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| """Functions for computing and verifying matchings in a graph.""" | |
| from collections import Counter | |
| from itertools import combinations, repeat | |
| import networkx as nx | |
| from networkx.utils import not_implemented_for | |
| __all__ = [ | |
| "is_matching", | |
| "is_maximal_matching", | |
| "is_perfect_matching", | |
| "max_weight_matching", | |
| "min_weight_matching", | |
| "maximal_matching", | |
| ] | |
| def maximal_matching(G): | |
| r"""Find a maximal matching in the graph. | |
| A matching is a subset of edges in which no node occurs more than once. | |
| A maximal matching cannot add more edges and still be a matching. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| Undirected graph | |
| Returns | |
| ------- | |
| matching : set | |
| A maximal matching of the graph. | |
| Examples | |
| -------- | |
| >>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (2, 4), (3, 5), (4, 5)]) | |
| >>> sorted(nx.maximal_matching(G)) | |
| [(1, 2), (3, 5)] | |
| Notes | |
| ----- | |
| The algorithm greedily selects a maximal matching M of the graph G | |
| (i.e. no superset of M exists). It runs in $O(|E|)$ time. | |
| """ | |
| matching = set() | |
| nodes = set() | |
| for edge in G.edges(): | |
| # If the edge isn't covered, add it to the matching | |
| # then remove neighborhood of u and v from consideration. | |
| u, v = edge | |
| if u not in nodes and v not in nodes and u != v: | |
| matching.add(edge) | |
| nodes.update(edge) | |
| return matching | |
| def matching_dict_to_set(matching): | |
| """Converts matching dict format to matching set format | |
| Converts a dictionary representing a matching (as returned by | |
| :func:`max_weight_matching`) to a set representing a matching (as | |
| returned by :func:`maximal_matching`). | |
| In the definition of maximal matching adopted by NetworkX, | |
| self-loops are not allowed, so the provided dictionary is expected | |
| to never have any mapping from a key to itself. However, the | |
| dictionary is expected to have mirrored key/value pairs, for | |
| example, key ``u`` with value ``v`` and key ``v`` with value ``u``. | |
| """ | |
| edges = set() | |
| for edge in matching.items(): | |
| u, v = edge | |
| if (v, u) in edges or edge in edges: | |
| continue | |
| if u == v: | |
| raise nx.NetworkXError(f"Selfloops cannot appear in matchings {edge}") | |
| edges.add(edge) | |
| return edges | |
| def is_matching(G, matching): | |
| """Return True if ``matching`` is a valid matching of ``G`` | |
| A *matching* in a graph is a set of edges in which no two distinct | |
| edges share a common endpoint. Each node is incident to at most one | |
| edge in the matching. The edges are said to be independent. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| matching : dict or set | |
| A dictionary or set representing a matching. If a dictionary, it | |
| must have ``matching[u] == v`` and ``matching[v] == u`` for each | |
| edge ``(u, v)`` in the matching. If a set, it must have elements | |
| of the form ``(u, v)``, where ``(u, v)`` is an edge in the | |
| matching. | |
| Returns | |
| ------- | |
| bool | |
| Whether the given set or dictionary represents a valid matching | |
| in the graph. | |
| Raises | |
| ------ | |
| NetworkXError | |
| If the proposed matching has an edge to a node not in G. | |
| Or if the matching is not a collection of 2-tuple edges. | |
| Examples | |
| -------- | |
| >>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (2, 4), (3, 5), (4, 5)]) | |
| >>> nx.is_maximal_matching(G, {1: 3, 2: 4}) # using dict to represent matching | |
| True | |
| >>> nx.is_matching(G, {(1, 3), (2, 4)}) # using set to represent matching | |
| True | |
| """ | |
| if isinstance(matching, dict): | |
| matching = matching_dict_to_set(matching) | |
