About 517,000 results
Open links in new tab
  1. Difference between generalized linear models ... - Cross Validated

    The following CV questions also discuss the relationship between GEE & GLiMMs: What is the difference between generalized estimating equations and GLMM; When to use generalized …

  2. What is the difference between generalized estimating equations …

    The following CV questions also discuss this material: Difference between generalized linear models & generalized linear mixed models in SPSS; When to use generalized estimating …

  3. Non-normality in linear mixed models/GLMM - Cross Validated

    A GLMM was considered but given that the outcome variable is dive depth there is no obvious distribution candidate for a GLMM. On thing to consider is whether the outcome is bounded.

  4. Diagnostics for generalized linear (mixed) models (specifically ...

    Fit the full GLMM. Insufficient computer memory o r too slow: reduce model complexity. If estimation succeeds on a subset of the data, try a more efficient estimation algorithm (e.g. …

  5. Should I use GLMM or GAM in my analysis? - Cross Validated

    Apr 13, 2022 · If you want to model individual bears as random effects then you have a mixed model, potentially a GLMM (generalized linear mixed model). A GAM (generalized additive …

  6. Understanding Interaction Term In GLMM - Cross Validated

    Mar 17, 2023 · Hoping to get some clarification on my understanding of interaction terms in a GLM model I have produced. I have written the following model interactionmodel <- lme …

  7. r - How to interpret GLMM results? - Cross Validated

    Jul 24, 2020 · How to interpret GLMM results? Ask Question Asked 5 years, 4 months ago Modified 5 years, 4 months ago

  8. Interpreting a generalised linear mixed model with binomial data

    Jan 14, 2020 · The interpretation is the same as for a generalised linear model, except that the estimates of the fixed effects are conditional on the random effects. Since this is a linear mixed …

  9. glmmTMB truncated models with zero inflation - Cross Validated

    Nov 28, 2023 · I am fitting a glmm model using the R library glmmTMB for predicting a count response variable with excess-zeros and overdispersion (nbinom2> Poisson). Additionally, I …

  10. glmm - GEE vs Marginal Models: Are they the same? How are they ...

    Mar 25, 2021 · The GEE is a marginal model. Unlike "plain" regression, such as OLS or GLMS for independent data, the GEE estimates the variance structure which accounts for correlation …