lme4 is an R package for fitting and analyzing linear, nonlinear and generalized linear mixed models.

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34 views

How to plot a subset of the factor levels of a mixed model in R

I did a mixed model with lme, with two random factor F1 (6 levels) and F2 (4 levels). MiModel<-lme(iv~d1+d1_id,list(Fact1=~1+d1, Fact2=~-1+d1), ...
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23 views

Error: Invalid grouping factor specification [closed]

I've been trying to perform a glmer() on my dataset, which worked perfectly fine, until this morning when I tried to rerun it. With this model I'm trying to analyse the effect of different treatments ...
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33 views

Standardized coefficients for lmer with accuracy scores

Apologies if I'm making any silly errors, I'm pretty new to R. I have been searching for the answer to my question, but haven't got very far! I need to report standardized coefficients for the ...
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1answer
25 views

perfom glmer.nb(), error message:(maxstephalfit) PIRLS step-halvings failed to reduce deviance in pwrssUpdate

Wheng perfoming glmer.nb, we just get error message > glm1 <- glmer.nb(Jul ~ scale(I7)+ Maylg+(1|Year), data=bph.df) Error: (maxstephalfit) PIRLS step-halvings failed to reduce deviance in ...
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27 views

running lmer with a by/group by statement?

I'm trying to find a quick way to run a lmer model but run it separately for each grouping variable (in SAS one can use the by= statement). I have tried using dplyr for this with a code I found: ...
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29 views

Binomial glmm with a categorical variable with full successes [migrated]

I am running a glmm with a binomial response variable and a categorical predictor. The random effect is given by the nested design used for the data collection. The data looks like this: ...
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1answer
143 views

(Quasi)-Complete separation according to a random effect in logistic GLMM

I am experiencing convergence warning and very large group variance while fitting a binary logistic GLMM model using lme4. I am wondering whether this could be related to (quasi) complete separation ...
2
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1answer
44 views

Options for caterpillar plots in lme4, grouping by factor to visually identify temporal trends

I'm analyzing a large and complex data set using the lmer function in lme4. I'm using lattice and dotplot to generate caterpillar plots of my random effects. Is there a way to color code my ...
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12 views

How do I interpret the random variance of random effect in glmr output [migrated]

In a logistic Generalized Linear Mixed Model (family = binomial), I don't know how to interpret the random effects variance: Random effects: Groups Name Variance Std.Dev. HOSPITAL ...
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28 views

lmer nested design estimating variance of one level as zero

I have data from a series of psychology experiments in which human subjects completed one of many tasks. Multiple observations are taken per subject. Finally, tasks can be divided into one of two ...
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42 views

sas proc hpmixed in R?

sWe have build an linear mixed model in SAS with the HPMIXED procedure: 1 response, 31 fixed effects, 1 subject level (5 categories) and 23 random effects. Now we try to rebuild this model in R ...
2
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1answer
51 views

Extracting results from a `lmermod` object

I would like to extract some results from a lmermod object require(lme4) (fm1 <- lmer(Yield ~ 1|Batch, Dyestuff)) This produces Linear mixed model fit by REML ['lmerMod'] Formula: Yield ~ 1 | ...
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1answer
48 views

Summary of lme4 model in function (lmerTest)

If one has the following data d = data.frame(out=rnorm(10), explain=rnorm(10), age=rnorm(10), sex=sample(c("M", "F"), size=10, replace=T), group=rep(c(1:5), 2)) f = as.formula("out ~ explain + age + ...
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1answer
54 views

R - Model specification for repeated measures GLMM (lme4)

I'm having some trouble correctly specifying my longitudinal model in R. My analysis is looking at gender differences in a score assessed at three time points. In effect, I want to see if either ...
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27 views

How to find original variables in merMod objects with interaction terms (fitted with lme4 package)?

I would like to calculate interaction effects, like shown in this blog posting, so I can calculate y = (b0 + (b1 * xa) + (b3 * xa * xb)), where b0 is the estimate of the intercept, b1 is the estimate ...
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50 views

Confidence intervals for predicted probabilities in mixed-effect regression?