| nodes = set() | |
| for edge in matching: | |
| if len(edge) != 2: | |
| raise nx.NetworkXError(f"matching has non-2-tuple edge {edge}") | |
| u, v = edge | |
| if u not in G or v not in G: | |
| raise nx.NetworkXError(f"matching contains edge {edge} with node not in G") | |
| if u == v: | |
| return False | |
| if not G.has_edge(u, v): | |
| return False | |
| if u in nodes or v in nodes: | |
| return False | |
| nodes.update(edge) | |
| return True | |
| def is_maximal_matching(G, matching): | |
| """Return True if ``matching`` is a maximal matching of ``G`` | |
| A *maximal matching* in a graph is a matching in which adding any | |
| edge would cause the set to no longer be a valid matching. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| matching : dict or set | |
| A dictionary or set representing a matching. If a dictionary, it | |
| must have ``matching[u] == v`` and ``matching[v] == u`` for each | |
| edge ``(u, v)`` in the matching. If a set, it must have elements | |
| of the form ``(u, v)``, where ``(u, v)`` is an edge in the | |
| matching. | |
| Returns | |
| ------- | |
| bool | |
| Whether the given set or dictionary represents a valid maximal | |
| matching in the graph. | |
| Examples | |
| -------- | |
| >>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (3, 4), (3, 5)]) | |
| >>> nx.is_maximal_matching(G, {(1, 2), (3, 4)}) | |
| True | |
| """ | |
| if isinstance(matching, dict): | |
| matching = matching_dict_to_set(matching) | |
| # If the given set is not a matching, then it is not a maximal matching. | |
| edges = set() | |
| nodes = set() | |
| for edge in matching: | |
| if len(edge) != 2: | |
| raise nx.NetworkXError(f"matching has non-2-tuple edge {edge}") | |
| u, v = edge | |
| if u not in G or v not in G: | |
| raise nx.NetworkXError(f"matching contains edge {edge} with node not in G") | |
| if u == v: | |
| return False | |
| if not G.has_edge(u, v): | |
| return False | |
| if u in nodes or v in nodes: | |
| return False | |
| nodes.update(edge) | |
| edges.add(edge) | |
| edges.add((v, u)) | |
| # A matching is maximal if adding any new edge from G to it | |
| # causes the resulting set to match some node twice. | |
| # Be careful to check for adding selfloops | |
| for u, v in G.edges: | |
| if (u, v) not in edges: | |
| # could add edge (u, v) to edges and have a bigger matching | |
| if u not in nodes and v not in nodes and u != v: | |
| return False | |
| return True | |
| def is_perfect_matching(G, matching): | |
| """Return True if ``matching`` is a perfect matching for ``G`` | |
| A *perfect matching* in a graph is a matching in which exactly one edge | |
| is incident upon each vertex. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| matching : dict or set | |
| A dictionary or set representing a matching. If a dictionary, it | |
| must have ``matching[u] == v`` and ``matching[v] == u`` for each | |
| edge ``(u, v)`` in the matching. If a set, it must have elements | |
| of the form ``(u, v)``, where ``(u, v)`` is an edge in the | |
| matching. | |
| Returns | |
| ------- | |
| bool | |
| Whether the given set or dictionary represents a valid perfect | |
| matching in the graph. | |
| Examples | |
| -------- | |
| >>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (2, 4), (3, 5), (4, 5), (4, 6)]) | |
| >>> my_match = {1: 2, 3: 5, 4: 6} | |
| >>> nx.is_perfect_matching(G, my_match) | |
| True | |
| """ | |
| if isinstance(matching, dict): | |
| matching = matching_dict_to_set(matching) | |
| nodes = set() | |
| for edge in matching: | |
| if len(edge) != 2: | |
| raise nx.NetworkXError(f"matching has non-2-tuple edge {edge}") | |
| u, v = edge | |
| if u not in G or v not in G: | |
| raise nx.NetworkXError(f"matching contains edge {edge} with node not in G") | |
| if u == v: | |
| return False | |
| if not G.has_edge(u, v): | |
