DiagrammeR (version 1.0.5)

add_balanced_tree: Add a balanced tree to the graph

Description

With a graph object of class dgr_graph, add a balanced tree to the graph.

Usage

add_balanced_tree(
  graph,
  k,
  h,
  type = NULL,
  label = TRUE,
  rel = NULL,
  node_aes = NULL,
  edge_aes = NULL,
  node_data = NULL,
  edge_data = NULL
)

Arguments

graph

A graph object of class dgr_graph.

k

The branching factor for the tree.

h

The height of the tree.

type

An optional string that describes the entity type for the nodes to be added.

label

Either a vector object of length n that provides optional labels for the new nodes, or, a boolean value where setting to TRUE ascribes node IDs to the label and FALSE yields a blank label.

rel

An optional string for providing a relationship label to all new edges created in the node tree.

node_aes

An optional list of named vectors comprising node aesthetic attributes. The helper function node_aes() is strongly recommended for use here as it contains arguments for each of the accepted node aesthetic attributes (e.g., shape, style, color, fillcolor).

edge_aes

An optional list of named vectors comprising edge aesthetic attributes. The helper function edge_aes() is strongly recommended for use here as it contains arguments for each of the accepted edge aesthetic attributes (e.g., shape, style, penwidth, color).

node_data

An optional list of named vectors comprising node data attributes. The helper function node_data() is strongly recommended for use here as it helps bind data specifically to the created nodes.

edge_data

An optional list of named vectors comprising edge data attributes. The helper function edge_data() is strongly recommended for use here as it helps bind data specifically to the created edges.

Value

A graph object of class dgr_graph.

Examples

Run this code
# NOT RUN {
# Create a new graph and
# add 2 different types of
# balanced trees of height
# 2 (branching twice) and
# different branching ratios
graph <-
  create_graph() %>%
  add_balanced_tree(
    k = 2,
    h = 2,
    type = "binary") %>%
  add_balanced_tree(
    k = 3,
    h = 2,
    type = "tertiary")

# Get some node information
# from this graph
graph %>%
  get_node_info() %>%
  head(5)

# Node and edge aesthetic and data
# attributes can be specified in
# the `node_aes`, `edge_aes`,
# `node_data`, and `edge_data`
# arguments
graph_w_attrs <-
  create_graph() %>%
  add_balanced_tree(
    k = 2,
    h = 2,
    label = c(
      "one", "two",
      "three", "four",
      "five", "six", "seven"),
    type = c(
      "a", "b", "b", "c",
      "c", "c", "c"),
    rel = "A",
    node_aes = node_aes(
      fillcolor = "steelblue"),
    node_data = node_data(
      value = c(
        1.6, 2.8, 3.4, 8.3,
        3.8, 5.2, 3.2)),
    edge_aes = edge_aes(
      color = "red",
      penwidth = 1.2))

# Get the first three rows of
# the graph's node data frame
graph_w_attrs %>%
  get_node_df() %>%
  head(3)

# Get the first three rows of
# the graph's edge data frame
graph_w_attrs %>%
  get_edge_df() %>%
  head(3)
# }

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