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Releases: stan-dev/bayesplot

bayesplot v1.6.0

02 Aug 18:09
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bayesplot v1.6.0 is now on CRAN.
See release notes below or at mc-stan.org/bayesplot/news.

Installation

After CRAN binaries are built (usually a few days) just use install.packages("bayesplot"). Before binaries are available the update can be installed from CRAN using

install.packages("bayesplot", type = "source", repos = "https://cran.rstudio.com/")

or from GitHub using

# note: setting build_vignettes=FALSE will be much faster and you can always access 
# the vignettes at mc-stan.org/bayesplot/articles/

devtools::install_github("stan-dev/bayesplot", ref = "v1.6.0", build_vignettes = TRUE) 

Release notes

(GitHub issue/PR numbers in parentheses)

  • Loading bayesplot no longer overrides the ggplot theme! Rather, it sets a theme
    specific for bayesplot. Some packages using bayesplot may still override the
    default ggplot theme (e.g., rstanarm does but only until next release),
    but simply loading bayesplot itself will not. There are new functions for controlling
    the ggplot theme for bayesplot that work like their ggplot2 counterparts but
    only affect plots made using bayesplot. Thanks to Malcolm Barrett. (#117, #149).

    • bayesplot_theme_set()
    • bayesplot_theme_get()
    • bayesplot_theme_update()
    • bayesplot_theme_replace()
  • The Visual MCMC Diagnostics vignette
    has been reorganized and has a lot of useful new content thanks to Martin Modrák. (#144, #153)

  • The LOO predictive checks
    now require loo version >= 2.0.0. (#139)

  • Histogram plots gain a breaks argument that can be used as an alternative to binwidth. (#148)

  • mcmc_pairs()
    now has an argument grid_args to provide a way of passing optional arguments to
    gridExtra::arrangeGrob(). This can be used to add a title to the plot, for example. (#143)

  • ppc_ecdf_overlay()
    gains an argument discrete, which is FALSE by default, but can be used to make the
    Geom more appropriate for discrete data. (#145)

  • PPC intervals plots
    and LOO predictive checks
    now draw both an outer and an inner probability interval, which can be
    controlled through the new argument prob_outer and the already existing
    prob. This is consistent with what is produced by mcmc_intervals().
    (#152, #154, @mcol)

bayesplot v1.5.0

30 Mar 18:07
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bayesplot v1.5.0 is now on CRAN.
See release notes below or at mc-stan.org/bayesplot/news.

Installation

After CRAN binaries are built (usually a few days) just use install.packages("bayesplot"). Before binaries are available the update can be installed from CRAN using

install.packages("bayesplot", type = "source", repos = "https://cran.rstudio.com/")

or from GitHub using

# note: setting build_vignettes=FALSE will be much faster and you can always access 
# the vignettes at mc-stan.org/bayesplot/articles/

devtools::install_github("stan-dev/bayesplot", ref = "v1.5.0", build_vignettes = TRUE) 

Release notes

(GitHub issue/PR numbers in parentheses)

  • New package documentation website: http://mc-stan.org/bayesplot/

  • Two new plots that visualize posterior density using ridgelines (ggridges pkg). These work well when parameters have similar values and similar densities, as in hierarchical models. (#104)

    • mcmc_dens_chains() draws the kernel density of each sampling chain.
    • mcmc_areas_ridges() draws the kernel density combined across chains.
    • Both functions have a corresponding _data() function to return the data plotted by
      each function.
  • mcmc_intervals() and mcmc_areas() have been rewritten. (#103)

    • They now use a discrete y-axis. Previously, they used a continuous
      scale with numeric breaks relabelled with parameter names; this design
      caused some unexpected behavior when customizing these plots.
    • mcmc_areas() now uses geoms from the ggridges package to draw density
      curves.
  • Added mcmc_intervals_data() and mcmc_areas_data() that return data
    plotted by mcmc_intervals() and mcmc_areas(). Similarly, ppc_data()
    returns data plotted ppc_hist() and other ppc plot. (Advances #97)

  • Added ppc_loo_pit_overlay() function for a better LOO PIT predictive check.
    (#123)

  • Started using vdiffr to add visual unit tests to the existing PPC unit tests. (#137)

bayesplot v1.4.0

12 Sep 15:58
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bayesplot v1.4.0 is now on CRAN.

Until CRAN binaries are built (usually a few days) you can install the update using

install.packages("bayesplot", type = "source", repos = "https://cran.rstudio.com/")

or by installing from GitHub using

devtools::install_github("stan-dev/bayesplot", ref = "v1.4.0", build_vignettes = TRUE)

Release notes

(GitHub issue/PR numbers in parentheses)