I'm working with mixed-effect logistic regression models using a single random variable (using glmer), and I am struggling to find a way to produce predicted probabilities and the respective 95% CI's. ...
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27 views

R: fitting a multilevel model with a binary DV

As the title implies, I am trying to fit a multilevel model with a binary DV. I only have limited experience with multilevel modeling, and I'm also relatively new to R. To make this question general, ...
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14 views

constpar in lme in R

Is there a function in the lme4 library (like constpar in mixed logit package) that allows me to set a parameter result to 0? For example, if i have the following linear mixed effects model: trips ~ ...
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87 views

glmer (lme4 package) with poisson family gives strange error: Error in if (any(y < 0)) stop(“negative values not allowed for the 'Poisson' family”) [closed]

I am trying to make a glmer model using the lme4 package (version 1.1-6) in R. It normally works without a hitch, but in one analysis I keep getting this error: Error in if (any(y < 0)) ...
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1answer
35 views

why step() returns weird results from backward elimination for full model using lmerTest

I am confused that why the results from processing step(model) in lmerTest are abnormal. m0 <- lmer(seed ~ connection*age + (1|unit), data = test) step(m0) note: Both "connection" and "age" ...
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1answer
66 views

Using lme4 for random effect [closed]

I have 3 random variables, x, y z ( all random effect) x is nested in y, but y is crossed in z I use the following function in lme4, but it does not work. <- lmer(A ~ 1 + (1 | x/y) + (1 | y*z) ...
3
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1answer
31 views

Extract random formula from nlme objects

I'm trying to extract the random structure from models constructed using lme, but I can't seem to get anything other than the fixed formula. E.g., library(nlme) fm1 <- lme(distance ~ age, ...
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1answer
266 views

Error messages when running glmer in R

I am attempting to run two similar generalized linear mixed models in R. Both models have the same input variables for predictors, covariates and random factors, however, response variables differ. ...
2
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1answer
18 views

Setting rhoend parameter with lme4

I am running a lmer model, with verbose = 2L, as in the following simple example: library(lme4) myData <- data.frame(Y = rnorm(100), Group = sample(LETTERS[1:2], 100, replace ...
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13 views

Determining the previous version of r that produced an older R data file

So I had run some mixed models on an older version, an unknown version of R. These models had converged, however, I recently updated R to 3.1.1, and now these models don't converge. I would like ...
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1answer
144 views

Want to convert SAS code using proc nlmixed to R code using nlme

The question is similar to the one in the following post: " troubles converting proc nlmixed (SAS) to nlme (R) "
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1answer
100 views

Calculating CIs of fixed effects using confint in R

I would like to perform bootstrapping to obtain 95% Cis of my fixed effects in a binomial GLMM: m <- glmer(cbind(df$Valid.detections, df$Missed.detections) ~ distance + Habitat + ...
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1answer
55 views

Interval around variance components

I am interested in (confidence) intervals or standard errors or some thing similar (sampling based?) around the estimates of variance components for the random effects in lme4::lmer models. I am sure ...
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36 views

How to plot the group effect of a binary variable (generalized linear mixed models)?

I'm using lme4 in R to fit the mixed model as follow: glmer(V1 ~ V2 + (1|group), family = binomial("logit"), data) What is the best plot to represent the group effect for binary responses (V1 in ...
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0answers
100 views

Having issues using the lme4 predict function on my mixed models

I’m having a bit of a struggle trying to use the lme4 predict function on my mixed models. When making predications I want to be able to set some of my explanatory variables to a specified level but ...
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101 views

Plotting partial effects with confidence intervals for lmer models

I would like to plot the partial effects of the terms in my model. I used the effects package which is supposed to work on lmer models, however I get an error related to the class of the model ...
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1answer
113 views

Random slope for time in subject not working in lme4

I can not insert a random slope in this model with lme4(1.1-7): > difJS<-lmer(JS~Tempo+(Tempo|id),dat,na.action=na.omit) Error: number of observations (=274) <= number of random effects ...
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2answers
75 views

How to use substitute to loop lme functions from nlme package?

