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ggdag: An R Package for visualizing and analyzing causal directed acyclic graphs

Tidy, analyze, and plot causal directed acyclic graphs (DAGs). ggdag uses the powerful dagitty package to create and analyze structural causal models and plot them using ggplot2 and ggraph in a consistent and easy manner.

Installation

You can install ggdag with:

install.packages("ggdag")

Or you can install the development version from GitHub with:

# install.packages("devtools")
devtools::install_github("malcolmbarrett/ggdag")

Example

ggdag makes it easy to use dagitty in the context of the tidyverse. You can directly tidy dagitty objects or use convenience functions to create DAGs using a more R-like syntax:

library(ggdag)

#  example from the dagitty package
dag <- dagitty::dagitty("dag {
    y <- x <- z1 <- v -> z2 -> y
    z1 <- w1 <-> w2 -> z2
    x <- w1 -> y
    x <- w2 -> y
    x [exposure]
    y [outcome]
  }"
)

tidy_dag <- tidy_dagitty(dag)

tidy_dag 
#> # A DAG with 7 nodes and 12 edges
#> #
#> # Exposure: x
#> # Outcome: y
#> #
#> # A tibble: 13 x 8
#>    name      x     y direction to     xend  yend circular
#>    <chr> <dbl> <dbl> <fct>     <chr> <dbl> <dbl> <lgl>   
#>  1 v     11.8   8.03 ->        z1    10.4   7.77 FALSE   
#>  2 v     11.8   8.03 ->        z2    12.1   6.66 FALSE   
#>  3 w1    10.2   6.85 ->        x      9.95  6.28 FALSE   
#>  4 w1    10.2   6.85 ->        y     11.1   6.39 FALSE   
#>  5 w1    10.2   6.85 ->        z1    10.4   7.77 FALSE   
#>  6 w1    10.2   6.85 <->       w2    10.9   5.75 FALSE   
#>  7 w2    10.9   5.75 ->        x      9.95  6.28 FALSE   
#>  8 w2    10.9   5.75 ->        y     11.1   6.39 FALSE   
#>  9 w2    10.9   5.75 ->        z2    12.1   6.66 FALSE   
#> 10 x      9.95  6.28 ->        y     11.1   6.39 FALSE   
#> 11 z1    10.4   7.77 ->        x      9.95  6.28 FALSE   
#> 12 z2    12.1   6.66 ->        y     11.1   6.39 FALSE   
#> 13 y     11.1   6.39 <NA>      <NA>  NA    NA    FALSE

#  using more R-like syntax to create the same DAG
tidy_ggdag <- dagify(
  y ~ x + z2 + w2 + w1,
  x ~ z1 + w1 + w2,
  z1 ~ w1 + v,
  z2 ~ w2 + v,
  w1 ~~ w2, # bidirected path
  exposure = "x",
  outcome = "y"
) %>% 
  tidy_dagitty()

tidy_ggdag
#> # A DAG with 7 nodes and 12 edges
#> #
#> # Exposure: x
#> # Outcome: y
#> #
#> # A tibble: 13 x 8
#>    name      x     y direction to     xend  yend circular
#>    <chr> <dbl> <dbl> <fct>     <chr> <dbl> <dbl> <lgl>   
#>  1 v      9.30  13.4 ->        z1     9.74  12.1 FALSE   
#>  2 v      9.30  13.4 ->        z2     7.96  13.0 FALSE   
#>  3 w1     8.74  11.0 ->        x      8.86  11.6 FALSE   
#>  4 w1     8.74  11.0 ->        y      7.68  11.5 FALSE   
#>  5 w1     8.74  11.0 ->        z1     9.74  12.1 FALSE   
#>  6 w1     8.74  11.0 <->       w2     8.00  12.0 FALSE   
#>  7 w2     8.00  12.0 ->        x      8.86  11.6 FALSE   
#>  8 w2     8.00  12.0 ->        y      7.68  11.5 FALSE   
#>  9 w2     8.00  12.0 ->        z2     7.96  13.0 FALSE   
#> 10 x      8.86  11.6 ->        y      7.68  11.5 FALSE   
#> 11 z1     9.74  12.1 ->        x      8.86  11.6 FALSE   
#> 12 z2     7.96  13.0 ->        y      7.68  11.5 FALSE   
#> 13 y      7.68  11.5 <NA>      <NA>  NA     NA   FALSE

ggdag also provides functionality for analyzing DAGs and plotting them in ggplot2:

ggdag(tidy_ggdag) +
  theme_dag()
ggdag_adjustment_set(tidy_ggdag, node_size = 14) + 
  theme(legend.position = "bottom")

