|
|
""" |
|
|
Flow based cut algorithms |
|
|
""" |
|
|
import itertools |
|
|
|
|
|
import networkx as nx |
|
|
|
|
|
|
|
|
|
|
|
from networkx.algorithms.flow import build_residual_network, edmonds_karp |
|
|
|
|
|
default_flow_func = edmonds_karp |
|
|
|
|
|
from .utils import build_auxiliary_edge_connectivity, build_auxiliary_node_connectivity |
|
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|
|
|
__all__ = [ |
|
|
"minimum_st_node_cut", |
|
|
"minimum_node_cut", |
|
|
"minimum_st_edge_cut", |
|
|
"minimum_edge_cut", |
|
|
] |
|
|
|
|
|
|
|
|
@nx._dispatch( |
|
|
graphs={"G": 0, "auxiliary?": 4, "residual?": 5}, |
|
|
preserve_edge_attrs={ |
|
|
"auxiliary": {"capacity": float("inf")}, |
|
|
"residual": {"capacity": float("inf")}, |
|
|
}, |
|
|
preserve_graph_attrs={"auxiliary", "residual"}, |
|
|
) |
|
|
def minimum_st_edge_cut(G, s, t, flow_func=None, auxiliary=None, residual=None): |
|
|
"""Returns the edges of the cut-set of a minimum (s, t)-cut. |
|
|
|
|
|
This function returns the set of edges of minimum cardinality that, |
|
|
if removed, would destroy all paths among source and target in G. |
|
|
Edge weights are not considered. See :meth:`minimum_cut` for |
|
|
computing minimum cuts considering edge weights. |
|
|
|
|
|
Parameters |
|
|
---------- |
|
|
G : NetworkX graph |
|
|
|
|
|
s : node |
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|
Source node for the flow. |
|
|
|
|
|
t : node |
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|
Sink node for the flow. |
|
|
|
|
|
auxiliary : NetworkX DiGraph |
|
|
Auxiliary digraph to compute flow based node connectivity. It has |
|
|
to have a graph attribute called mapping with a dictionary mapping |
|
|
node names in G and in the auxiliary digraph. If provided |
|
|
it will be reused instead of recreated. Default value: None. |
|
|
|
|
|
flow_func : function |
|
|
A function for computing the maximum flow among a pair of nodes. |
|
|
The function has to accept at least three parameters: a Digraph, |
|
|
a source node, and a target node. And return a residual network |
|
|
that follows NetworkX conventions (see :meth:`maximum_flow` for |
|
|
details). If flow_func is None, the default maximum flow function |
|
|
(:meth:`edmonds_karp`) is used. See :meth:`node_connectivity` for |
|
|
details. The choice of the default function may change from version |
|
|
to version and should not be relied on. Default value: None. |
|
|
|
|
|
residual : NetworkX DiGraph |
|
|
Residual network to compute maximum flow. If provided it will be |
|
|
reused instead of recreated. Default value: None. |
|
|
|
|
|
Returns |
|
|
------- |
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|
cutset : set |
|
|
Set of edges that, if removed from the graph, will disconnect it. |
|
|
|
|
|
See also |
|
|
-------- |
|
|
:meth:`minimum_cut` |
|
|
:meth:`minimum_node_cut` |
|
|
:meth:`minimum_edge_cut` |
|
|
:meth:`stoer_wagner` |
|
|
:meth:`node_connectivity` |
|
|
:meth:`edge_connectivity` |
|
|
:meth:`maximum_flow` |
|
|
:meth:`edmonds_karp` |
|
|
:meth:`preflow_push` |
|
|
:meth:`shortest_augmenting_path` |
|
|
|
|
|
Examples |
|
|
-------- |
|
|
This function is not imported in the base NetworkX namespace, so you |
|
|
have to explicitly import it from the connectivity package: |
|
|
|
|
|
>>> from networkx.algorithms.connectivity import minimum_st_edge_cut |
|
|
|
|
|
We use in this example the platonic icosahedral graph, which has edge |
|
|
connectivity 5. |
|
|
|
|
|
>>> G = nx.icosahedral_graph() |
|
|
>>> len(minimum_st_edge_cut(G, 0, 6)) |
|
|
5 |
|
|
|
|
|
If you need to compute local edge cuts on several pairs of |
|
|
nodes in the same graph, it is recommended that you reuse the |
|
|
data structures that NetworkX uses in the computation: the |
|
|
auxiliary digraph for edge connectivity, and the residual |
|
|
network for the underlying maximum flow computation. |
|
|
|
|
|
Example of how to compute local edge cuts among all pairs of |
|
|
nodes of the platonic icosahedral graph reusing the data |
|
|
structures. |
|
|
|
|
|
>>> import itertools |
|
|
>>> # You also have to explicitly import the function for |
|
|
>>> # building the auxiliary digraph from the connectivity package |
|
|
>>> from networkx.algorithms.connectivity import build_auxiliary_edge_connectivity |
|
|
>>> H = build_auxiliary_edge_connectivity(G) |
|
|
>>> # And the function for building the residual network from the |
|
|
>>> # flow package |
|
|
>>> from networkx.algorithms.flow import build_residual_network |
|
|
>>> # Note that the auxiliary digraph has an edge attribute named capacity |
|
|
>>> R = build_residual_network(H, "capacity") |
|
|