I am trying to use lme function from nlme package inside a lapply loop. This works for lmer function from lme4 package, but produces an error message for lme. How can I loop lme functions similarly to ...
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111 views

How to compute standard errors for predicted data

I am trying to generate standard errors for predicted values. I use the below code to generate the predicted values but it fails to also give the standard errors. ord6 <- veg$ord1-2 laimod.group ...
3
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1answer
201 views

glmer with user-defined link function giving error: (maxstephalfit) PIRLS step-halvings failed to reduce deviance

While attempting to leverage a user-defined link function with a random-effect glmer, I've run into an error that I don't know how to troubleshoot: Error: (maxstephalfit) PIRLS step-halvings failed ...
3
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1answer
364 views

Generalised linear mixed model error (binary response)

I am running a generalised linear mixed model in R for a binary response variable and I am getting an error message. My code is: library('lme4') m1<-glmer(data=mydata, ...
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0answers
74 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
121 views

ordered vs. non-ordered explanatory factors lmer

I've fitted a model where: Y ~ A + A^2 + B + mixed.effect(C) Y is continuous A is continuous B actually refers to a DAY and currently looks like this: Levels: 1 < 2 < 3 < 4 < 5 < 6 ...
3
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1answer
97 views

Different versions of R, lme4 and OS X give different fixed-effects significance results in glmer

I am running a logit mixed-effects model using glmer() in package lme4. The experiment used a within-subjects within-items design with Subjects and Items as crossed random effects. My problem: ...
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1answer
152 views

Design matrix for MLM from library(lme4) with fixed and random effects

Context of application I have a model with random slopes and intercepts. There are numerous levels of the random effects. The new data (to be predicted) may or may not have all of these levels. To ...
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1answer
45 views

Using ggtittle inside a loop to name multiple plots

So I am plotting a series of lmer models using ggplot2 inside a loop, however I am having trouble working out how to specify the tittles of each plot inside the loop. Example data dput(data) ...
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1answer
45 views

Plotting objects from a list

I am currently trying to plot some lemr models I have generated within a loop, however I have I am running into a issue where my response variables are not been found. A modified version of the ...
2
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1answer
326 views

error message when performing Gamma glmer in R- PIRLS step-halvings failed to reduce deviance in pwrssUpdate

I am trying to perform a glmer in R using the Gamma error family. I get the error message: "Error: (maxstephalfit) PIRLS step-halvings failed to reduce deviance in pwrssUpdate" my response variable ...
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491 views

After trying various optimzers, model simplification running more iterations, when fitting GLMMs, R still produces warning messages

I am trying to fit GLMM's to my data using the glmer function available in R's lme4 package. The data is available at: https://onedrive.live.com/redir?resid=1B727FC7180E87DF%21118 I keep getting ...
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1answer
99 views

Error runnning parametric bootstrap (PBmodcomp) on lmer objects

I am trying perform a model comparision of two lmer models using the function PBmodcomp from the pbkrtest package. However I get the following error. Error in `[<-.data.frame`(`*tmp*`, , rcol, ...
2
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1answer
174 views

Extracting standard deviation of random effects components using glmer

I am using glmer and I wish to extract the standard deviation of the variance components of the random effects (intercept and slope). I have tried using: VarCorr(model) which returns the two ...
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1answer
191 views

Getting standard errors for lme4 object with texreg

I've been using the fantastic package texreg to produce high-quality HTML tables from lme4 models. Unfortunately, by default, texreg creates confidence intervals, rather than standard errors, under ...
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0answers
256 views

warning messages usign glmer function from lme4 package R

I am trying to fit a logistic random intercept model using glmer function from package lme4. Unfortunately I am getting the following warning messages and clearly wrong results (for the coefficients). ...
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1answer
55 views

model specification with glmer

I am attempting to set up a GLMM, but am having problems expressing the hierarchical data structure in R with glmer. My data has the following structure: y (dependent variable); visit (nested ...
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107 views

Excluding variable interactions from candidate sets of glmer models using glmulti

I am running a set of models using glmulti with an lme4 wrapper. In the full dataset there are a large number of variables (12+), so I want to exclude nonsensical interactions (and will ultimately ...