  • New plotting function mcmc_parcoord() for parallel coordinates plots of
    MCMC draws (optionally including HMC/NUTS diagnostic information). (#108)
  • mcmc_scatter gains an np argument for specifying NUTS parameters, which
    allows highlighting divergences in the plot. (#112)
  • New functions with names ending with suffix _data don't make the plots,
    they just return the data prepared for plotting (more of these to come in
    future releases):
    • ppc_intervals_data() (#101)
    • ppc_ribbon_data() (#101)
    • mcmc_parcoord_data() (#108)
    • mcmc_rhat_data() (#110)
    • mcmc_neff_data() (#110)
  • ppc_stat_grouped(), ppc_stat_freqpoly_grouped() gain a facet_args
    argument for controlling ggplot2 faceting (many of the mcmc_ functions
    already have this).
  • The divergences argument to mcmc_trace() has been deprecated in favor
    of np (NUTS parameters) to match the other functions that have an np
    argument.
  • Fixed an issue where duplicated rhat values would break mcmc_rhat() (#105).

bayesplot v1.3.0

07 Aug 21:17
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Release notes

(GitHub issue/PR numbers in parentheses)

The biggest change is:

  • bayesplot::theme_default is now set as the default ggplot2 plotting theme
    when bayesplot is loaded instead of hardcoded for each plot. This makes
    changing the default theme using ggplot2::theme_set possible.
    Thanks to @gavinsimpson. (#87)

Some minor changes:

  • mcmc_hist and mcmc_hist_by_chain now take a freq argument that defaults
    to TRUE (behavior is like freq argument to R's hist function).
  • Using a ts object for y in PPC plots no longer results in an error. Thanks
    to @helske. (#94)
  • mcmc_intervals doesn't use round lineends anymore as they slightly
    exaggerate the width of the intervals. Thanks to @tjmahr. (#96)

bayesplot v1.2.0

14 Apr 20:18
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bayesplot v1.2.0 is now on CRAN and can be installed with install.packages("bayesplot").
There is a lot of new stuff in this release!

Release notes

(GitHub issue/PR numbers in parentheses)

Fixes

  • Avoid error in some cases when divergences is specified in call to
    mcmc_trace but there are not actually any divergent transitions.
  • The merge_chains argument to mcmc_nuts_energy now defaults to FALSE.

New features in existing functions

  • For mcmc_* functions, transformations are recycled if transformations
    argument is specified as a single function rather than a named list. Thanks to @tklebel. (#64)
  • For ppc_violin_grouped there is now the option of showing y as a violin,
    points, or both. Thanks to @silberzwiebel. (#74)
  • color_scheme_get now has an optional argument i for selecting only a
    subset of the colors.
  • New color schemes: darkgray, orange, viridis, viridisA, viridisB, viridisC.
    The viridis schemes are better than the other schemes for trace plots (the
    colors are very distinct from each other).

New functions

  • mcmc_pairs, which is essentially a ggplot2+grid implementation of rstan's
    pairs.stanfit method. (#67)
  • mcmc_hex, which is similar to mcmc_scatter but using geom_hex instead of
    geom_point. This can be used to avoid overplotting. (#67)
  • overlay_function convenience function. Example usage: add a Gaussian (or any
    distribution) density curve to a plot made with mcmc_hist.
  • mcmc_recover_scatter and mcmc_recover_hist, which are similar to mcmc_recover_intervals and compare estimates to "true" values used to simulate data. (#81, #83)
  • New PPC category Discrete with functions:
    • ppc_rootogram for use with models for count data. Thanks to @paul-buerkner. (#28)
    • ppc_bars, ppc_bars_grouped for use with models for ordinal, categorical
      and multinomial data. Thanks to @silberzwiebel. (#73)
  • New PPC category LOO (thanks to suggestions from @avehtari) with functions:
    • ppc_loo_pit for assessing the calibration of marginal predictions. (#72)
    • ppc_loo_intervals, ppc_loo_ribbon for plotting intervals of the LOO predictive distribution. (#72)

bayesplot v1.1.0

20 Dec 19:22
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bayesplot v1.1.0 is now on CRAN and can be installed using install.packages("bayesplot").

Release notes

(GitHub issue/PR numbers in parentheses)

Fixes

  • Images in vignettes should now render properly using png device. Thanks to
    TJ Mahr. (#51)
  • xaxis_title(FALSE) and yaxis_title(FALSE) now set axis titles to NULL
    rather than changing theme elements to element_blank(). This makes it easier
    to add axis titles to plots that don’t have them by default. Thanks to Bill
    Harris. (#53)

New Features

  • Introduce ppc_error_hist_grouped for plotting predictive errors
    by level of a grouping variable. (#40)
  • Introduce mcmc_recover_intervals for comparing MCMC estimates to "true"
    parameter values used to simulate the data. (#56)
  • Add argument divergences to mcmc_trace function. For models fit using
    HMC/NUTS this can be used to display divergences as a rug at the bottom of the
    trace plot. (#42)
  • Introduce bayesplot_grid function for juxtaposing plots and enforcing shared
    axis limits. (#59)
  • The stat argument for all ppc_stat_* functions now accepts a function
    instead of only the name of a function. (#31)

Initial CRAN release

18 Nov 23:54
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Update README.md

[ci skip]

Beta Release

31 Oct 15:15
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Beta Release Pre-release
Pre-release

To install this beta release of the bayespot package you will also need the preview version of the
upcoming ggplot2 update (not the CRAN version):

if (!require("devtools"))
  install.packages("devtools")

devtools::install_github("hadley/ggplot2")
devtools::install_github("stan-dev/bayesplot", build_vignettes = TRUE)