MCMC-distributions {bayesplot}R Documentation

Histograms and kernel density plots of MCMC draws

Description

Various types of histograms and kernel density plots of MCMC draws. See the Plot Descriptions section, below, for details.

Usage

mcmc_hist(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  facet_args = list(),
  binwidth = NULL,
  bins = NULL,
  breaks = NULL,
  freq = TRUE,
  alpha = 1
)

mcmc_dens(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  facet_args = list(),
  trim = FALSE,
  bw = NULL,
  adjust = NULL,
  kernel = NULL,
  n_dens = NULL,
  alpha = 1
)

mcmc_hist_by_chain(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  facet_args = list(),
  binwidth = NULL,
  bins = NULL,
  freq = TRUE,
  alpha = 1
)

mcmc_dens_overlay(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  facet_args = list(),
  color_chains = TRUE,
  trim = FALSE,
  bw = NULL,
  adjust = NULL,
  kernel = NULL,
  n_dens = NULL
)

mcmc_dens_chains(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  color_chains = TRUE,
  bw = NULL,
  adjust = NULL,
  kernel = NULL,
  n_dens = NULL
)

mcmc_dens_chains_data(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  bw = NULL,
  adjust = NULL,
  kernel = NULL,
  n_dens = NULL
)

mcmc_violin(
  x,
  pars = character(),
  regex_pars = character(),
  transformations = list(),
  ...,
  facet_args = list(),
  probs = c(0.1, 0.5, 0.9)
)

Arguments

x

An object containing MCMC draws:

  • A 3-D array, matrix, list of matrices, or data frame. The MCMC-overview page provides details on how to specify each these.

  • A draws object from the posterior package (e.g., draws_array, draws_rvars, etc.).

  • An object with an as.array() method that returns the same kind of 3-D array described on the MCMC-overview page.

pars

An optional character vector of parameter names. If neither pars nor regex_pars is specified then the default is to use all parameters. As of version ⁠1.7.0⁠, bayesplot also supports 'tidy' parameter selection by specifying pars = vars(...), where ... is specified the same way as in dplyr::select(...) and similar functions. Examples of using pars in this way can be found on the Tidy parameter selection page.

regex_pars

An optional regular expression to use for parameter selection. Can be specified instead of pars or in addition to pars. When using pars for tidy parameter selection, the regex_pars argument is ignored since select helpers perform a similar function.

transformations

Optionally, transformations to apply to parameters before plotting. If transformations is a function or a single string naming a function then that function will be used to transform all parameters. To apply transformations to particular parameters, the transformations argument can be a named list with length equal to the number of parameters to be transformed. Currently only univariate transformations of scalar parameters can be specified (multivariate transformations will be implemented in a future release). If transformations is a list, the name of each list element should be a parameter name and the content of each list element should be a function (or any item to match as a function via match.fun(), e.g. a string naming a function). If a function is specified by its name as a string (e.g. "log"), then it can be used to construct a new parameter label for the appropriate parameter (e.g. "log(sigma)"). If a function itself is specified (e.g. log or function(x) log(x)) then "t" is used in the new parameter label to indicate that the parameter is transformed (e.g. "t(sigma)").

Note: due to partial argument matching transformations can be abbreviated for convenience in interactive use (e.g., transform).

...

Currently ignored.

facet_args

A named list of arguments (other than facets) passed to ggplot2::facet_wrap() or ggplot2::facet_grid() to control faceting. Note: if scales is not included in facet_args then bayesplot may use scales="free" as the default (depending on the plot) instead of the ggplot2 default of scales="fixed".

binwidth

Passed to ggplot2::geom_histogram() to override the default binwidth.

bins

Passed to ggplot2::geom_histogram() to override the default binwidth.

breaks

Passed to ggplot2::geom_histogram() as an alternative to binwidth.

freq

For histograms, freq=TRUE (the default) puts count on the y-axis. Setting freq=FALSE puts density on the y-axis. (For many plots the y-axis text is off by default. To view the count or density labels on the y-axis see the yaxis_text() convenience function.)

alpha

Passed to the geom to control the transparency.

trim

A logical scalar passed to ggplot2::geom_density().

bw, adjust, kernel, n_dens

Optional arguments passed to stats::density() to override default kernel density estimation parameters. n_dens defaults to 1024.

color_chains

Option for whether to separately color chains.

probs

A numeric vector passed to ggplot2::geom_violin()'s draw_quantiles argument to specify at which quantiles to draw horizontal lines. Set to NULL to remove the lines.

Value

A ggplot object that can be further customized using the ggplot2 package.

Plot Descriptions

mcmc_hist()

Histograms of posterior draws with all chains merged.

mcmc_dens()

Kernel density plots of posterior draws with all chains merged.

mcmc_hist_by_chain()

Histograms of posterior draws with chains separated via faceting.

mcmc_dens_overlay()

Kernel density plots of posterior draws with chains separated but overlaid on a single plot.

mcmc_violin()

The density estimate of each chain is plotted as a violin with horizontal lines at notable quantiles.

mcmc_dens_chains()

Ridgeline kernel density plots of posterior draws with chains separated but overlaid on a single plot. In mcmc_dens_overlay() parameters appear in separate facets; in mcmc_dens_chains() they appear in the same panel and can overlap vertically.

See Also

Other MCMC: MCMC-combos, MCMC-diagnostics, MCMC-intervals, MCMC-nuts, MCMC-overview, MCMC-parcoord, MCMC-recover, MCMC-scatterplots, MCMC-traces

Examples

set.seed(9262017)
# some parameter draws to use for demonstration
x <- example_mcmc_draws()
dim(x)
dimnames(x)

##################
### Histograms ###
##################

# histograms of all parameters
color_scheme_set("brightblue")
mcmc_hist(x)

# histograms of some parameters
color_scheme_set("pink")
mcmc_hist(x, pars = c("alpha", "beta[2]"))

mcmc_hist(x, pars = "sigma", regex_pars = "beta")

# example of using 'transformations' argument to plot log(sigma),
# and parsing facet labels (e.g. to get greek letters for parameters)
mcmc_hist(x, transformations = list(sigma = "log"),
          facet_args = list(labeller = ggplot2::label_parsed)) +
          facet_text(size = 15)

# instead of list(sigma = "log"), you could specify the transformation as
# list(sigma = log) or list(sigma = function(x) log(x)), but then the
# label for the transformed sigma is 't(sigma)' instead of 'log(sigma)'
mcmc_hist(x, transformations = list(sigma = log))

# separate histograms by chain
color_scheme_set("pink")
mcmc_hist_by_chain(x, regex_pars = "beta")


#################
### Densities ###
#################

mcmc_dens(x, pars = c("sigma", "beta[2]"),
          facet_args = list(nrow = 2))

# separate and overlay chains
color_scheme_set("mix-teal-pink")
mcmc_dens_overlay(x, pars = c("sigma", "beta[2]"),
                  facet_args = list(nrow = 2)) +
                  facet_text(size = 14)
x2 <- example_mcmc_draws(params = 6)
mcmc_dens_chains(x2, pars = c("beta[1]", "beta[2]", "beta[3]"))

# separate chains as violin plots
color_scheme_set("green")
mcmc_violin(x) + panel_bg(color = "gray20", size = 2, fill = "gray30")


[Package bayesplot version 1.11.1 Index]