As well as geoms and other functions for plotting them directly in ggplot2:

dagify(m ~ x + y) %>% 
  tidy_dagitty() %>% 
  node_dconnected("x", "y", controlling_for = "m") %>%
  ggplot(aes(
    x = x, 
    y = y, 
    xend = xend, 
    yend = yend, 
    shape = adjusted, 
    col = d_relationship
  )) +
    geom_dag_edges(aes(end_cap = ggraph::circle(10, "mm"))) +
    geom_dag_collider_edges() +
    geom_dag_point() +
    geom_dag_text(col = "white") +
    theme_dag() + 
    scale_adjusted() +
    expand_plot(expand_y = expansion(c(0.2, 0.2))) +
    scale_color_viridis_d(
      name = "d-relationship", 
      na.value = "grey85", 
      begin = .35
    ) 

And common structures of bias:

ggdag_equivalent_dags(confounder_triangle())

ggdag_butterfly_bias(edge_type = "diagonal")

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Version

Install

install.packages('ggdag')

Monthly Downloads

8,833

Version

0.2.3

License

MIT + file LICENSE

Issues

Pull Requests

Stars

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Maintainer

Malcolm Barrett

Last Published

January 12th, 2021

Functions in ggdag (0.2.3)

Canonicalize DAGs

Canonicalize a DAG
as.tbl.tidy_daggity

Convert a tidy_dagitty object to tbl
as.data.frame.tidy_dagitty

Convert a tidy_dagitty object to data.frame
as_tbl_graph

Convert DAGS to tidygraph
Assess d-separation between variables

D-relationship between variables
coordinates

Manipulate DAG coordinates
activate_collider_paths

Activate paths opened by stratifying on a collider
Covariate Adjustment Sets

Covariate Adjustment Sets
Adjust for variables

Adjust for variables and activate any biasing paths that result
Colliders

Find colliders
DAG Edges

Directed DAG edges
Equivalent DAGs and Classes

Generating Equivalent Models
dplyr

Dplyr verb methods for tidy_dagitty objects
DAG Labels

DAG labels
fortify

Fortify a tidy_dagitty object for ggplot2
Nodes

DAG Nodes
geom_dag_collider_edges

Edges for paths activated by stratification on colliders
Instrumental Variables

Find Instrumental Variables
Exogenous Variables

Find Exogenous Variables
expand_plot

Quickly scale the size of a ggplot
is.tidy_dagitty

Test for object class for tidy_dagitty
geom_dag_edges

Directed and bidirected DAG edges
ggdag_classic

Quickly plot a DAG in ggplot2
ggrepel functions

Repulsive textual annotations
remove_axes

Quickly remove plot axes and grids
ggplot.tidy_dagitty

Create a new ggplot
reexports

Objects exported from other packages
tidy_dagitty

Tidy a dagitty object
theme_dag_grey

Simple grey themes for DAGs
Test if Variable Is Collider

Detecting colliders in DAGs
is_confounder

Assess if a variable confounds a relationship
dag

Create a dagitty DAG
scale_adjusted

Common scale adjustments for DAGs
geom_dag_text

Node text
ggdag

Quickly plot a DAG in ggplot2
print.tidy_dagitty

Print a tidy_dagitty
Quick Plots for Common DAGs

Quickly create a DAGs with common structures of bias
simulate_data

Simulate Data from Structural Equation Model
Variable Status

Find variable status
Assess familial relationships between variables

Familial relationships between variables
Pathways

Find Pathways Between Variables
tbl_df.tidy_daggity

Convert a tidy_dagitty object to tbl_df
%>%

Pipe operator
theme_dag_blank

Minimalist DAG themes
dagify

Create a dagitty DAG using R-like syntax