Questions tagged [mixed-models]

Programming problems related to the analysis of statistical models with random-effects terms, also variously: repeated measures, hierarchical, multilevel models

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Is it possible to retrieve sum of square, df, F value and P value after using linear mixed model? [closed]

I have complete randomized block design with 3 treatment levels (control, moderate, heavy thinning in forest) and 3 replicates for each treatments. I collected rainfall under the canopy called as ...
0 votes
0 answers
15 views

GMMAT model fit and AIC

I have fitted a model using the GMMAT package in R. This model includes several variables and a Genetic Relatedness Matrix to control for the relatedness of the sample. See this example: require(GMMAT)...
0 votes
0 answers
10 views

Handling Nested One-Level Random Effects in Linear Mixed Models in R [migrated]

I am constructing a statistical model to examine the relationship between thrust force and kinematic data collected from tags attached to animals. The data is structured with 'slip' as a random effect ...
20 votes
2 answers
9k views

Mixed effects logistic regression

I'm attempting to implement mixed effects logistic regression in python. As a point of comparison, I'm using the glmer function from the lme4 package in R. I've found that the statsmodels module has ...
2 votes
1 answer
31 views

Confidence intervals on predictions using predictor variables for a non-linear mixed effects model (nlme)

I am trying to produce 95% confidence intervals for a non-linear mixed effects model using the bootstrap method described by @BenBolker here. I may be misunderstanding some of the functions used. My ...
2 votes
2 answers
997 views

Confidence Intervals for odds ratio in CLMM/CLMM2 (R)

I am trying to find the best way to estimate the confidence intervals for odds ratios as a part of CLMM output. I am working in R, and my model looks something like this: model <- clmm(Rating ~ ...
0 votes
0 answers
12 views

Generalized mixed effect logistic regression model and strange p values (maybe separation of data)? [migrated]

I'm running a mixed effect logistic regression model in RStudio with two random intercepts ad three different predictors as fixed effects. All the indipendent variables are categorical. However, ...
-1 votes
0 answers
28 views

How to specify different random effects and random slopes in xtmlogit in Stata? [closed]

I use xtmlogit to create a multinomial logistic regression model with mixed effects. Here is the structure of my data: The dependent variable is function (coded as 1, 2a, 2b, 3a, and 3b). The ...
42 votes
7 answers
89k 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 ...
1 vote
0 answers
72 views

Can `mvabund::traitglm()` handle random effects?

I am using the R package mvabund to examine how environmental conditions and species traits are correlated with ecological community structure. The traitglm() function is a nice tool for this. However,...
0 votes
0 answers
9 views

Choosing different random effects structures for mixed-effects models with multiple response variables in R [migrated]

I'm working on a project where I have two response variables of animal behaviour: one is count data (Poisson distribution), and the other is proportion data (Binomial distribution). I constructed GLMM ...
0 votes
0 answers
17 views

I am trying to run a Random Effects Regression Model on my datasets but i am getting this error messages as seen below

I am getting this error messages:ValueError: Cannot predict random effects from singular covariance structure. I have a very long line of code but i will copy and paste in here the part that i think ...
0 votes
0 answers
21 views

Statistic R, lme function, nlme Package, agricultural field trial

I have a problem with the statistical evaluation of an agricultural field trial. The experiment took place at three locations, as a randomized complete block design (four blocks) and with 17 variables....
6 votes
3 answers
2k views

Big data: generalized linear mixed-effects models

I'm looking for suggestions for a strategy of fitting generalized linear mixed-effects models for a relative large data-set. Consider I have data on 8 milllion US basketball passes on about 300 teams ...
0 votes
0 answers
37 views

How to sensibly calculate effect sizes for linear mixed models?

I ran a linear mixed model analysis on my data and specified a rather "simple" LMM. The data come from a within-subject design were participants rated the same stimulus in three different ...
0 votes
1 answer
36 views

Plot mixed-effects model with binary predictor and binary response variable

I'm looking for a pleasing and informative way to visualize a mixed-model where the response variable and the predictor variable are both binary. m_0 <- glmer(Preselected_0 ~ N_G_altnt_Q_YN + (...
0 votes
0 answers
10 views

How to determine when a fixed effect should be included in random effects structure in mixed effects models?

