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mightyscape-1.1-deprecated/extensions/networkx/algorithms/tree/operations.py
2020-07-30 01:16:18 +02:00

111 lines
3.6 KiB
Python

# operations.py - binary operations on trees
#
# Copyright 2015 NetworkX developers.
#
# This file is part of NetworkX.
#
# NetworkX is distributed under a BSD license; see LICENSE.txt for more
# information.
"""Operations on trees."""
from functools import partial
from itertools import chain
import networkx as nx
from networkx.utils import accumulate
__all__ = ['join']
def join(rooted_trees, label_attribute=None):
"""Returns a new rooted tree with a root node joined with the roots
of each of the given rooted trees.
Parameters
----------
rooted_trees : list
A list of pairs in which each left element is a NetworkX graph
object representing a tree and each right element is the root
node of that tree. The nodes of these trees will be relabeled to
integers.
label_attribute : str
If provided, the old node labels will be stored in the new tree
under this node attribute. If not provided, the node attribute
``'_old'`` will store the original label of the node in the
rooted trees given in the input.
Returns
-------
NetworkX graph
The rooted tree whose subtrees are the given rooted trees. The
new root node is labeled 0. Each non-root node has an attribute,
as described under the keyword argument ``label_attribute``,
that indicates the label of the original node in the input tree.
Notes
-----
Graph, edge, and node attributes are propagated from the given
rooted trees to the created tree. If there are any overlapping graph
attributes, those from later trees will overwrite those from earlier
trees in the tuple of positional arguments.
Examples
--------
Join two full balanced binary trees of height *h* to get a full
balanced binary tree of depth *h* + 1::
>>> h = 4
>>> left = nx.balanced_tree(2, h)
>>> right = nx.balanced_tree(2, h)
>>> joined_tree = nx.join([(left, 0), (right, 0)])
>>> nx.is_isomorphic(joined_tree, nx.balanced_tree(2, h + 1))
True
"""
if len(rooted_trees) == 0:
return nx.empty_graph(1)
# Unzip the zipped list of (tree, root) pairs.
trees, roots = zip(*rooted_trees)
# The join of the trees has the same type as the type of the first
# tree.
R = type(trees[0])()
# Relabel the nodes so that their union is the integers starting at 1.
if label_attribute is None:
label_attribute = '_old'
relabel = partial(nx.convert_node_labels_to_integers,
label_attribute=label_attribute)
lengths = (len(tree) for tree in trees[:-1])
first_labels = chain([0], accumulate(lengths))
trees = [relabel(tree, first_label=first_label + 1)
for tree, first_label in zip(trees, first_labels)]
# Get the relabeled roots.
roots = [next(v for v, d in tree.nodes(data=True) if d.get('_old') == root)
for tree, root in zip(trees, roots)]
# Remove the old node labels.
for tree in trees:
for v in tree:
tree.nodes[v].pop('_old')
# Add all sets of nodes and edges, with data.
nodes = (tree.nodes(data=True) for tree in trees)
edges = (tree.edges(data=True) for tree in trees)
R.add_nodes_from(chain.from_iterable(nodes))
R.add_edges_from(chain.from_iterable(edges))
# Add graph attributes; later attributes take precedent over earlier
# attributes.
for tree in trees:
R.graph.update(tree.graph)
# Finally, join the subtrees at the root. We know 0 is unused by the
# way we relabeled the subtrees.
R.add_node(0)
R.add_edges_from((0, root) for root in roots)
return R