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"""Functions for generating line graphs.""" | |
from collections import defaultdict | |
from functools import partial | |
from itertools import combinations | |
import networkx as nx | |
from networkx.utils import arbitrary_element | |
from networkx.utils.decorators import not_implemented_for | |
__all__ = ["line_graph", "inverse_line_graph"] | |
def line_graph(G, create_using=None): | |
r"""Returns the line graph of the graph or digraph `G`. | |
The line graph of a graph `G` has a node for each edge in `G` and an | |
edge joining those nodes if the two edges in `G` share a common node. For | |
directed graphs, nodes are adjacent exactly when the edges they represent | |
form a directed path of length two. | |
The nodes of the line graph are 2-tuples of nodes in the original graph (or | |
3-tuples for multigraphs, with the key of the edge as the third element). | |
For information about self-loops and more discussion, see the **Notes** | |
section below. | |
Parameters | |
---------- | |
G : graph | |
A NetworkX Graph, DiGraph, MultiGraph, or MultiDigraph. | |
create_using : NetworkX graph constructor, optional (default=nx.Graph) | |
Graph type to create. If graph instance, then cleared before populated. | |
Returns | |
------- | |
L : graph | |
The line graph of G. | |
Examples | |
-------- | |
>>> G = nx.star_graph(3) | |
>>> L = nx.line_graph(G) | |
>>> print(sorted(map(sorted, L.edges()))) # makes a 3-clique, K3 | |
[[(0, 1), (0, 2)], [(0, 1), (0, 3)], [(0, 2), (0, 3)]] | |
Edge attributes from `G` are not copied over as node attributes in `L`, but | |
attributes can be copied manually: | |
>>> G = nx.path_graph(4) | |
>>> G.add_edges_from((u, v, {"tot": u+v}) for u, v in G.edges) | |
>>> G.edges(data=True) | |
EdgeDataView([(0, 1, {'tot': 1}), (1, 2, {'tot': 3}), (2, 3, {'tot': 5})]) | |
>>> H = nx.line_graph(G) | |
>>> H.add_nodes_from((node, G.edges[node]) for node in H) | |
>>> H.nodes(data=True) | |
NodeDataView({(0, 1): {'tot': 1}, (2, 3): {'tot': 5}, (1, 2): {'tot': 3}}) | |
Notes | |
----- | |
Graph, node, and edge data are not propagated to the new graph. For | |
undirected graphs, the nodes in G must be sortable, otherwise the | |
constructed line graph may not be correct. | |
*Self-loops in undirected graphs* | |
For an undirected graph `G` without multiple edges, each edge can be | |
written as a set `\{u, v\}`. Its line graph `L` has the edges of `G` as | |
its nodes. If `x` and `y` are two nodes in `L`, then `\{x, y\}` is an edge | |
in `L` if and only if the intersection of `x` and `y` is nonempty. Thus, | |
the set of all edges is determined by the set of all pairwise intersections | |
of edges in `G`. | |
Trivially, every edge in G would have a nonzero intersection with itself, | |
and so every node in `L` should have a self-loop. This is not so | |
interesting, and the original context of line graphs was with simple | |
graphs, which had no self-loops or multiple edges. The line graph was also | |
meant to be a simple graph and thus, self-loops in `L` are not part of the | |
standard definition of a line graph. In a pairwise intersection matrix, | |
this is analogous to excluding the diagonal entries from the line graph | |
definition. | |
Self-loops and multiple edges in `G` add nodes to `L` in a natural way, and | |
do not require any fundamental changes to the definition. It might be | |
argued that the self-loops we excluded before should now be included. | |
However, the self-loops are still "trivial" in some sense and thus, are | |
usually excluded. | |
*Self-loops in directed graphs* | |
For a directed graph `G` without multiple edges, each edge can be written | |
as a tuple `(u, v)`. Its line graph `L` has the edges of `G` as its | |
nodes. If `x` and `y` are two nodes in `L`, then `(x, y)` is an edge in `L` | |
if and only if the tail of `x` matches the head of `y`, for example, if `x | |
= (a, b)` and `y = (b, c)` for some vertices `a`, `b`, and `c` in `G`. | |
Due to the directed nature of the edges, it is no longer the case that | |