| return False | |
| if u in nodes or v in nodes: | |
| return False | |
| nodes.update(edge) | |
| return len(nodes) == len(G) | |
| def min_weight_matching(G, weight="weight"): | |
| """Computing a minimum-weight maximal matching of G. | |
| Use the maximum-weight algorithm with edge weights subtracted | |
| from the maximum weight of all edges. | |
| A matching is a subset of edges in which no node occurs more than once. | |
| The weight of a matching is the sum of the weights of its edges. | |
| A maximal matching cannot add more edges and still be a matching. | |
| The cardinality of a matching is the number of matched edges. | |
| This method replaces the edge weights with 1 plus the maximum edge weight | |
| minus the original edge weight. | |
| new_weight = (max_weight + 1) - edge_weight | |
| then runs :func:`max_weight_matching` with the new weights. | |
| The max weight matching with these new weights corresponds | |
| to the min weight matching using the original weights. | |
| Adding 1 to the max edge weight keeps all edge weights positive | |
| and as integers if they started as integers. | |
| You might worry that adding 1 to each weight would make the algorithm | |
| favor matchings with more edges. But we use the parameter | |
| `maxcardinality=True` in `max_weight_matching` to ensure that the | |
| number of edges in the competing matchings are the same and thus | |
| the optimum does not change due to changes in the number of edges. | |
| Read the documentation of `max_weight_matching` for more information. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| Undirected graph | |
| weight: string, optional (default='weight') | |
| Edge data key corresponding to the edge weight. | |
| If key not found, uses 1 as weight. | |
| Returns | |
| ------- | |
| matching : set | |
| A minimal weight matching of the graph. | |
| See Also | |
| -------- | |
| max_weight_matching | |
| """ | |
| if len(G.edges) == 0: | |
| return max_weight_matching(G, maxcardinality=True, weight=weight) | |
| G_edges = G.edges(data=weight, default=1) | |
| max_weight = 1 + max(w for _, _, w in G_edges) | |
| InvG = nx.Graph() | |
| edges = ((u, v, max_weight - w) for u, v, w in G_edges) | |
| InvG.add_weighted_edges_from(edges, weight=weight) | |
| return max_weight_matching(InvG, maxcardinality=True, weight=weight) | |
| def max_weight_matching(G, maxcardinality=False, weight="weight"): | |
| """Compute a maximum-weighted matching of G. | |
| A matching is a subset of edges in which no node occurs more than once. | |
| The weight of a matching is the sum of the weights of its edges. | |
| A maximal matching cannot add more edges and still be a matching. | |
| The cardinality of a matching is the number of matched edges. | |
| Parameters | |
| ---------- | |
| G : NetworkX graph | |
| Undirected graph | |
| maxcardinality: bool, optional (default=False) | |
| If maxcardinality is True, compute the maximum-cardinality matching | |
| with maximum weight among all maximum-cardinality matchings. | |
| weight: string, optional (default='weight') | |
| Edge data key corresponding to the edge weight. | |
| If key not found, uses 1 as weight. | |
| Returns | |
| ------- | |
| matching : set | |
| A maximal matching of the graph. | |
| Examples | |
| -------- | |
| >>> G = nx.Graph() | |
| >>> edges = [(1, 2, 6), (1, 3, 2), (2, 3, 1), (2, 4, 7), (3, 5, 9), (4, 5, 3)] | |
| >>> G.add_weighted_edges_from(edges) | |
| >>> sorted(nx.max_weight_matching(G)) | |
| [(2, 4), (5, 3)] | |
| Notes | |
| ----- | |
| If G has edges with weight attributes the edge data are used as | |
| weight values else the weights are assumed to be 1. | |
| This function takes time O(number_of_nodes ** 3). | |
| If all edge weights are integers, the algorithm uses only integer | |
