DiagrammeR (version 0.9.2)

trav_out_node: Traverse from one or more selected edges onto adjacent, outward nodes

Description

From a graph object of class dgr_graph with an active selection of edges move opposite to the edge direction to connected nodes, replacing the current edge selection with those nodes traversed to. An optional filter by node attribute can limit the set of nodes traversed to.

Usage

trav_out_node(graph, conditions = NULL, copy_attrs_from = NULL,
  agg = "sum")

Arguments

graph

a graph object of class dgr_graph.

conditions

an option to use filtering conditions for the traversal.

copy_attrs_from

providing an edge attribute name will copy those edge attribute values to the traversed nodes. If the edge attribute already exists, the values will be merged to the traversed nodes; otherwise, a new node attribute will be created.

agg

if an edge attribute is provided to copy_attrs_from, then an aggregation function is required since there may be cases where multiple edge attribute values will be passed onto the traversed node(s). To pass only a single value, the following aggregation functions can be used: sum, min, max, mean, or median.

Value

a graph object of class dgr_graph.

Examples

Run this code
# NOT RUN {
# Set a seed
set.seed(23)

# Create a simple graph
graph <-
  create_graph() %>%
  add_n_nodes(
    n = 2,
    type = "a",
    label = c("asd", "iekd")) %>%
  add_n_nodes(
    n = 3,
    type = "b",
    label = c("idj", "edl", "ohd")) %>%
  add_edges_w_string(
    edges = "1->2 1->3 2->4 2->5 3->5",
    rel = c(NA, "A", "B", "C", "D"))

# Create a data frame with node ID values
# representing the graph edges (with `from`
# and `to` columns), and, a set of numeric values
df_edges <-
  data.frame(
    from = c(1, 1, 2, 2, 3),
      to = c(2, 3, 4, 5, 5),
    values = round(rnorm(5, 5), 2))

# Create a data frame with node ID values
# representing the graph nodes (with the `id`
# columns), and, a set of numeric values
df_nodes <-
  data.frame(
    id = 1:5,
    values = round(rnorm(5, 7), 2))

# Join the data frame to the graph's internal
# edge data frame (edf)
graph <-
  graph %>%
  join_edge_attrs(df = df_edges) %>%
  join_node_attrs(df = df_nodes)

# Show the graph's internal node data frame
get_node_df(graph)
#>   id type label values
#> 1  1    a   asd   8.58
#> 2  2    a  iekd   7.22
#> 3  3    b   idj   5.95
#> 4  4    b   edl   6.71
#> 5  5    b   ohd   7.48

# Show the graph's internal edge data frame
get_edge_df(graph)
#>   id from to  rel values
#> 1  1    1  2 <NA>   6.00
#> 2  2    1  3    A   6.11
#> 3  3    2  4    B   4.72
#> 4  4    2  5    C   6.02
#> 5  5    3  5    D   5.05

# Perform a simple traversal from the
# edge `1`->`3` to the attached node
# in the direction of the edge; here, no
# conditions are placed on the nodes
# traversed to
graph %>%
  select_edges(
    from = 1,
      to = 3) %>%
  trav_out_node() %>%
  get_selection()
#> [1] 1

# Traverse from edges `2`->`5` and
# `3`->`5` to the attached node along
# the direction of the edge; here, the
# traversals lead to different nodes
graph %>%
  select_edges(
    from = 2,
      to = 5) %>%
  select_edges(
    from = 3,
      to = 5) %>%
  trav_out_node() %>%
  get_selection()
#> [1] 2 3

# Traverse from the edge `1`->`3`
# to the attached node where the edge
# is outgoing, this time filtering
# numeric values greater than `7.0` for
# the `values` node attribute
graph %>%
  select_edges(
    from = 1,
      to = 3) %>%
  trav_out_node(
    conditions = values > 7.0) %>%
  get_selection()
#> [1] 1

# Traverse from the edge `1`->`3`
# to the attached node where the edge
# is outgoing, this time filtering
# numeric values less than `7.0` for
# the `values` node attribute (the
# condition is not met so the original
# selection of edge `1`->`3` remains)
graph %>%
  select_edges(
    from = 1,
      to = 3) %>%
  trav_out_node(
    conditions = values < 7.0) %>%
  get_selection()
#> [1] 2

# Traverse from the edge `1`->`2`
# to node `2`, using multiple conditions
graph %>%
  select_edges(
    from = 1,
      to = 2) %>%
  trav_out_node(
    conditions =
      grepl(".*d$", label) |
      values < 6.0) %>%
  get_selection()
#> [1] 1

# Create another simple graph to demonstrate
# copying of edge attribute values to traversed
# nodes
graph <-
  create_graph() %>%
  add_node() %>%
  select_nodes() %>%
  add_n_nodes_ws(
    n = 2,
    direction = "from") %>%
  clear_selection() %>%
  select_nodes_by_id(nodes = 2) %>%
  set_node_attrs_ws(
    node_attr = value,
    value = 8) %>%
  clear_selection() %>%
  select_edges_by_edge_id(edges = 1) %>%
  set_edge_attrs_ws(
    edge_attr = value,
    value = 5) %>%
  clear_selection() %>%
  select_edges_by_edge_id(edges = 2) %>%
  set_edge_attrs_ws(
    edge_attr = value,
    value = 5) %>%
  clear_selection() %>%
  select_edges()

# Show the graph's internal edge data frame
graph %>%
  get_edge_df()
#>   id from to  rel value
#> 1  1    1  2 <NA>     5
#> 2  2    1  3 <NA>     5

# Show the graph's internal node data frame
graph %>%
  get_node_df()
#>   id type label value
#> 1  1 <NA>  <NA>    NA
#> 2  2 <NA>  <NA>     8
#> 3  3 <NA>  <NA>    NA

# Perform a traversal from the edges to
# the central node (`1`) while also applying
# the edge attribute `value` to the node (in
# this case summing the `value` of 5 from
# both edges before adding as a node attribute)
graph <-
  graph %>%
  trav_out_node(
    copy_attrs_from = value,
    agg = "sum")

# Show the graph's internal node data frame
# after this change
graph %>%
  get_node_df()
#>   id type label value
#> 1  1 <NA>  <NA>    10
#> 2  2 <NA>  <NA>     8
#> 3  3 <NA>  <NA>    NA
# }

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