>>> result = dict.fromkeys(G, dict()) |
|
|
>>> # Reuse the auxiliary digraph and the residual network by passing them |
|
|
>>> # as parameters |
|
|
>>> for u, v in itertools.combinations(G, 2): |
|
|
... k = len(minimum_st_edge_cut(G, u, v, auxiliary=H, residual=R)) |
|
|
... result[u][v] = k |
|
|
>>> all(result[u][v] == 5 for u, v in itertools.combinations(G, 2)) |
|
|
True |
|
|
|
|
|
You can also use alternative flow algorithms for computing edge |
|
|
cuts. For instance, in dense networks the algorithm |
|
|
:meth:`shortest_augmenting_path` will usually perform better than |
|
|
the default :meth:`edmonds_karp` which is faster for sparse |
|
|
networks with highly skewed degree distributions. Alternative flow |
|
|
functions have to be explicitly imported from the flow package. |
|
|
|
|
|
>>> from networkx.algorithms.flow import shortest_augmenting_path |
|
|
>>> len(minimum_st_edge_cut(G, 0, 6, flow_func=shortest_augmenting_path)) |
|
|
5 |
|
|
|
|
|
""" |
|
|
if flow_func is None: |
|
|
flow_func = default_flow_func |
|
|
|
|
|
if auxiliary is None: |
|
|
H = build_auxiliary_edge_connectivity(G) |
|
|
else: |
|
|
H = auxiliary |
|
|
|
|
|
kwargs = {"capacity": "capacity", "flow_func": flow_func, "residual": residual} |
|
|
|
|
|
cut_value, partition = nx.minimum_cut(H, s, t, **kwargs) |
|
|
reachable, non_reachable = partition |
|
|
|
|
|
|
|
|
cutset = set() |
|
|
for u, nbrs in ((n, G[n]) for n in reachable): |
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|
cutset.update((u, v) for v in nbrs if v in non_reachable) |
|
|
|
|
|
return cutset |
|
|
|
|
|
|
|
|
@nx._dispatch( |
|
|
graphs={"G": 0, "auxiliary?": 4, "residual?": 5}, |
|
|
preserve_edge_attrs={"residual": {"capacity": float("inf")}}, |
|
|
preserve_node_attrs={"auxiliary": {"id": None}}, |
|
|
preserve_graph_attrs={"auxiliary", "residual"}, |
|
|
) |
|
|
def minimum_st_node_cut(G, s, t, flow_func=None, auxiliary=None, residual=None): |
|
|
r"""Returns a set of nodes of minimum cardinality that disconnect source |
|
|
from target in G. |
|
|
|
|
|
This function returns the set of nodes of minimum cardinality that, |
|
|
if removed, would destroy all paths among source and target in G. |
|
|
|
|
|
Parameters |
|
|
---------- |
|
|
G : NetworkX graph |
|
|
|
|
|
s : node |
|
|
Source node. |
|
|
|
|
|
t : node |
|
|
Target node. |
|
|
|
|
|
flow_func : function |
|
|
A function for computing the maximum flow among a pair of nodes. |
|
|
The function has to accept at least three parameters: a Digraph, |
|
|
a source node, and a target node. And return a residual network |
|
|
that follows NetworkX conventions (see :meth:`maximum_flow` for |
|
|
details). If flow_func is None, the default maximum flow function |
|
|
(:meth:`edmonds_karp`) is used. See below for details. The choice |
|
|
of the default function may change from version to version and |
|
|
should not be relied on. Default value: None. |
|
|
|
|
|
auxiliary : NetworkX DiGraph |
|
|
Auxiliary digraph to compute flow based node connectivity. It has |
|
|
to have a graph attribute called mapping with a dictionary mapping |
|
|
node names in G and in the auxiliary digraph. If provided |
|
|
it will be reused instead of recreated. Default value: None. |
|
|
|
|
|
residual : NetworkX DiGraph |
|
|
Residual network to compute maximum flow. If provided it will be |
|
|
reused instead of recreated. Default value: None. |
|
|
|
|
|
Returns |
|
|
------- |
|
|
cutset : set |
|
|
Set of nodes that, if removed, would destroy all paths between |
|
|
source and target in G. |
|
|
|
|
|
Examples |
|
|
-------- |
|
|
This function is not imported in the base NetworkX namespace, so you |
|
|
have to explicitly import it from the connectivity package: |
|
|
|
|
|
>>> from networkx.algorithms.connectivity import minimum_st_node_cut |
|
|
|
|
|
We use in this example the platonic icosahedral graph, which has node |
|
|
connectivity 5. |
|
|
|
|
|
>>> G = nx.icosahedral_graph() |
|
|
>>> len(minimum_st_node_cut(G, 0, 6)) |
|
|
5 |
|
|
|
|
|
If you need to compute local st cuts between several pairs of |
|
|
nodes in the same graph, it is recommended that you reuse the |
|
|
data structures that NetworkX uses in the computation: the |
|
|
auxiliary digraph for node connectivity and node cuts, and the |
|
|
residual network for the underlying maximum flow computation. |
|
|
|
|
|
Example of how to compute local st node cuts reusing the data |
|
|
structures: |
|
|
|
|
|
>>> # You also have to explicitly import the function for |
|
|
>>> # building the auxiliary digraph from the connectivity package |
|
|
>>> from networkx.algorithms.connectivity import build_auxiliary_node_connectivity |
