#GLMM

Fabrizio MusacchioFabMusacchio
2026-02-01

Due to a recent discussion with colleagues on whether and when to use (), I wrote a blog post comparing LMM to other approaches using simulated data. I thought, it may also be useful for others working with hierarchical data structures in and beyond.

🌍 fabriziomusacchio.com/blog/202

Line plot of simulated neural responses versus stimulus strength for three subjects, with residuals and group comparisons.Group specific slope comparison in an LMM friendly regime with many groups and few observations per group. ANCOVA interaction slope estimates scatter widely, while LMM BLUP slopes are pulled toward the population mean.
Dr Mircea Zloteanu β„οΈβ˜ƒοΈπŸŽ„mzloteanu
2025-10-31

#450 Fitting GAMs with brms

Thoughts: Assuming linearity of your continuous predictors is not needed when you can add wiggles!

fromthebottomoftheheap.net/201

Dr Mircea Zloteanu β„οΈβ˜ƒοΈπŸŽ„mzloteanu
2025-08-18

#401 Common issues, conundrums, and other things that might come up when implementing mixed models

Thoughts: GLMMs are cool, but come with their own quirks.

m-clark.github.io/mixed-models

Journal of Plant Ecologyjpecol
2025-07-03

γ€πŸ’‘High Cited 2020-2022 】
glmm.hp: an R package for computing individual effect of predictors in generalized linear mixed models

| | | | |

doi.org/10.1093/jpe/rtac096

Venn diagram representing the proportions of variance components in a mixed model.
Christos Argyropoulos MD, PhD, FASN πŸ‡ΊπŸ‡Έ 0kale/accchristosargyrop.bsky.social@bsky.brid.gy
2024-12-25

Extremely nice review of REML estimation for generalized linear mixed models. Covers a couple of important papers that I was not aware of (e.g. Schall 1991 and Stiratelli 1984) until today, but also the work of Simon Wood in #rstats mgcv #GAM #GLMM

Restricted maximum likelihood ...

Christos Argyropoulos MD PhDChristosArgyrop
2024-12-25

Extremely nice review of REML estimation for generalized linear mixed models.
Covers a couple of important papers that I was not aware of (e.g. Schall 1991 and Stiratelli 1984) until today, but also the work of Simon Wood in mgcv
buff.ly/405IaB0

Christos ArgyropoulosChristosArgyrop@mast.hpc.social
2024-12-25

Extremely nice review of REML estimation for generalized linear mixed models.
Covers a couple of historically important papers that I was not aware of (e.g. Schall 1991 and Stiratelli 1984) until today, but also the work of Simon Wood in #rstats mgcv #GAM #GLMM
buff.ly/405IaB0

Christos Argyropoulos MD, PhDChristosArgyrop@mstdn.science
2024-12-24

Extremely nice review of REML estimation for generalized linear mixed models.
Covers a couple of historically important papers that I was not aware of (e.g. Schall 1991 and Stiratelli 1984) until today, but also the work of Simon Wood in #rstats mgcv #GAM #GLMM
buff.ly/405IaB0

Dr Mircea Zloteanu β„οΈβ˜ƒοΈπŸŽ„mzloteanu
2024-10-17

#204 GLMMadaptive: Generalized Linear Mixed Models using Adaptive Gaussian Quadrature

Thoughts: No clue what this package is does, but seems useful. Maybe someone can explain some use cases.

drizopoulos.github.io/GLMMadap

2024-09-23

There is only 1 seat left for the #GLMM in R course in October: physalia-courses.org/courses-w

Dr Mircea Zloteanu β„οΈβ˜ƒοΈπŸŽ„mzloteanu
2023-05-16

🚨New preprint on detection analysis πŸ” We provide a tutorial on Mixed Effects Models for veracity data; no more aggregating & converting data to % 😀 (conflating acc w/ bias), just model the lie/truth answers directly! Bonus: they are SDT models 🧐 w/ @matti

[link below]
Bayesian Generalized Linear Mixed Effects Models for Deception Detection Analyses osf.io/fdh5b/

Physalia-coursesPhysaliaCourses@mas.to
2023-04-21

πŸ“’ Calling all data wizards! πŸ§™β€β™€οΈπŸ§™β€β™‚οΈThe second edition of our #GLMM in R course is a must-attend if you want to harness the power of mixed models for complex data analysis. Don't miss out!: physalia-courses.org/courses-w 🌟

#Rstats #DataScience

Physalia-coursesPhysaliaCourses@mas.to
2023-03-20

πŸ₯ Registration is now open for the 2nd edition of the #GLMM in R course with @florianhartig
& @_Max_Pichler in October

If interested, please check it out: physalia-courses.org/courses-w

#Rstats #DataScience #Statistics #GLMM

Client Info

Server: https://mastodon.social
Version: 2025.07
Repository: https://github.com/cyevgeniy/lmst