| computations. If floating point weights are used, the algorithm | |
| could return a slightly suboptimal matching due to numeric | |
| precision errors. | |
| This method is based on the "blossom" method for finding augmenting | |
| paths and the "primal-dual" method for finding a matching of maximum | |
| weight, both methods invented by Jack Edmonds [1]_. | |
| Bipartite graphs can also be matched using the functions present in | |
| :mod:`networkx.algorithms.bipartite.matching`. | |
| References | |
| ---------- | |
| .. [1] "Efficient Algorithms for Finding Maximum Matching in Graphs", | |
| Zvi Galil, ACM Computing Surveys, 1986. | |
| """ | |
| # | |
| # The algorithm is taken from "Efficient Algorithms for Finding Maximum | |
| # Matching in Graphs" by Zvi Galil, ACM Computing Surveys, 1986. | |
| # It is based on the "blossom" method for finding augmenting paths and | |
| # the "primal-dual" method for finding a matching of maximum weight, both | |
| # methods invented by Jack Edmonds. | |
| # | |
| # A C program for maximum weight matching by Ed Rothberg was used | |
| # extensively to validate this new code. | |
| # | |
| # Many terms used in the code comments are explained in the paper | |
| # by Galil. You will probably need the paper to make sense of this code. | |
| # | |
| class NoNode: | |
| """Dummy value which is different from any node.""" | |
| class Blossom: | |
| """Representation of a non-trivial blossom or sub-blossom.""" | |
| __slots__ = ["childs", "edges", "mybestedges"] | |
| # b.childs is an ordered list of b's sub-blossoms, starting with | |
| # the base and going round the blossom. | |
| # b.edges is the list of b's connecting edges, such that | |
| # b.edges[i] = (v, w) where v is a vertex in b.childs[i] | |
| # and w is a vertex in b.childs[wrap(i+1)]. | |
| # If b is a top-level S-blossom, | |
| # b.mybestedges is a list of least-slack edges to neighbouring | |
| # S-blossoms, or None if no such list has been computed yet. | |
| # This is used for efficient computation of delta3. | |
| # Generate the blossom's leaf vertices. | |
| def leaves(self): | |
| stack = [*self.childs] | |
| while stack: | |
| t = stack.pop() | |
| if isinstance(t, Blossom): | |
| stack.extend(t.childs) | |
| else: | |
| yield t | |
| # Get a list of vertices. | |
| gnodes = list(G) | |
| if not gnodes: | |
| return set() # don't bother with empty graphs | |
| # Find the maximum edge weight. | |
| maxweight = 0 | |
| allinteger = True | |
| for i, j, d in G.edges(data=True): | |
| wt = d.get(weight, 1) | |
| if i != j and wt > maxweight: | |
| maxweight = wt | |
| allinteger = allinteger and (str(type(wt)).split("'")[1] in ("int", "long")) | |
| # If v is a matched vertex, mate[v] is its partner vertex. | |
| # If v is a single vertex, v does not occur as a key in mate. | |
| # Initially all vertices are single; updated during augmentation. | |
| mate = {} | |
| # If b is a top-level blossom, | |
| # label.get(b) is None if b is unlabeled (free), | |
| # 1 if b is an S-blossom, | |
| # 2 if b is a T-blossom. | |
| # The label of a vertex is found by looking at the label of its top-level | |
| # containing blossom. | |
| # If v is a vertex inside a T-blossom, label[v] is 2 iff v is reachable | |
| # from an S-vertex outside the blossom. | |
| # Labels are assigned during a stage and reset after each augmentation. | |
| label = {} | |
| # If b is a labeled top-level blossom, | |
| # labeledge[b] = (v, w) is the edge through which b obtained its label | |
| # such that w is a vertex in b, or None if b's base vertex is single. | |
| # If w is a vertex inside a T-blossom and label[w] == 2, | |
| # labeledge[w] = (v, w) is an edge through which w is reachable from | |
| # outside the blossom. | |
| labeledge = {} | |
| # If v is a vertex, inblossom[v] is the top-level blossom to which v | |
| # belongs. | |