|
|
>>> H = build_auxiliary_node_connectivity(G) |
|
|
>>> # And the function for building the residual network from the |
|
|
>>> # flow package |
|
|
>>> from networkx.algorithms.flow import build_residual_network |
|
|
>>> # Note that the auxiliary digraph has an edge attribute named capacity |
|
|
>>> R = build_residual_network(H, "capacity") |
|
|
>>> # Reuse the auxiliary digraph and the residual network by passing them |
|
|
>>> # as parameters |
|
|
>>> len(minimum_st_node_cut(G, 0, 6, auxiliary=H, residual=R)) |
|
|
5 |
|
|
|
|
|
You can also use alternative flow algorithms for computing minimum st |
|
|
node cuts. For instance, in dense networks the algorithm |
|
|
:meth:`shortest_augmenting_path` will usually perform better than |
|
|
the default :meth:`edmonds_karp` which is faster for sparse |
|
|
networks with highly skewed degree distributions. Alternative flow |
|
|
functions have to be explicitly imported from the flow package. |
|
|
|
|
|
>>> from networkx.algorithms.flow import shortest_augmenting_path |
|
|
>>> len(minimum_st_node_cut(G, 0, 6, flow_func=shortest_augmenting_path)) |
|
|
5 |
|
|
|
|
|
Notes |
|
|
----- |
|
|
This is a flow based implementation of minimum node cut. The algorithm |
|
|
is based in solving a number of maximum flow computations to determine |
|
|
the capacity of the minimum cut on an auxiliary directed network that |
|
|
corresponds to the minimum node cut of G. It handles both directed |
|
|
and undirected graphs. This implementation is based on algorithm 11 |
|
|
in [1]_. |
|
|
|
|
|
See also |
|
|
-------- |
|
|
:meth:`minimum_node_cut` |
|
|
:meth:`minimum_edge_cut` |
|
|
:meth:`stoer_wagner` |
|
|
:meth:`node_connectivity` |
|
|
:meth:`edge_connectivity` |
|
|
:meth:`maximum_flow` |
|
|
:meth:`edmonds_karp` |
|
|
:meth:`preflow_push` |
|
|
:meth:`shortest_augmenting_path` |
|
|
|
|
|
References |
|
|
---------- |
|
|
.. [1] Abdol-Hossein Esfahanian. Connectivity Algorithms. |
|
|
http://www.cse.msu.edu/~cse835/Papers/Graph_connectivity_revised.pdf |
|
|
|
|
|
""" |
|
|
if auxiliary is None: |
|
|
H = build_auxiliary_node_connectivity(G) |
|
|
else: |
|
|
H = auxiliary |
|
|
|
|
|
mapping = H.graph.get("mapping", None) |
|
|
if mapping is None: |
|
|
raise nx.NetworkXError("Invalid auxiliary digraph.") |
|
|
if G.has_edge(s, t) or G.has_edge(t, s): |
|
|
return {} |
|
|
kwargs = {"flow_func": flow_func, "residual": residual, "auxiliary": H} |
|
|
|
|
|
|
|
|
|
|
|
edge_cut = minimum_st_edge_cut(H, f"{mapping[s]}B", f"{mapping[t]}A", **kwargs) |
|
|
|
|
|
node_cut = {H.nodes[node]["id"] for edge in edge_cut for node in edge} |
|
|
return node_cut - {s, t} |
|
|
|
|
|
|
|
|
@nx._dispatch |
|
|
def minimum_node_cut(G, s=None, t=None, flow_func=None): |
|
|
r"""Returns a set of nodes of minimum cardinality that disconnects G. |
|
|
|
|
|
If source and target nodes are provided, this function returns the |
|
|
set of nodes of minimum cardinality that, if removed, would destroy |
|
|
all paths among source and target in G. If not, it returns a set |
|
|
of nodes of minimum cardinality that disconnects G. |
|
|
|
|
|
Parameters |
|
|
---------- |
|
|
G : NetworkX graph |
|
|
|
|
|
s : node |
|
|
Source node. Optional. Default value: None. |
|
|
|
|
|
t : node |
|
|
Target node. Optional. Default value: None. |
|
|
|
|
|
flow_func : function |
|
|
A function for computing the maximum flow among a pair of nodes. |
|
|
The function has to accept at least three parameters: a Digraph, |
|
|
a source node, and a target node. And return a residual network |
|
|
that follows NetworkX conventions (see :meth:`maximum_flow` for |
|
|
details). If flow_func is None, the default maximum flow function |
|
|
(:meth:`edmonds_karp`) is used. See below for details. The |
|
|
choice of the default function may change from version |
|
|
to version and should not be relied on. Default value: None. |
|
|
|
|
|
Returns |
|
|
------- |
|
|
cutset : set |
|
|
Set of nodes that, if removed, would disconnect G. If source |
|
|
and target nodes are provided, the set contains the nodes that |
|
|
if removed, would destroy all paths between source and target. |
|
|
|
|
|
Examples |
|
|
-------- |
|
|
>>> # Platonic icosahedral graph has node connectivity 5 |
|
|
>>> G = nx.icosahedral_graph() |
|
|
>>> node_cut = nx.minimum_node_cut(G) |
|
|
>>> len(node_cut) |
|
|
5 |
|
|
|
|
|
You can use alternative flow algorithms for the underlying maximum |
|
|
flow computation. In dense networks the algorithm |
|
|
:meth:`shortest_augmenting_path` will usually perform better |
|
|
than the default :meth:`edmonds_karp`, which is faster for |
|
|