This is a basic question about how to determine when some fixed effect in your model should also be included as a random intercept. Below are 2 simple basic examples. Let's say we're testing the ...
1 vote
2 answers
20 views

Transposing repeated measures data - can't create time variable correctly

I have data with ID, repeated cognitive measure (cog1-cog6), and medication (SSRI) at start. I will eventually run the mixed procedure to determine the association between cognitive score at the time ...
0 votes
0 answers
36 views

Linear mixed model ggplot fixed and random effect

In our study, we aim to investigate the evolution of blood pressure (variable DIASTO) over time. Time is measured based on the treatment modification date (variable DELAI_SWITCH). The objective is to ...
8 votes
2 answers
6k views

How to specify correlated crossed random effects in nlme?

I want to specify different random effects in a model using nlme::lme (data at the bottom). The random effects are: 1) intercept and position varies over subject; 2) intercept varies over comparison. ...
3 votes
1 answer
3k views

Fitting a ordinal logistic mixed effect model

How do I fit a ordinal (3 levels), logistic mixed effect model, in R? I guess it would be like a glmer except with three outcome levels. data structure patientid Viral_load Adherence ...
0 votes
0 answers
24 views

Why does a linear mixed effect model estimate continuous variables using a t-test?

I built a linear mixed effects model to estimate the effects that different variables have on biomass. However, it tells me that it estimates them using a t-test, even if they are continuous. ...
0 votes
0 answers
23 views

multilevel modeling with two time points - centering?

I am currently working with a dataset that uses two waves in a longitudinal study (wave2 & wave 3). I am trying to look at whether optimism (optim) and the number of life stressors (life_s) ...
1 vote
0 answers
66 views

Too many parameters in model

I want to create a 'mega' linear mixed effects model with nested fixed effects (using the lme4 package) where the interaction effect of type and language is modeled within each level of brain region ...
1 vote
1 answer
33 views

Average Partial Effects from model.avg() GAMMs

I used the MuMIn::model.avg() function to generate a set of top models which represented 95% of the weight of all models considered. Using this model average object, I also generated predictions from ...
1 vote
0 answers
33 views

Get the random effects values from a `mblogit` model

I want to fit a multinomial response mixed effects model. I'm using the mblogit function from the mclogit package. From the help(mblogit) example I can fit a fixed effects model (which is structurally ...
10 votes
1 answer
6k views

fitting a linear mixed model to a very large data set

I want to run a mixed model (using lme4::lmer) on 60M observations of the following format; all predictor/dependent variables are categorical (factors) apart from the continuous dependent variable tc; ...
0 votes
0 answers
306 views

Still Same Error : Error in initializePtr() : function 'cholmod_factor_ldetA' not provided by package 'Matrix'

Spal_model <- lmer(Count ~ Vasca * Sex + (1|ID), REML = T, data = Spal) Error in initializePtr() : function 'cholmod_factor_ldetA' not provided by package 'Matrix' detach("package:Matrix"...
0 votes
0 answers
58 views

formula for linear mixed effects model using statsmodels.formula.api

I am trying to fit a linear mixed effects model to test whether participants performing a reaction times test become faster as the test progresses. I am using mixedlm() from statsmodels.formula.api. I ...
0 votes
0 answers
30 views

Get variance components for each level of a random factor in lme4

Using the sleepstudy dataset as an example, if I run the following code I can obtain the variance component for the random factor in this model, 'Subject'. data("sleepstudy") model<-lmer(...
1 vote
1 answer
60 views

R is't using my character random effects in a binomial glm

I get this error when I try to run my model using glm. Why won't R use my nested character nested effects? model <- glm(Propotion ~ Parasites_box * Parasites_nest + Day_of_year + Site + (1|Subsite/...
1 vote
1 answer
34 views

Finding an equivalent for pdIdent (nlme-Package) for the lmer-function (lme4-Package)

I am wondering whether it is possible to "translate" a simple mixed-models analysis using the function lme (package nlme) with a pdIdent-line to an equivalent analysis for the lmer (package ...
0 votes
0 answers
23 views

Transposing Health and Retirement Study variables into long format on SAS

I have the following variables (all numberic) that I want to transpose into long format based on the ID variable HHIDPN My ultimate goal is a linear mixed model analysis, but can't quite get this in ...
0 votes
0 answers
16 views

Evaluate likelihood function for specific parameters in nlme

Suppose I have a fitted gnls model (I am also interested in solutions that could apply to nlme model objects). Is there a way to evaluate the likelihood at a specified set of parameters without having ...
2 votes
1 answer
70 views

Decomposing residuals into between and within group in Pymer4

i have a question about mixed-effect in Pymer4 (same of lme4 but in python). My model is fitted under machine-learning to get the predicted values (Observed_values = predicted_values + total_residuals)...
0 votes
0 answers
32 views

Trouble with "variable lengths differ" error when comparing mixed models in R. Is there any way to compare two models when values are missing?