| # If v is a top-level vertex, inblossom[v] == v since v is itself | |
| # a (trivial) top-level blossom. | |
| # Initially all vertices are top-level trivial blossoms. | |
| inblossom = dict(zip(gnodes, gnodes)) | |
| # If b is a sub-blossom, | |
| # blossomparent[b] is its immediate parent (sub-)blossom. | |
| # If b is a top-level blossom, blossomparent[b] is None. | |
| blossomparent = dict(zip(gnodes, repeat(None))) | |
| # If b is a (sub-)blossom, | |
| # blossombase[b] is its base VERTEX (i.e. recursive sub-blossom). | |
| blossombase = dict(zip(gnodes, gnodes)) | |
| # If w is a free vertex (or an unreached vertex inside a T-blossom), | |
| # bestedge[w] = (v, w) is the least-slack edge from an S-vertex, | |
| # or None if there is no such edge. | |
| # If b is a (possibly trivial) top-level S-blossom, | |
| # bestedge[b] = (v, w) is the least-slack edge to a different S-blossom | |
| # (v inside b), or None if there is no such edge. | |
| # This is used for efficient computation of delta2 and delta3. | |
| bestedge = {} | |
| # If v is a vertex, | |
| # dualvar[v] = 2 * u(v) where u(v) is the v's variable in the dual | |
| # optimization problem (if all edge weights are integers, multiplication | |
| # by two ensures that all values remain integers throughout the algorithm). | |
| # Initially, u(v) = maxweight / 2. | |
| dualvar = dict(zip(gnodes, repeat(maxweight))) | |
| # If b is a non-trivial blossom, | |
| # blossomdual[b] = z(b) where z(b) is b's variable in the dual | |
| # optimization problem. | |
| blossomdual = {} | |
| # If (v, w) in allowedge or (w, v) in allowedg, then the edge | |
| # (v, w) is known to have zero slack in the optimization problem; | |
| # otherwise the edge may or may not have zero slack. | |
| allowedge = {} | |
| # Queue of newly discovered S-vertices. | |
| queue = [] | |
| # Return 2 * slack of edge (v, w) (does not work inside blossoms). | |
| def slack(v, w): | |
| return dualvar[v] + dualvar[w] - 2 * G[v][w].get(weight, 1) | |
| # Assign label t to the top-level blossom containing vertex w, | |
| # coming through an edge from vertex v. | |
| def assignLabel(w, t, v): | |
| b = inblossom[w] | |
| assert label.get(w) is None and label.get(b) is None | |
| label[w] = label[b] = t | |
| if v is not None: | |
| labeledge[w] = labeledge[b] = (v, w) | |
| else: | |
| labeledge[w] = labeledge[b] = None | |
| bestedge[w] = bestedge[b] = None | |
| if t == 1: | |
| # b became an S-vertex/blossom; add it(s vertices) to the queue. | |
| if isinstance(b, Blossom): | |
| queue.extend(b.leaves()) | |
| else: | |
| queue.append(b) | |
| elif t == 2: | |
| # b became a T-vertex/blossom; assign label S to its mate. | |
| # (If b is a non-trivial blossom, its base is the only vertex | |
| # with an external mate.) | |
| base = blossombase[b] | |
| assignLabel(mate[base], 1, base) | |
| # Trace back from vertices v and w to discover either a new blossom | |
| # or an augmenting path. Return the base vertex of the new blossom, | |
| # or NoNode if an augmenting path was found. | |
| def scanBlossom(v, w): | |
| # Trace back from v and w, placing breadcrumbs as we go. | |
| path = [] | |
| base = NoNode | |
| while v is not NoNode: | |
| # Look for a breadcrumb in v's blossom or put a new breadcrumb. | |
| b = inblossom[v] | |
| if label[b] & 4: | |
| base = blossombase[b] | |
| break | |
| assert label[b] == 1 | |
| path.append(b) | |
| label[b] = 5 | |
| # Trace one step back. | |
| if labeledge[b] is None: | |
| # The base of blossom b is single; stop tracing this path. | |
| assert blossombase[b] not in mate | |
| v = NoNode | |
| else: | |
| assert labeledge[b][0] == mate[blossombase[b]] | |
| v = labeledge[b][0] | |
| b = inblossom[v] | |
| assert label[b] == 2 | |
| # b is a T-blossom; trace one more step back. | |
| v = labeledge[b][0] | |
