structure: General positive-definite, Log-Cholesky parametrization ...
4
votes
0answers
431 views

How do I perform a Mixed model analysis on my data in SPSS? [closed]

In my thesis I'm trying to discover which factors influence the CSR (corporate social responsibility, GSE_RAW) behavior of companies. Two groups of possible factors / variables have been identified: ...
-2
votes
1answer
3k views

How to generate a plot of residuals versus predictor variable for a mixed model? [closed]

My mixed model is as follows: model <- lme(Cost~1+Units, random=~1+Units|Factory, method="ML", data=A) I was told to apply the code below to plot residuals versus fitted values and it worked: ...
4
votes
1answer
473 views

Evaluating the ikelihood function in linear mixed models (lme4)

I am currently writing a script to evaluate the (restricted) log-likelihood function for use in linear mixed models. I need it to calculate the likelihood of a model with some parameters fixed to ...
2
votes
0answers
384 views

parameters CI linear mixed model: profile function using lme4 or lme4a

I am trying to calculate the 95% confidence intervals of a linear mixed model calculated with lmer() function from lme4 package. Reading Baker (2010) there is a way to calcuilate the cononfidence ...