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0answers
20 views

Specifying the variance component model varComp

I am trying to fit a random slope model by varComp in R . For the following example , that is in lmer syntax , how can I write it in varComp syntax : library(lme4) library(varComp) fm1 <- ...
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2answers
27 views

Confidence Interval Based on Asymptotic Normality in lmer model

Why is not confint.default which is based on asymptotic normality doesn't work for lmer model ? fit <- lmer(y~(1|operator)+(1|part),data=dat) Linear mixed model fit by REML ['lmerMod'] Formula: y ...
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0answers
18 views

Warning Messages : confint command for lmer model

I am doing a simulation study for sample size calculation for multilevel modeling. I am using R for both simulation and estimation . As posted in this post , confint function was not working and that ...
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1answer
38 views

SAS GLIMMIX subject estimates

I am trying to analyze a dataset where each subject has 12 repeated measures (quarterly over 3 years). I want to extract subject specific estimates of the time slope to evaluate if the subjects are ...
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0answers
32 views

Random effects estimation error with plm package due to negative variance

I'm trying to estimate a panel data model with random effects Swamy and Ahora transformation on market share data of tourism destinations. Please, find attached the dataset in ...
0
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1answer
49 views

How do I get properly accounted for nested random effects with lme4?

I have a data frame with subject, wd, and group variables, and a value response variable. Each subject is assigned to one group and has 7 measurements taken over each weekday. Because each subject ...
2
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1answer
71 views

Non-linear random-effects regression with multiplication of coefficients in R

I have two regression models without random effects: one is OLS using lm, the other includes multiplication of coefficients using nle. I wish to add individual-level random effects to both. I've ...
0
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2answers
140 views

Prediction with lme4 on new levels

I'm trying to fit a mixed effects model and then use that model to generate estimates on a new dataset that may have different levels. I expected that the estimates on a new dataset would use the ...
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0answers
79 views

R-INLA: random effect logistic regression

I am trying to reproduce the Seeds tutorial of openbugs with the R-INLA package for R. Here's the model (r are the numer of germinated seed for the i-th plate, and n are the number of seeds of the ...
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0answers
75 views

computation of random effect estimates with missing data using LMER

For a class I would like to illustrate how lmer handles missing data. To do so I removed 1 ouf of 2 within-subject conditions for two subjects in my data set and run the following model including ...
0
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1answer
108 views

Random effects model in R - error

I am running econometric model with panel data in R. I am using plm package and pooled model and fixed effects model works great. But I get this error when trying to do random effects model and I ...
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0answers
133 views

R - plotting the predictions from a mixed model with more than two predictors (continuous and factor)

I found this answer by Ben Bolker to a post and it is really helpful (How to plot random intercept and slope in a mixed model with multiple predictors?). However, if my model looks more like this: /n ...
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1answer
90 views

choosing the best structure of the random effects in a GLMM

I am trying to choose the best random effect structure in a GLMM, before starting with the fixed terms. To do that I include all the fixed effect and their interactions (beyond optimal model) and then ...
0
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1answer
88 views

how do I save/refer to estimates and SE in the output of the lsmeans function in R

I am using the lsmeans function to investigate a time-dependency in my data: lme=lme(attraction~factor(time),random=~1|id, data=na.exclude(subject)) lme.lms=lsmeans(lme, "time") summary(lme.lms) ...
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0answers
183 views

Testing significance of interaction between fixed and random effect in R. Correct syntax ??

I am working on a mixed model using lmer in R and I am a bit stuck on some coding. I have measured male and female fitness in Drosophila from 35 inbred lines (genotype) over three blocks. My response ...
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0answers
34 views

Random effect plot in nlme

This question is regarding random effects plot in nlme. I'm trying to plot outcome of covariates and random effects with the following code below: plot(ranef(object.nlme, aug = T), form = Crcl ~ age ...
2
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1answer
317 views

One-way random-effects ANOVA in SAS: PROC GLM or MIXED?

I'm attempting to conduct a simple one-way random-effects ANOVA in SAS. I want to know if the population variance is significantly different than zero or not. On UCLA's idre site, they state to use ...
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0answers
272 views

Syntax to output random slope estimate for nested random variable in SAS PROC GLIMMIX

I wish to look at the fixed effects of three variables, PS, TH, and HW for the random variable ID. I am also interested in knowing the estimates for the random slope of each subject (ID) for each ...
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1answer
53 views

Nested design and F-, p- & R²-values in eHOF package

I would like to consider my nested study design in the HOF function of the eHOF package. We sampled in points which where nested in sample blocks and those where nested in villages (random). So far I ...
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0answers
121 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 ...
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1answer
111 views

Random effect Estimate in SAS

I have a panel data of firms (Panel specification: ID,Time) and trying to run Logit Random Effect model on this data in SAS where my binary (0,1) dependent variable is Def. This is the code that I am ...
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0answers
221 views

Heteroscedastic GLMM in lme4

I am trying to fit a Poisson regression model with random effects using lme4. My response variable Y represents frequencies in a two way table but I am only interested in the impact of a covariate ...
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0answers
73 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 ...
3
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1answer
310 views

individual random effects model with standard errors clustered on a different variable in R (R-project)

I'm currently working on some data from an experiment. Thus, I have data about some individuals who are randomly assigned to 2 different treatments. For each treatment, we ran three sessions. In each ...
3
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1answer
900 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 + ...
5
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1answer
1k views

How does lmer (from the R package lme4) compute log likelihood?

I'm trying to understand the function lmer. I've found plenty of information about how to use the command, but not much about what it's actually doing (save for some cryptic comments here: ...
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0answers
339 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
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1answer
389 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 ...
4
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1answer
3k 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 ...
1
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1answer
331 views

Random Effects with count Models

I'm trying to do a hurdle model with random effects in either r or stata. I've looked at the glmmADMB package, but am running into problems getting it download in R and I can't find any documentation ...
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0answers
64 views

Content coming from a web application sometimes randomly shuffled

We develop a Java web application which is run on Tomcat. It's been installed on many computers and it's working without problems. Recently, on a single remote installation, it exhibits very strange ...
0
votes
1answer
299 views

Frailty estimates in coxph object

If one uses obj=coxph(... + frailty(id) ), then the object also returns (log)frailty estimates for each individual, which can be extracted with obj$frail. Does anybody knows how these estimates ...
17
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2answers
12k views

In R, plotting random effects from lmer (lme4 package) using qqmath or dotplot: how to make it look fancy?

The qqmath function makes great caterpillar plots of random effects using the output from the lmer package. That is, qqmath is great at plotting the intercepts from a hierarchical model with their ...
3
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2answers
354 views

Extracting the number of observations and the modes of random effects from a mer object

I have a mer object created with a called to lmer(). I can obtain the random effects with ranef() but I would also like to have corresponding number of observations for each random effect - is there ...
4
votes
1answer
296 views

Survey Weighted Random Effects Logit Model in R

I am trying to predict a binary outcome with a model that includes a random effect using survey data. I've included a description of the sampling design below, so feel free to comment on my survey ...
12
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3answers
21k 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 ...