224 lines
8 KiB
Python
224 lines
8 KiB
Python
"""
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Moody and White algorithm for k-components
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"""
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from collections import defaultdict
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from itertools import combinations
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from operator import itemgetter
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import networkx as nx
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from networkx.utils import not_implemented_for
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# Define the default maximum flow function.
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from networkx.algorithms.flow import edmonds_karp
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default_flow_func = edmonds_karp
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__all__ = ["k_components"]
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@not_implemented_for("directed")
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def k_components(G, flow_func=None):
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r"""Returns the k-component structure of a graph G.
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A `k`-component is a maximal subgraph of a graph G that has, at least,
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node connectivity `k`: we need to remove at least `k` nodes to break it
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into more components. `k`-components have an inherent hierarchical
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structure because they are nested in terms of connectivity: a connected
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graph can contain several 2-components, each of which can contain
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one or more 3-components, and so forth.
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Parameters
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----------
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G : NetworkX graph
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flow_func : function
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Function to perform the underlying flow computations. Default value
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:meth:`edmonds_karp`. This function performs better in sparse graphs with
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right tailed degree distributions. :meth:`shortest_augmenting_path` will
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perform better in denser graphs.
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Returns
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-------
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k_components : dict
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Dictionary with all connectivity levels `k` in the input Graph as keys
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and a list of sets of nodes that form a k-component of level `k` as
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values.
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Raises
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------
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NetworkXNotImplemented
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If the input graph is directed.
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Examples
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--------
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>>> # Petersen graph has 10 nodes and it is triconnected, thus all
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>>> # nodes are in a single component on all three connectivity levels
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>>> G = nx.petersen_graph()
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>>> k_components = nx.k_components(G)
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Notes
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-----
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Moody and White [1]_ (appendix A) provide an algorithm for identifying
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k-components in a graph, which is based on Kanevsky's algorithm [2]_
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for finding all minimum-size node cut-sets of a graph (implemented in
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:meth:`all_node_cuts` function):
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1. Compute node connectivity, k, of the input graph G.
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2. Identify all k-cutsets at the current level of connectivity using
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Kanevsky's algorithm.
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3. Generate new graph components based on the removal of
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these cutsets. Nodes in a cutset belong to both sides
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of the induced cut.
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4. If the graph is neither complete nor trivial, return to 1;
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else end.
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This implementation also uses some heuristics (see [3]_ for details)
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to speed up the computation.
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See also
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--------
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node_connectivity
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all_node_cuts
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biconnected_components : special case of this function when k=2
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k_edge_components : similar to this function, but uses edge-connectivity
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instead of node-connectivity
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References
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----------
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.. [1] Moody, J. and D. White (2003). Social cohesion and embeddedness:
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A hierarchical conception of social groups.
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American Sociological Review 68(1), 103--28.
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http://www2.asanet.org/journals/ASRFeb03MoodyWhite.pdf
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.. [2] Kanevsky, A. (1993). Finding all minimum-size separating vertex
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sets in a graph. Networks 23(6), 533--541.
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http://onlinelibrary.wiley.com/doi/10.1002/net.3230230604/abstract
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.. [3] Torrents, J. and F. Ferraro (2015). Structural Cohesion:
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Visualization and Heuristics for Fast Computation.
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https://arxiv.org/pdf/1503.04476v1
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"""
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# Dictionary with connectivity level (k) as keys and a list of
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# sets of nodes that form a k-component as values. Note that
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# k-compoents can overlap (but only k - 1 nodes).
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k_components = defaultdict(list)
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# Define default flow function
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if flow_func is None:
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flow_func = default_flow_func
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# Bicomponents as a base to check for higher order k-components
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for component in nx.connected_components(G):
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# isolated nodes have connectivity 0
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comp = set(component)
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if len(comp) > 1:
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k_components[1].append(comp)
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bicomponents = [G.subgraph(c) for c in nx.biconnected_components(G)]
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for bicomponent in bicomponents:
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bicomp = set(bicomponent)
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# avoid considering dyads as bicomponents
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if len(bicomp) > 2:
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k_components[2].append(bicomp)
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for B in bicomponents:
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if len(B) <= 2:
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continue
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k = nx.node_connectivity(B, flow_func=flow_func)
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if k > 2:
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k_components[k].append(set(B))
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# Perform cuts in a DFS like order.
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cuts = list(nx.all_node_cuts(B, k=k, flow_func=flow_func))
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stack = [(k, _generate_partition(B, cuts, k))]
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while stack:
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(parent_k, partition) = stack[-1]
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try:
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nodes = next(partition)
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C = B.subgraph(nodes)
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this_k = nx.node_connectivity(C, flow_func=flow_func)
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if this_k > parent_k and this_k > 2:
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k_components[this_k].append(set(C))
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cuts = list(nx.all_node_cuts(C, k=this_k, flow_func=flow_func))
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if cuts:
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stack.append((this_k, _generate_partition(C, cuts, this_k)))
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except StopIteration:
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stack.pop()
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# This is necessary because k-components may only be reported at their
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# maximum k level. But we want to return a dictionary in which keys are
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# connectivity levels and values list of sets of components, without
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# skipping any connectivity level. Also, it's possible that subsets of
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# an already detected k-component appear at a level k. Checking for this
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# in the while loop above penalizes the common case. Thus we also have to
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# _consolidate all connectivity levels in _reconstruct_k_components.
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return _reconstruct_k_components(k_components)
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def _consolidate(sets, k):
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"""Merge sets that share k or more elements.
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See: http://rosettacode.org/wiki/Set_consolidation
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The iterative python implementation posted there is
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faster than this because of the overhead of building a
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Graph and calling nx.connected_components, but it's not
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clear for us if we can use it in NetworkX because there
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is no licence for the code.
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"""
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G = nx.Graph()
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nodes = {i: s for i, s in enumerate(sets)}
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G.add_nodes_from(nodes)
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G.add_edges_from(
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(u, v) for u, v in combinations(nodes, 2) if len(nodes[u] & nodes[v]) >= k
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)
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for component in nx.connected_components(G):
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yield set.union(*[nodes[n] for n in component])
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def _generate_partition(G, cuts, k):
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def has_nbrs_in_partition(G, node, partition):
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for n in G[node]:
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if n in partition:
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return True
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return False
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components = []
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nodes = {n for n, d in G.degree() if d > k} - {n for cut in cuts for n in cut}
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H = G.subgraph(nodes)
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for cc in nx.connected_components(H):
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component = set(cc)
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for cut in cuts:
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for node in cut:
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if has_nbrs_in_partition(G, node, cc):
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component.add(node)
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if len(component) < G.order():
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components.append(component)
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yield from _consolidate(components, k + 1)
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def _reconstruct_k_components(k_comps):
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result = dict()
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max_k = max(k_comps)
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for k in reversed(range(1, max_k + 1)):
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if k == max_k:
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result[k] = list(_consolidate(k_comps[k], k))
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elif k not in k_comps:
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result[k] = list(_consolidate(result[k + 1], k))
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else:
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nodes_at_k = set.union(*k_comps[k])
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to_add = [c for c in result[k + 1] if any(n not in nodes_at_k for n in c)]
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if to_add:
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result[k] = list(_consolidate(k_comps[k] + to_add, k))
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else:
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result[k] = list(_consolidate(k_comps[k], k))
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return result
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def build_k_number_dict(kcomps):
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result = {}
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for k, comps in sorted(kcomps.items(), key=itemgetter(0)):
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for comp in comps:
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for node in comp:
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result[node] = k
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return result
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