I am currently trying to compare different linear mixed models on R and encountered this error: Error in model.frame.default(data = datasum, drop.unused.levels = TRUE, : variable lengths differ (...
0 votes
0 answers
14 views

Trouble getting summary and plots of lmer object into word document within a for loop

I am trying to create a for loop to test mixed effects models and I'm having trouble generating a word document with the summ() results for the model and a pdf document. I got help from someone who ...
0 votes
0 answers
15 views

How to account for variable group sizes in linear model?

Example: My linear model shows that plant richness increases with latitude. However, the number of individuals surveyed in each sampling site also increases with latitude. Can I include the number of ...
0 votes
0 answers
119 views

Repetitions on the same combination of factors in mixed ANOVA and its power analysis

I am trying to decide the appropriate model and perform power analysis. Suppose a data contains 2 groups (A,B) and 28 participants from each group. All of those participants are measured 15 times on ...
0 votes
1 answer
193 views

How to perform piecewise linear mixed regression with multiple breakpoints in R?

I am fitting a piecewise linear mixed regression in R. I know that I can use lme from the nlme package followed by segmented to perform piecewise linear mixed regression. However, upon reading the ...
0 votes
0 answers
74 views

How to interpret and visualise output from lmer model r?

I have data from 310 individual plants, from various habitats (5 type), species (10) occuring in different habitats, measured photosynthesis performance (PhiPS2) in different months (sampling_no_). I ...
2 votes
1 answer
102 views

Predicting survival and 95% confidence interval from a mixed effects Cox model (coxme)

I fitted a mixed effects cox model using the package coxme. The model includes a two-level variable as fixed effect and a random intercept. I want to predict survival probability and 95% confidence ...
10 votes
1 answer
1k views

Using `ordinal::clmm` model to make predictions on new data

I have some repeated measures, ordinal response data: dat <- data.frame( id = factor(sample(letters[1:5], 50, replace = T)), response = factor(sample(1:7, 50, replace = T), ordered = T), x1 =...
3 votes
1 answer
271 views

Nonparametric way to perform ANOVA of linear mixed model and power calcualtion

I have a small data where there are 3 groups (A,B,C) and 5 participants from each group. All of those participants are measured 6 times on each of 7 different exams, so each participant get 6*7=42 ...
0 votes
0 answers
34 views

What is the interpretation of the REML criterion when running lmer?

I wanted to ask how to interpret the displayed REML criterion at convergence when running a HLM model using lmer function in lme4 package? Is it better when it is smaller or larger? Is it comparable ...
0 votes
1 answer
321 views

Converting a mixed model with repeated and random effects and different covariance structures from SAS to R

I have a model, created in SAS by a colleague, with a repeated effect that has an ARH1 (autoregressive heterogeneous variances) covariance structure and a random effect (with a variance components ...
0 votes
1 answer
111 views

R package glmmTMB - model family nbinom2 - Error in MakeADFunObject

I could use some quick assistance with fitting a negative binomial model in R using the "glmmTMB" package with the family set to nbinom2. I opted for glmmTMB because it allows specifying ...
0 votes
1 answer
157 views

The mmer function of sommer using unstructured variance: singularity arriving quickly and negative variances after

So I am analyzing a multi-site trial of rice breeding lines at 4 environments. The simplified data is here: https://drive.google.com/file/d/1jilVXX8JMkZCDVtIRmrwzB55kgR2GtYB/view?usp=sharing And I am ...
0 votes
0 answers
38 views

Problem with a random effect with 2 levels in fitExtractVarPartModel() from the the variancePartition package?

I'm running a variance decomposition to understand how different predictors contribute to explaining the variance in a variable of interest. I'm using fitExtractVarPartModel from the variancePartition ...
1 vote
1 answer
251 views

Plotting adjusted survival curve for a mixed-effects cox regression and/or time interaction?

I have created a mixed effects cox regression using coxme. Q1) I would like to plot the coefficients of the fixed effects in an adjusted survival curve. However, it seems this functionality in ...

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