% Generated by roxygen2: do not edit by hand % Please edit documentation in R/map_estimate.R \name{map_estimate} \alias{map_estimate} \alias{map_estimate.numeric} \alias{map_estimate.stanreg} \alias{map_estimate.brmsfit} \alias{map_estimate.data.frame} \alias{map_estimate.get_predicted} \title{Maximum A Posteriori probability estimate (MAP)} \usage{ map_estimate(x, ...) \method{map_estimate}{numeric}(x, precision = 2^10, method = "kernel", ...) \method{map_estimate}{stanreg}( x, precision = 2^10, method = "kernel", effects = c("fixed", "random", "all"), component = c("location", "all", "conditional", "smooth_terms", "sigma", "distributional", "auxiliary"), parameters = NULL, ... ) \method{map_estimate}{brmsfit}( x, precision = 2^10, method = "kernel", effects = c("fixed", "random", "all"), component = c("conditional", "zi", "zero_inflated", "all"), parameters = NULL, ... ) \method{map_estimate}{data.frame}(x, precision = 2^10, method = "kernel", ...) \method{map_estimate}{get_predicted}( x, precision = 2^10, method = "kernel", use_iterations = FALSE, verbose = TRUE, ... ) } \arguments{ \item{x}{Vector representing a posterior distribution, or a data frame of such vectors. Can also be a Bayesian model. \strong{bayestestR} supports a wide range of models (see, for example, \code{methods("hdi")}) and not all of those are documented in the 'Usage' section, because methods for other classes mostly resemble the arguments of the \code{.numeric} or \code{.data.frame}methods.} \item{...}{Currently not used.} \item{precision}{Number of points of density data. See the \code{n} parameter in \code{density}.} \item{method}{Density estimation method. Can be \code{"kernel"} (default), \code{"logspline"} or \code{"KernSmooth"}.} \item{effects}{Should results for fixed effects, random effects or both be returned? Only applies to mixed models. May be abbreviated.} \item{component}{Should results for all parameters, parameters for the conditional model or the zero-inflated part of the model be returned? May be abbreviated. Only applies to \pkg{brms}-models.} \item{parameters}{Regular expression pattern that describes the parameters that should be returned. Meta-parameters (like \code{lp__} or \code{prior_}) are filtered by default, so only parameters that typically appear in the \code{summary()} are returned. Use \code{parameters} to select specific parameters for the output.} \item{use_iterations}{Logical, if \code{TRUE} and \code{x} is a \code{get_predicted} object, (returned by \code{\link[insight:get_predicted]{insight::get_predicted()}}), the function is applied to the iterations instead of the predictions. This only applies to models that return iterations for predicted values (e.g., \code{brmsfit} models).} \item{verbose}{Toggle off warnings.} } \value{ A numeric value if \code{x} is a vector. If \code{x} is a model-object, returns a data frame with following columns: \itemize{ \item \code{Parameter}: The model parameter(s), if \code{x} is a model-object. If \code{x} is a vector, this column is missing. \item \code{MAP_Estimate}: The MAP estimate for the posterior or each model parameter. } } \description{ Find the \strong{Highest Maximum A Posteriori probability estimate (MAP)} of a posterior, i.e., the value associated with the highest probability density (the "peak" of the posterior distribution). In other words, it is an estimation of the \emph{mode} for continuous parameters. Note that this function relies on \code{\link[=estimate_density]{estimate_density()}}, which by default uses a different smoothing bandwidth (\code{"SJ"}) compared to the legacy default implemented the base R \code{\link[=density]{density()}} function (\code{"nrd0"}). } \examples{ \dontshow{if (require("rstanarm") && require("brms")) (if (getRversion() >= "3.4") withAutoprint else force)(\{ # examplesIf} \donttest{ library(bayestestR) posterior <- rnorm(10000) map_estimate(posterior) plot(density(posterior)) abline(v = as.numeric(map_estimate(posterior)), col = "red") model <- rstanarm::stan_glm(mpg ~ wt + cyl, data = mtcars) map_estimate(model) model <- brms::brm(mpg ~ wt + cyl, data = mtcars) map_estimate(model) } \dontshow{\}) # examplesIf} }