sparse networks with highly skewed degree distributions. Alternative |
|
|
flow functions have to be explicitly imported from the flow package. |
|
|
|
|
|
>>> from networkx.algorithms.flow import shortest_augmenting_path |
|
|
>>> node_cut == nx.minimum_node_cut(G, flow_func=shortest_augmenting_path) |
|
|
True |
|
|
|
|
|
If you specify a pair of nodes (source and target) as parameters, |
|
|
this function returns a local st node cut. |
|
|
|
|
|
>>> len(nx.minimum_node_cut(G, 3, 7)) |
|
|
5 |
|
|
|
|
|
If you need to perform several local st cuts among different |
|
|
pairs of nodes on the same graph, it is recommended that you reuse |
|
|
the data structures used in the maximum flow computations. See |
|
|
:meth:`minimum_st_node_cut` for details. |
|
|
|
|
|
Notes |
|
|
----- |
|
|
This is a flow based implementation of minimum node cut. The algorithm |
|
|
is based in solving a number of maximum flow computations to determine |
|
|
the capacity of the minimum cut on an auxiliary directed network that |
|
|
corresponds to the minimum node cut of G. It handles both directed |
|
|
and undirected graphs. This implementation is based on algorithm 11 |
|
|
in [1]_. |
|
|
|
|
|
See also |
|
|
-------- |
|
|
:meth:`minimum_st_node_cut` |
|
|
:meth:`minimum_cut` |
|
|
:meth:`minimum_edge_cut` |
|
|
:meth:`stoer_wagner` |
|
|
:meth:`node_connectivity` |
|
|
:meth:`edge_connectivity` |
|
|
:meth:`maximum_flow` |
|
|
:meth:`edmonds_karp` |
|
|
:meth:`preflow_push` |
|
|
:meth:`shortest_augmenting_path` |
|
|
|
|
|
References |
|
|
---------- |
|
|
.. [1] Abdol-Hossein Esfahanian. Connectivity Algorithms. |
|
|
http://www.cse.msu.edu/~cse835/Papers/Graph_connectivity_revised.pdf |
|
|
|
|
|
""" |
|
|
if (s is not None and t is None) or (s is None and t is not None): |
|
|
raise nx.NetworkXError("Both source and target must be specified.") |
|
|
|
|
|
|
|
|
if s is not None and t is not None: |
|
|
if s not in G: |
|
|
raise nx.NetworkXError(f"node {s} not in graph") |
|
|
if t not in G: |
|
|
raise nx.NetworkXError(f"node {t} not in graph") |
|
|
return minimum_st_node_cut(G, s, t, flow_func=flow_func) |
|
|
|
|
|
|
|
|
|
|
|
if G.is_directed(): |
|
|
if not nx.is_weakly_connected(G): |
|
|
raise nx.NetworkXError("Input graph is not connected") |
|
|
iter_func = itertools.permutations |
|
|
|
|
|
def neighbors(v): |
|
|
return itertools.chain.from_iterable([G.predecessors(v), G.successors(v)]) |
|
|
|
|
|
else: |
|
|
if not nx.is_connected(G): |
|
|
raise nx.NetworkXError("Input graph is not connected") |
|
|
iter_func = itertools.combinations |
|
|
neighbors = G.neighbors |
|
|
|
|
|
|
|
|
H = build_auxiliary_node_connectivity(G) |
|
|
R = build_residual_network(H, "capacity") |
|
|
kwargs = {"flow_func": flow_func, "auxiliary": H, "residual": R} |
|
|
|
|
|
|
|
|
v = min(G, key=G.degree) |
|
|
|
|
|
min_cut = set(G[v]) |
|
|
|
|
|
for w in set(G) - set(neighbors(v)) - {v}: |
|
|
this_cut = minimum_st_node_cut(G, v, w, **kwargs) |
|
|
if len(min_cut) >= len(this_cut): |
|
|
min_cut = this_cut |
|
|
|
|
|
for x, y in iter_func(neighbors(v), 2): |
|
|
if y in G[x]: |
|
|
continue |
|
|
this_cut = minimum_st_node_cut(G, x, y, **kwargs) |
|
|
if len(min_cut) >= len(this_cut): |
|
|
min_cut = this_cut |
|
|
|
|
|
return min_cut |
|
|
|
|
|
|
|
|
@nx._dispatch |
|
|
def minimum_edge_cut(G, s=None, t=None, flow_func=None): |
|
|
r"""Returns a set of edges of minimum cardinality that disconnects G. |
|
|
|
|
|
If source and target nodes are provided, this function returns the |
|
|
set of edges of minimum cardinality that, if removed, would break |
|
|
all paths among source and target in G. If not, it returns a set of |
|
|
edges of minimum cardinality that disconnects G. |
|
|
|
|
|
Parameters |
|
|
---------- |
|
|
G : NetworkX graph |
|
|
|
|
|
s : node |
|
|
Source node. Optional. Default value: None. |
|
|
|
|
|
t : node |
|
|
Target node. Optional. Default value: None. |
|
|
|
|
|
flow_func : function |
|
|
A function for computing the maximum flow among a pair of nodes. |
|
|
The function has to accept at least three parameters: a Digraph, |
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a source node, and a target node. And return a residual network |
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that follows NetworkX conventions (see :meth:`maximum_flow` for |
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details). If flow_func is None, the default maximum flow function |
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(:meth:`edmonds_karp`) is used. See below for details. The |
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choice of the default function may change from version |