| # Swap v and w so that we alternate between both paths. | |
| if w is not NoNode: | |
| v, w = w, v | |
| # Remove breadcrumbs. | |
| for b in path: | |
| label[b] = 1 | |
| # Return base vertex, if we found one. | |
| return base | |
| # Construct a new blossom with given base, through S-vertices v and w. | |
| # Label the new blossom as S; set its dual variable to zero; | |
| # relabel its T-vertices to S and add them to the queue. | |
| def addBlossom(base, v, w): | |
| bb = inblossom[base] | |
| bv = inblossom[v] | |
| bw = inblossom[w] | |
| # Create blossom. | |
| b = Blossom() | |
| blossombase[b] = base | |
| blossomparent[b] = None | |
| blossomparent[bb] = b | |
| # Make list of sub-blossoms and their interconnecting edge endpoints. | |
| b.childs = path = [] | |
| b.edges = edgs = [(v, w)] | |
| # Trace back from v to base. | |
| while bv != bb: | |
| # Add bv to the new blossom. | |
| blossomparent[bv] = b | |
| path.append(bv) | |
| edgs.append(labeledge[bv]) | |
| assert label[bv] == 2 or ( | |
| label[bv] == 1 and labeledge[bv][0] == mate[blossombase[bv]] | |
| ) | |
| # Trace one step back. | |
| v = labeledge[bv][0] | |
| bv = inblossom[v] | |
| # Add base sub-blossom; reverse lists. | |
| path.append(bb) | |
| path.reverse() | |
| edgs.reverse() | |
| # Trace back from w to base. | |
| while bw != bb: | |
| # Add bw to the new blossom. | |
| blossomparent[bw] = b | |
| path.append(bw) | |
| edgs.append((labeledge[bw][1], labeledge[bw][0])) | |
| assert label[bw] == 2 or ( | |
| label[bw] == 1 and labeledge[bw][0] == mate[blossombase[bw]] | |
| ) | |
| # Trace one step back. | |
| w = labeledge[bw][0] | |
| bw = inblossom[w] | |
| # Set label to S. | |
| assert label[bb] == 1 | |
| label[b] = 1 | |
| labeledge[b] = labeledge[bb] | |
| # Set dual variable to zero. | |
| blossomdual[b] = 0 | |
| # Relabel vertices. | |
| for v in b.leaves(): | |
| if label[inblossom[v]] == 2: | |
| # This T-vertex now turns into an S-vertex because it becomes | |
| # part of an S-blossom; add it to the queue. | |
| queue.append(v) | |
| inblossom[v] = b | |
| # Compute b.mybestedges. | |
| bestedgeto = {} | |
| for bv in path: | |
| if isinstance(bv, Blossom): | |
| if bv.mybestedges is not None: | |
| # Walk this subblossom's least-slack edges. | |
| nblist = bv.mybestedges | |
| # The sub-blossom won't need this data again. | |
| bv.mybestedges = None | |
| else: | |
| # This subblossom does not have a list of least-slack | |
| # edges; get the information from the vertices. | |
| nblist = [ | |
| (v, w) for v in bv.leaves() for w in G.neighbors(v) if v != w | |
| ] | |
| else: | |
| nblist = [(bv, w) for w in G.neighbors(bv) if bv != w] | |
| for k in nblist: | |
| (i, j) = k | |
| if inblossom[j] == b: | |
| i, j = j, i | |
| bj = inblossom[j] | |
| if ( | |
| bj != b | |
| and label.get(bj) == 1 | |
| and ((bj not in bestedgeto) or slack(i, j) < slack(*bestedgeto[bj])) | |
| ): | |
| bestedgeto[bj] = k | |
| # Forget about least-slack edge of the subblossom. | |
| bestedge[bv] = None | |
| b.mybestedges = list(bestedgeto.values()) | |
| # Select bestedge[b]. | |
| mybestedge = None | |
| bestedge[b] = None | |
| for k in b.mybestedges: | |
| kslack = slack(*k) | |
| if mybestedge is None or kslack < mybestslack: | |
| mybestedge = k | |
| mybestslack = kslack | |
| bestedge[b] = mybestedge | |
| # Expand the given top-level blossom. | |
| def expandBlossom(b, endstage): | |
| # This is an obnoxiously complicated recursive function for the sake of | |
| # a stack-transformation. So, we hack around the complexity by using | |
| # a trampoline pattern. By yielding the arguments to each recursive | |
| # call, we keep the actual callstack flat. | |
| def _recurse(b, endstage): | |
| # Convert sub-blossoms into top-level blossoms. | |
| for s in b.childs: | |
| blossomparent[s] = None | |
