# How to partially compare two graphs

For example, these two graphs is considered to be a perfect partial match:

0 - 1

1 - 2

2 - 3

3 - 0

AND

0 - 1

1 - 2

These two are considered a bad match

0 - 1

1 - 2

2 - 3

3 - 0

AND

0 - 1

1 - 2

2 - 0

The numbers don't have to match, as long as the relation between those nodes can perfectly match.

-
You mean that after a possible renaming, the second graph is a subgraph of the first? –  Daniel Fischer Nov 24 '12 at 2:37
@DanielFischer YES! Exactly that. –  Shane Hsu Nov 24 '12 at 4:55

This is the subgraph isomorphism problem: http://en.wikipedia.org/wiki/Subgraph_isomorphism_problem

There is one algorithm mentioned in the article due to Ullmann.

Ullmann's algorithm is an extension of a depth-first search. A depth-first search would work like this:

``````def search(graph,subgraph,assignments):
i=len(assignments)

# Make sure that every edge between assigned vertices in the subgraph is also an
# edge in the graph.
for edge in subgraph.edges:
if edge.first<i and edge.second<i:
if not graph.has_edge(assignments[edge.first],assignments[edge.second]):
return False

# If all the vertices in the subgraph are assigned, then we are done.
if i==subgraph.n_vertices:
return True

# Otherwise, go through all the possible assignments for the next vertex of
# the subgraph and try it.
for j in possible_assignments[i]:
if j not in assignments:
assignments.append(j)
if search(graph,subgraph,assignments):
# This worked, so we've found an isomorphism.
return True
assignments.pop()

def find_isomporhism(graph,subgraph):
assignments=[]
if search(graph,subgraph,assignments):
return assignments
return None
``````

For the basic algorithm, `possible_assignments[i] = range(0,graph.n_vertices)`. That is, all the vertices are a possibility.

Ullmann extends this basic algorithm by narrowing the possibilities:

``````def update_possible_assignements(graph,subgraph,possible_assignments):
any_changes=True
while any_changes:
any_changes = False
for i in range(0,len(subgraph.n_vertices)):
for j in possible_assignments[i]:
match=False
for y in range(0,len(graph.n_vertices)):
if y in possible_assignments[x] and graph.has_edge(j,y):
match=True
if not match:
possible_assignments[i].remove(j)
any_changes = True
``````

The idea is that if node i of the subgraph could possibly match node j of the graph, then for every node x that is adjacent to node i in the subgraph, it has to be possible to find a node y that is adjacent to node j in the graph. This process helps more than might first be obvious, because each time we eliminate a possible assignment, this may cause other possible assignments to be eliminated, since they are interdependent.

The final algorithm is then:

``````def search(graph,subgraph,assignments,possible_assignments):
update_possible_assignments(graph,subgraph,possible_assignments)

i=len(assignments)

# Make sure that every edge between assigned vertices in the subgraph is also an
# edge in the graph.
for edge in subgraph.edges:
if edge.first<i and edge.second<i:
if not graph.has_edge(assignments[edge.first],assignments[edge.second]):
return False

# If all the vertices in the subgraph are assigned, then we are done.
if i==subgraph.n_vertices:
return True

for j in possible_assignments[i]:
if j not in assignments:
assignments.append(j)

# Create a new set of possible assignments, where graph node j is the only
# possibility for the assignment of subgraph node i.
new_possible_assignments = deep_copy(possible_assignments)
new_possible_assignments[i] = [j]

if search(graph,subgraph,assignments,new_possible_assignments):
return True

assignments.pop()
possible_assignments[i].remove(j)
update_possible_assignments(graph,subgraph,possible_assignments)

def find_isomporhism(graph,subgraph):
assignments=[]
possible_assignments = [[True]*graph.n_vertices for i in range(subgraph.n_vertices)]
if search(graph,subgraph,asignments,possible_assignments):
return assignments
return None
``````
-
Thank you for the detailed answer. It is really nice. –  Shane Hsu Dec 17 '12 at 7:52