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to version and should not be relied on. Default value: None. |
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Returns |
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------- |
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cutset : set |
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Set of edges that, if removed, would disconnect G. If source |
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and target nodes are provided, the set contains the edges that |
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if removed, would destroy all paths between source and target. |
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Examples |
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-------- |
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>>> # Platonic icosahedral graph has edge connectivity 5 |
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>>> G = nx.icosahedral_graph() |
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>>> len(nx.minimum_edge_cut(G)) |
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5 |
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You can use alternative flow algorithms for the underlying |
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maximum flow computation. In dense networks the algorithm |
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:meth:`shortest_augmenting_path` will usually perform better |
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than the default :meth:`edmonds_karp`, which is faster for |
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sparse networks with highly skewed degree distributions. |
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Alternative flow functions have to be explicitly imported |
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from the flow package. |
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>>> from networkx.algorithms.flow import shortest_augmenting_path |
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>>> len(nx.minimum_edge_cut(G, flow_func=shortest_augmenting_path)) |
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5 |
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If you specify a pair of nodes (source and target) as parameters, |
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this function returns the value of local edge connectivity. |
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>>> nx.edge_connectivity(G, 3, 7) |
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5 |
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If you need to perform several local computations among different |
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pairs of nodes on the same graph, it is recommended that you reuse |
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the data structures used in the maximum flow computations. See |
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:meth:`local_edge_connectivity` for details. |
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Notes |
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----- |
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This is a flow based implementation of minimum edge cut. For |
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undirected graphs the algorithm works by finding a 'small' dominating |
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set of nodes of G (see algorithm 7 in [1]_) and computing the maximum |
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flow between an arbitrary node in the dominating set and the rest of |
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nodes in it. This is an implementation of algorithm 6 in [1]_. For |
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directed graphs, the algorithm does n calls to the max flow function. |
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The function raises an error if the directed graph is not weakly |
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connected and returns an empty set if it is weakly connected. |
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It is an implementation of algorithm 8 in [1]_. |
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See also |
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-------- |
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:meth:`minimum_st_edge_cut` |
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:meth:`minimum_node_cut` |
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:meth:`stoer_wagner` |
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:meth:`node_connectivity` |