every edge in `G` should have a self-loop in `L`. Now, the only time | |
self-loops arise is if a node in `G` itself has a self-loop. So such | |
self-loops are no longer "trivial" but instead, represent essential | |
features of the topology of `G`. For this reason, the historical | |
development of line digraphs is such that self-loops are included. When the | |
graph `G` has multiple edges, once again only superficial changes are | |
required to the definition. | |
References | |
---------- | |
* Harary, Frank, and Norman, Robert Z., "Some properties of line digraphs", | |
Rend. Circ. Mat. Palermo, II. Ser. 9 (1960), 161--168. | |
* Hemminger, R. L.; Beineke, L. W. (1978), "Line graphs and line digraphs", | |
in Beineke, L. W.; Wilson, R. J., Selected Topics in Graph Theory, | |
Academic Press Inc., pp. 271--305. | |
""" | |
if G.is_directed(): | |
L = _lg_directed(G, create_using=create_using) | |
else: | |
L = _lg_undirected(G, selfloops=False, create_using=create_using) | |
return L | |
def _lg_directed(G, create_using=None): | |
"""Returns the line graph L of the (multi)digraph G. | |
Edges in G appear as nodes in L, represented as tuples of the form (u,v) | |
or (u,v,key) if G is a multidigraph. A node in L corresponding to the edge | |
(u,v) is connected to every node corresponding to an edge (v,w). | |
Parameters | |
---------- | |
G : digraph | |
A directed graph or directed multigraph. | |
create_using : NetworkX graph constructor, optional | |
Graph type to create. If graph instance, then cleared before populated. | |
Default is to use the same graph class as `G`. | |
""" | |
L = nx.empty_graph(0, create_using, default=G.__class__) | |
# Create a graph specific edge function. | |
get_edges = partial(G.edges, keys=True) if G.is_multigraph() else G.edges | |
for from_node in get_edges(): | |
# from_node is: (u,v) or (u,v,key) | |
L.add_node(from_node) | |
for to_node in get_edges(from_node[1]): | |
L.add_edge(from_node, to_node) | |
return L | |
def _lg_undirected(G, selfloops=False, create_using=None): | |
"""Returns the line graph L of the (multi)graph G. | |
Edges in G appear as nodes in L, represented as sorted tuples of the form | |
(u,v), or (u,v,key) if G is a multigraph. A node in L corresponding to | |
the edge {u,v} is connected to every node corresponding to an edge that | |
involves u or v. | |
Parameters | |
---------- | |
G : graph | |
An undirected graph or multigraph. | |
selfloops : bool | |
If `True`, then self-loops are included in the line graph. If `False`, | |
they are excluded. | |
create_using : NetworkX graph constructor, optional (default=nx.Graph) | |
Graph type to create. If graph instance, then cleared before populated. | |
Notes | |
----- | |
The standard algorithm for line graphs of undirected graphs does not | |
produce self-loops. | |
""" | |
L = nx.empty_graph(0, create_using, default=G.__class__) | |
# Graph specific functions for edges. | |
get_edges = partial(G.edges, keys=True) if G.is_multigraph() else G.edges | |
# Determine if we include self-loops or not. | |
shift = 0 if selfloops else 1 | |
# Introduce numbering of nodes | |
node_index = {n: i for i, n in enumerate(G)} | |
# Lift canonical representation of nodes to edges in line graph | |
edge_key_function = lambda edge: (node_index[edge[0]], node_index[edge[1]]) | |
edges = set() | |
for u in G: | |
# Label nodes as a sorted tuple of nodes in original graph. | |
# Decide on representation of {u, v} as (u, v) or (v, u) depending on node_index. | |
# -> This ensures a canonical representation and avoids comparing values of different types. | |
nodes = [tuple(sorted(x[:2], key=node_index.get)) + x[2:] for x in get_edges(u)] | |
if len(nodes) == 1: | |
# Then the edge will be an isolated node in L. | |
L.add_node(nodes[0]) | |
# Add a clique of `nodes` to graph. To prevent double adding edges, | |
# especially important for multigraphs, we store the edges in | |
# canonical form in a set. | |
for i, a in enumerate(nodes): | |
edges.update( | |
[ | |
tuple(sorted((a, b), key=edge_key_function)) | |
