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Michael Harris 7/29/24 Michael Harris 7/29/24

The “pool” Function in R

Combine results from multiple imputed datasets.

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Michael Harris 7/29/24 Michael Harris 7/29/24

The “md.pattern” Function in R

Identify the pattern of missing data.

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Michael Harris 7/29/24 Michael Harris 7/29/24

The “mice” Function in R

Perform multiple imputation to handle missing data.

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Michael Harris 7/26/24 Michael Harris 7/26/24

The “kfold” Function in R

Perform k-fold cross-validation on Bayesian models.

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Michael Harris 7/26/24 Michael Harris 7/26/24

The “stan_betareg” Function in R

Fits a Bayesian beta regression model using Stan.

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Michael Harris 7/26/24 Michael Harris 7/26/24

The “stan_polr” Function in R

Fits a Bayesian ordered logistic or probit regression model using Stan.

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Michael Harris 4/26/24 Michael Harris 4/26/24

The “stan_glmer” Function in R

Fits a Bayesian generalized linear mixed-effects model using Stan.

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Michael Harris 4/26/24 Michael Harris 4/26/24

The “stan_lmer” Function in R

Fits a Bayesian linear mixed-effects model using Stan.

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Michael Harris 4/25/24 Michael Harris 4/25/24

The “predictive_interval” Function in R

Computes posterior predictive intervals for new observations based on a fitted model.

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Michael Harris 4/25/24 Michael Harris 4/25/24

The “posterior_predict” Function in R

Generates posterior predictive samples from a fitted model.

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Michael Harris 4/25/24 Michael Harris 4/25/24

The “stan_glm” Function in R

Fits a generalized linear model (GLM) using Stan.

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Michael Harris 4/25/24 Michael Harris 4/25/24

The “stan_rhat” Function in R

Computes the potential scale reduction factor (R-hat) for Stan model parameters.

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Michael Harris 4/25/24 Michael Harris 4/25/24

The “stan_hist” Function in R

Histogram plotting for Stan model diagnostics.

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “traceplot” Function in R

Visualizes traceplots of MCMC samples from a Stan model

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “optimizing” Function in R

Performs maximum a posteriori (MAP) estimation for a Stan model

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “vb” Function in R

Performs variational Bayesian inference on a Stan model

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “sampling” Function in R

Draws samples from a Stan model

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “stan_model” Function in R

Compiles Stan model code

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “stan” Function in R

Interface to Stan for Bayesian inference

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Michael Harris 4/24/24 Michael Harris 4/24/24

The “plan” Function in R

Configures a future backend plan for parallel processing.

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