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:meth:`edge_connectivity` |
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:meth:`maximum_flow` |
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:meth:`edmonds_karp` |
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:meth:`preflow_push` |
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:meth:`shortest_augmenting_path` |
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References |
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---------- |
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.. [1] Abdol-Hossein Esfahanian. Connectivity Algorithms. |
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http://www.cse.msu.edu/~cse835/Papers/Graph_connectivity_revised.pdf |
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""" |
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if (s is not None and t is None) or (s is None and t is not None): |
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raise nx.NetworkXError("Both source and target must be specified.") |
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H = build_auxiliary_edge_connectivity(G) |
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R = build_residual_network(H, "capacity") |
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kwargs = {"flow_func": flow_func, "residual": R, "auxiliary": H} |
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if s is not None and t is not None: |
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if s not in G: |
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raise nx.NetworkXError(f"node {s} not in graph") |
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if t not in G: |
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raise nx.NetworkXError(f"node {t} not in graph") |
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return minimum_st_edge_cut(H, s, t, **kwargs) |
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if G.is_directed(): |
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if not nx.is_weakly_connected(G): |
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raise nx.NetworkXError("Input graph is not connected") |
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node = min(G, key=G.degree) |
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min_cut = set(G.edges(node)) |
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nodes = list(G) |
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n = len(nodes) |
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for i in range(n): |
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try: |
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this_cut = minimum_st_edge_cut(H, nodes[i], nodes[i + 1], **kwargs) |
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if len(this_cut) <= len(min_cut): |
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min_cut = this_cut |
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except IndexError: |
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this_cut = minimum_st_edge_cut(H, nodes[i], nodes[0], **kwargs) |
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if len(this_cut) <= len(min_cut): |
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min_cut = this_cut |
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return min_cut |
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else: |
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if not nx.is_connected(G): |
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|
raise nx.NetworkXError("Input graph is not connected") |
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|
node = min(G, key=G.degree) |
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|
min_cut = set(G.edges(node)) |
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|
for node in G: |
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|
D = nx.dominating_set(G, start_with=node) |
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|
v = D.pop() |
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|
if D: |
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|
break |
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|
else: |
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return min_cut |
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|
for w in D: |
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|
this_cut = minimum_st_edge_cut(H, v, w, **kwargs) |
|
|
if len(this_cut) <= len(min_cut): |
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|
min_cut = this_cut |
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|
return min_cut |
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