for b in nodes[i + shift :] | |
] | |
) | |
L.add_edges_from(edges) | |
return L | |
def inverse_line_graph(G): | |
"""Returns the inverse line graph of graph G. | |
If H is a graph, and G is the line graph of H, such that G = L(H). | |
Then H is the inverse line graph of G. | |
Not all graphs are line graphs and these do not have an inverse line graph. | |
In these cases this function raises a NetworkXError. | |
Parameters | |
---------- | |
G : graph | |
A NetworkX Graph | |
Returns | |
------- | |
H : graph | |
The inverse line graph of G. | |
Raises | |
------ | |
NetworkXNotImplemented | |
If G is directed or a multigraph | |
NetworkXError | |
If G is not a line graph | |
Notes | |
----- | |
This is an implementation of the Roussopoulos algorithm[1]_. | |
If G consists of multiple components, then the algorithm doesn't work. | |
You should invert every component separately: | |
>>> K5 = nx.complete_graph(5) | |
>>> P4 = nx.Graph([("a", "b"), ("b", "c"), ("c", "d")]) | |
>>> G = nx.union(K5, P4) | |
>>> root_graphs = [] | |
>>> for comp in nx.connected_components(G): | |
... root_graphs.append(nx.inverse_line_graph(G.subgraph(comp))) | |
>>> len(root_graphs) | |
2 | |
References | |
---------- | |
.. [1] Roussopoulos, N.D. , "A max {m, n} algorithm for determining the graph H from | |
its line graph G", Information Processing Letters 2, (1973), 108--112, ISSN 0020-0190, | |
`DOI link <https://doi.org/10.1016/0020-0190(73)90029-X>`_ | |
""" | |
if G.number_of_nodes() == 0: | |
return nx.empty_graph(1) | |
elif G.number_of_nodes() == 1: | |
v = arbitrary_element(G) | |
a = (v, 0) | |
b = (v, 1) | |
H = nx.Graph([(a, b)]) | |
return H | |
elif G.number_of_nodes() > 1 and G.number_of_edges() == 0: | |
msg = ( | |
"inverse_line_graph() doesn't work on an edgeless graph. " | |
"Please use this function on each component separately." | |
) | |
raise nx.NetworkXError(msg) | |
if nx.number_of_selfloops(G) != 0: | |
msg = ( | |
"A line graph as generated by NetworkX has no selfloops, so G has no " | |
"inverse line graph. Please remove the selfloops from G and try again." | |
) | |
raise nx.NetworkXError(msg) | |
starting_cell = _select_starting_cell(G) | |
P = _find_partition(G, starting_cell) | |
# count how many times each vertex appears in the partition set | |
P_count = {u: 0 for u in G.nodes} | |
for p in P: | |
for u in p: | |
P_count[u] += 1 | |
if max(P_count.values()) > 2: | |
msg = "G is not a line graph (vertex found in more than two partition cells)" | |
raise nx.NetworkXError(msg) | |
W = tuple((u,) for u in P_count if P_count[u] == 1) | |
H = nx.Graph() | |
H.add_nodes_from(P) | |
H.add_nodes_from(W) | |
for a, b in combinations(H.nodes, 2): | |
if any(a_bit in b for a_bit in a): | |
H.add_edge(a, b) | |
return H | |
def _triangles(G, e): | |
"""Return list of all triangles containing edge e""" | |
u, v = e | |
if u not in G: | |
raise nx.NetworkXError(f"Vertex {u} not in graph") | |
if v not in G[u]: | |
raise nx.NetworkXError(f"Edge ({u}, {v}) not in graph") | |
triangle_list = [] | |
for x in G[u]: | |
if x in G[v]: | |
triangle_list.append((u, v, x)) | |
return triangle_list | |
def _odd_triangle(G, T): | |
"""Test whether T is an odd triangle in G | |
Parameters | |
---------- | |
G : NetworkX Graph | |
T : 3-tuple of vertices forming triangle in G | |
Returns | |
------- | |
True is T is an odd triangle | |
False otherwise | |
Raises | |
------ | |
NetworkXError | |
T is not a triangle in G | |
Notes | |
----- | |
An odd triangle is one in which there exists another vertex in G which is | |
adjacent to either exactly one or exactly all three of the vertices in the | |
triangle. | |
""" | |
for u in T: | |
if u not in G.nodes(): | |
raise nx.NetworkXError(f"Vertex {u} not in graph") | |
for e in list(combinations(T, 2)): | |
if e[0] not in G[e[1]]: | |
raise nx.NetworkXError(f"Edge ({e[0]}, {e[1]}) not in graph") | |
T_neighbors = defaultdict(int) | |
for t in T: | |
for v in G[t]: | |
if v not in T: | |
T_neighbors[v] += 1 | |
return any(T_neighbors[v] in [1, 3] for v in T_neighbors) | |
