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May 23, 2024 - R
mixed-effects
Here are 31 public repositories matching this topic...
Bayesian network analysis in R
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May 23, 2024 - R
Combining tree-boosting with Gaussian process and mixed effects models
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May 22, 2024 - C++
A Julia package for fitting (statistical) mixed-effects models
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May 15, 2024 - Julia
CRAN Task View: Mixed, Multilevel, and Hierarchical Models in R
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May 8, 2024 - R
A meta-analysis package for R
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May 6, 2024 - R
RCall support for MixedModels.jl and lme4
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May 6, 2024 - Julia
Julia package for fitting mixed-effects models with flexible random/repeated covariance structure.
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Apr 9, 2024 - Julia
Python package customizing nested cross validation for tabular data.
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Mar 18, 2024 - Python
Multivariate Time series interpolation using hierarchical mixed effects models.
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Dec 28, 2023 - HTML
PSM - Population Stochastic Modelling
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Dec 10, 2023 - R
Tools for multiple imputation in multilevel modeling
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Dec 7, 2023 - R
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Nov 11, 2023 - Shell
Featured Nonlinear Mixed effects Models
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Oct 21, 2023 - Python
R package for Bayesian measurement invariance assessment using mixed effects and shrinkage.
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Sep 10, 2023 - R
R Package for fitting latent multivariate mixed effects location scale models.
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Sep 9, 2023 - R
Hierarchical modeling in TensorFlow layers
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Feb 16, 2023 - Python
R package providing utilities for INLA
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Nov 23, 2022 - R
Generic curve fitting package with nonlinear mixed effects model
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Jun 22, 2022 - Python
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