| if isinstance(s, Blossom): | |
| if endstage and blossomdual[s] == 0: | |
| # Recursively expand this sub-blossom. | |
| yield s | |
| else: | |
| for v in s.leaves(): | |
| inblossom[v] = s | |
| else: | |
| inblossom[s] = s | |
| # If we expand a T-blossom during a stage, its sub-blossoms must be | |
| # relabeled. | |
| if (not endstage) and label.get(b) == 2: | |
| # Start at the sub-blossom through which the expanding | |
| # blossom obtained its label, and relabel sub-blossoms untili | |
| # we reach the base. | |
| # Figure out through which sub-blossom the expanding blossom | |
| # obtained its label initially. | |
| entrychild = inblossom[labeledge[b][1]] | |
| # Decide in which direction we will go round the blossom. | |
| j = b.childs.index(entrychild) | |
| if j & 1: | |
| # Start index is odd; go forward and wrap. | |
| j -= len(b.childs) | |
| jstep = 1 | |
| else: | |
| # Start index is even; go backward. | |
| jstep = -1 | |
| # Move along the blossom until we get to the base. | |
| v, w = labeledge[b] | |
| while j != 0: | |
| # Relabel the T-sub-blossom. | |
| if jstep == 1: | |
| p, q = b.edges[j] | |
| else: | |
| q, p = b.edges[j - 1] | |
| label[w] = None | |
| label[q] = None | |
| assignLabel(w, 2, v) | |
| # Step to the next S-sub-blossom and note its forward edge. | |
| allowedge[(p, q)] = allowedge[(q, p)] = True | |
| j += jstep | |
| if jstep == 1: | |
| v, w = b.edges[j] | |
| else: | |
| w, v = b.edges[j - 1] | |
| # Step to the next T-sub-blossom. | |
| allowedge[(v, w)] = allowedge[(w, v)] = True | |
| j += jstep | |
| # Relabel the base T-sub-blossom WITHOUT stepping through to | |
| # its mate (so don't call assignLabel). | |
| bw = b.childs[j] | |
| label[w] = label[bw] = 2 | |
| labeledge[w] = labeledge[bw] = (v, w) | |
| bestedge[bw] = None | |
| # Continue along the blossom until we get back to entrychild. | |
| j += jstep | |
| while b.childs[j] != entrychild: | |
| # Examine the vertices of the sub-blossom to see whether | |
| # it is reachable from a neighbouring S-vertex outside the | |
| # expanding blossom. | |
| bv = b.childs[j] | |
| if label.get(bv) == 1: | |
| # This sub-blossom just got label S through one of its | |
| # neighbours; leave it be. | |
| j += jstep | |
| continue | |
| if isinstance(bv, Blossom): | |
| for v in bv.leaves(): | |
| if label.get(v): | |
| break | |
| else: | |
| v = bv | |
| # If the sub-blossom contains a reachable vertex, assign | |
| # label T to the sub-blossom. | |
| if label.get(v): | |
| assert label[v] == 2 | |
| assert inblossom[v] == bv | |
| label[v] = None | |
| label[mate[blossombase[bv]]] = None | |
| assignLabel(v, 2, labeledge[v][0]) | |
| j += jstep | |
| # Remove the expanded blossom entirely. | |
| label.pop(b, None) | |
| labeledge.pop(b, None) | |
| bestedge.pop(b, None) | |
| del blossomparent[b] | |
| del blossombase[b] | |
| del blossomdual[b] | |
| # Now, we apply the trampoline pattern. We simulate a recursive | |
| # callstack by maintaining a stack of generators, each yielding a | |
| # sequence of function arguments. We grow the stack by appending a call | |
| # to _recurse on each argument tuple, and shrink the stack whenever a | |
| # generator is exhausted. | |
| stack = [_recurse(b, endstage)] | |
| while stack: | |
| top = stack[-1] | |
| for s in top: | |
| stack.append(_recurse(s, endstage)) | |
| break | |
| else: | |
| stack.pop() | |
| # Swap matched/unmatched edges over an alternating path through blossom b | |
| # between vertex v and the base vertex. Keep blossom bookkeeping | |
| # consistent. | |
| def augmentBlossom(b, v): | |
| # This is an obnoxiously complicated recursive function for the sake of | |
| # a stack-transformation. So, we hack around the complexity by using | |
| # a trampoline pattern. By yielding the arguments to each recursive | |
