--- title: "Guide to RoBMA Vignettes" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{ Guide to RoBMA Vignettes} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- The `RoBMA` package provides a comprehensive set of vignettes to help users navigate different aspects of Robust Bayesian Meta-Analysis. This guide outlines the available vignettes and their specific focus to help you find the relevant information for your analysis. ## Introductory Vignettes ### [Tutorial: Adjusting for Publication Bias in JASP and R](Tutorial.html) This is the main introduction to the RoBMA framework. It covers the basics of adjusting for publication bias using selection models, PET-PEESE, and Robust Bayesian Meta-Analysis. It is the recommended starting point for new users. ### [Reproducing Bayesian Model-Averaged Meta-Analysis](ReproducingBMA.html) This vignette demonstrates how to perform a classic Bayesian model-averaged meta-analysis. It focuses on reproducing standard BMA results and understanding the core components of the method. ## Advanced Modeling Features ### [Robust Bayesian Model-Averaged Meta-Regression](MetaRegression.html) Learn how to incorporate moderators into your meta-analysis using `RoBMA.reg()`. This vignette explains how to fit meta-regression models to account for heterogeneity explained by study-level covariates. ### [Multilevel Robust Bayesian Meta-Analysis](MultilevelRoBMA.html) This vignette demonstrates how to perform multilevel meta-analysis to account for dependent effect sizes (e.g., multiple estimates from the same study). It uses the spike-and-slab algorithm (`algorithm = "ss"`) to efficiently estimate models with within-study and between-study heterogeneity while adjusting for publication bias. ### [Multilevel Robust Bayesian Model-Averaged Meta-Regression](MultilevelRoBMARegression.html) This vignette demonstrates how to perform multilevel meta-regression. In addition, it illustrates how to rescale default prior distributions to work with non-standardized effect sizes. ### [Z-Curve Publication Bias Diagnostics](ZCurveDiagnostics.html) This vignette details the use of meta-analytic z-curves for diagnosing publication bias. It explains how to interpret z-curve plots and statistics provided by the package. ## Specialized Applications ### [Informed Bayesian Model-Averaged Meta-Analysis in Medicine](MedicineBMA.html) This vignette focuses on applying RoBMA in medical contexts. It discusses the use of informed priors tailored for medical research questions and continuous outcomes. ### [Informed Bayesian Model-Averaged Meta-Analysis with Binary Outcomes](MedicineBiBMA.html) Similar to the Medicine BMA vignette, but specifically for binary outcomes. It covers the `BiBMA` models (Binomial-Normal) and appropriate prior settings for medical meta-analysis with binary data. ## Customization and Performance ### [Fitting Custom Meta-Analytic Ensembles](CustomEnsembles.html) For advanced users who need to go beyond the default model ensembles. This vignette demonstrates how to customize the ensemble of models, including specifying custom priors and model combinations. ### [Fast Robust Bayesian Meta-Analysis via Spike and Slab Algorithm](FastRoBMA.html) For computationally intensive problems or quick approximations, the "spike-and-slab" algorithm (`algorithm = "ss"`) can be used. This vignette explains how to use this faster alternative to the default bridge sampling approach. ### [Hierarchical Bayesian Model-Averaged Meta-Analysis](HierarchicalBMA.html) This vignette introduces multilevel models. It shows how to handle dependencies in the data (e.g., multiple effect sizes from the same study) using the `study_ids` argument to specify a hierarchical structure. Note that this vignette relies on multivariate parameterization that is relevant only for the bridge sampling algorithm. However, it is still helpful for describing the parameterization.