def _find_partition(G, starting_cell): | |
"""Find a partition of the vertices of G into cells of complete graphs | |
Parameters | |
---------- | |
G : NetworkX Graph | |
starting_cell : tuple of vertices in G which form a cell | |
Returns | |
------- | |
List of tuples of vertices of G | |
Raises | |
------ | |
NetworkXError | |
If a cell is not a complete subgraph then G is not a line graph | |
""" | |
G_partition = G.copy() | |
P = [starting_cell] # partition set | |
G_partition.remove_edges_from(list(combinations(starting_cell, 2))) | |
# keep list of partitioned nodes which might have an edge in G_partition | |
partitioned_vertices = list(starting_cell) | |
while G_partition.number_of_edges() > 0: | |
# there are still edges left and so more cells to be made | |
u = partitioned_vertices.pop() | |
deg_u = len(G_partition[u]) | |
if deg_u != 0: | |
# if u still has edges then we need to find its other cell | |
# this other cell must be a complete subgraph or else G is | |
# not a line graph | |
new_cell = [u] + list(G_partition[u]) | |
for u in new_cell: | |
for v in new_cell: | |
if (u != v) and (v not in G_partition[u]): | |
msg = ( | |
"G is not a line graph " | |
"(partition cell not a complete subgraph)" | |
) | |
raise nx.NetworkXError(msg) | |
P.append(tuple(new_cell)) | |
G_partition.remove_edges_from(list(combinations(new_cell, 2))) | |
partitioned_vertices += new_cell | |
return P | |
def _select_starting_cell(G, starting_edge=None): | |
"""Select a cell to initiate _find_partition | |
Parameters | |
---------- | |
G : NetworkX Graph | |
starting_edge: an edge to build the starting cell from | |
Returns | |
------- | |
Tuple of vertices in G | |
Raises | |
------ | |
NetworkXError | |
If it is determined that G is not a line graph | |
Notes | |
----- | |
If starting edge not specified then pick an arbitrary edge - doesn't | |
matter which. However, this function may call itself requiring a | |
specific starting edge. Note that the r, s notation for counting | |
triangles is the same as in the Roussopoulos paper cited above. | |
""" | |
if starting_edge is None: | |
e = arbitrary_element(G.edges()) | |
else: | |
e = starting_edge | |
if e[0] not in G.nodes(): | |
raise nx.NetworkXError(f"Vertex {e[0]} not in graph") | |
if e[1] not in G[e[0]]: | |
msg = f"starting_edge ({e[0]}, {e[1]}) is not in the Graph" | |
raise nx.NetworkXError(msg) | |
e_triangles = _triangles(G, e) | |
r = len(e_triangles) | |
if r == 0: | |
# there are no triangles containing e, so the starting cell is just e | |
starting_cell = e | |
elif r == 1: | |
# there is exactly one triangle, T, containing e. If other 2 edges | |
# of T belong only to this triangle then T is starting cell | |
T = e_triangles[0] | |
a, b, c = T | |
# ab was original edge so check the other 2 edges | |
ac_edges = len(_triangles(G, (a, c))) | |
bc_edges = len(_triangles(G, (b, c))) | |
if ac_edges == 1: | |
if bc_edges == 1: | |
starting_cell = T | |
else: | |
return _select_starting_cell(G, starting_edge=(b, c)) | |
else: | |
return _select_starting_cell(G, starting_edge=(a, c)) | |
else: | |
# r >= 2 so we need to count the number of odd triangles, s | |
s = 0 | |
odd_triangles = [] | |
for T in e_triangles: | |
if _odd_triangle(G, T): | |
s += 1 | |
odd_triangles.append(T) | |
if r == 2 and s == 0: | |
# in this case either triangle works, so just use T | |
starting_cell = T | |
elif r - 1 <= s <= r: | |
# check if odd triangles containing e form complete subgraph | |
triangle_nodes = set() | |
for T in odd_triangles: | |
for x in T: | |
triangle_nodes.add(x) | |
for u in triangle_nodes: | |
for v in triangle_nodes: | |
if u != v and (v not in G[u]): | |
msg = ( | |
"G is not a line graph (odd triangles " | |
"do not form complete subgraph)" | |
) | |
raise nx.NetworkXError(msg) | |
# otherwise then we can use this as the starting cell | |
starting_cell = tuple(triangle_nodes) | |
else: | |
msg = ( | |
"G is not a line graph (incorrect number of " | |
"odd triangles around starting edge)" | |
) | |
raise nx.NetworkXError(msg) | |
return starting_cell | |