| # call, we keep the actual callstack flat. | |
| def _recurse(b, v): | |
| # Bubble up through the blossom tree from vertex v to an immediate | |
| # sub-blossom of b. | |
| t = v | |
| while blossomparent[t] != b: | |
| t = blossomparent[t] | |
| # Recursively deal with the first sub-blossom. | |
| if isinstance(t, Blossom): | |
| yield (t, v) | |
| # Decide in which direction we will go round the blossom. | |
| i = j = b.childs.index(t) | |
| if i & 1: | |
| # Start index is odd; go forward and wrap. | |
| j -= len(b.childs) | |
| jstep = 1 | |
| else: | |
| # Start index is even; go backward. | |
| jstep = -1 | |
| # Move along the blossom until we get to the base. | |
| while j != 0: | |
| # Step to the next sub-blossom and augment it recursively. | |
| j += jstep | |
| t = b.childs[j] | |
| if jstep == 1: | |
| w, x = b.edges[j] | |
| else: | |
| x, w = b.edges[j - 1] | |
| if isinstance(t, Blossom): | |
| yield (t, w) | |
| # Step to the next sub-blossom and augment it recursively. | |
| j += jstep | |
| t = b.childs[j] | |
| if isinstance(t, Blossom): | |
| yield (t, x) | |
| # Match the edge connecting those sub-blossoms. | |
| mate[w] = x | |
| mate[x] = w | |
| # Rotate the list of sub-blossoms to put the new base at the front. | |
| b.childs = b.childs[i:] + b.childs[:i] | |
| b.edges = b.edges[i:] + b.edges[:i] | |
| blossombase[b] = blossombase[b.childs[0]] | |
| assert blossombase[b] == v | |
| # Now, we apply the trampoline pattern. We simulate a recursive | |
| # callstack by maintaining a stack of generators, each yielding a | |
| # sequence of function arguments. We grow the stack by appending a call | |
| # to _recurse on each argument tuple, and shrink the stack whenever a | |
| # generator is exhausted. | |
| stack = [_recurse(b, v)] | |
| while stack: | |
| top = stack[-1] | |
| for args in top: | |
| stack.append(_recurse(*args)) | |
| break | |
| else: | |
| stack.pop() | |
| # Swap matched/unmatched edges over an alternating path between two | |
| # single vertices. The augmenting path runs through S-vertices v and w. | |
| def augmentMatching(v, w): | |
| for s, j in ((v, w), (w, v)): | |
| # Match vertex s to vertex j. Then trace back from s | |
| # until we find a single vertex, swapping matched and unmatched | |
| # edges as we go. | |
| while 1: | |
| bs = inblossom[s] | |
| assert label[bs] == 1 | |
| assert (labeledge[bs] is None and blossombase[bs] not in mate) or ( | |
| labeledge[bs][0] == mate[blossombase[bs]] | |
| ) | |
| # Augment through the S-blossom from s to base. | |
| if isinstance(bs, Blossom): | |
| augmentBlossom(bs, s) | |
| # Update mate[s] | |
| mate[s] = j | |
| # Trace one step back. | |
| if labeledge[bs] is None: | |
| # Reached single vertex; stop. | |
| break | |
| t = labeledge[bs][0] | |
| bt = inblossom[t] | |
| assert label[bt] == 2 | |
| # Trace one more step back. | |
| s, j = labeledge[bt] | |
| # Augment through the T-blossom from j to base. | |
| assert blossombase[bt] == t | |
| if isinstance(bt, Blossom): | |
| augmentBlossom(bt, j) | |
| # Update mate[j] | |
| mate[j] = s | |
| # Verify that the optimum solution has been reached. | |
| def verifyOptimum(): | |
| if maxcardinality: | |
| # Vertices may have negative dual; | |
| # find a constant non-negative number to add to all vertex duals. | |
| vdualoffset = max(0, -min(dualvar.values())) | |
| else: | |
| vdualoffset = 0 | |
| # 0. all dual variables are non-negative | |
| assert min(dualvar.values()) + vdualoffset >= 0 | |
| assert len(blossomdual) == 0 or min(blossomdual.values()) >= 0 | |
| # 0. all edges have non-negative slack and | |
| # 1. all matched edges have zero slack; | |
| for i, j, d in G.edges(data=True): | |
| wt = d.get(weight, 1) | |
| if i == j: | |
| continue # ignore self-loops | |
| s = dualvar[i] + dualvar[j] - 2 * wt | |
| iblossoms = [i] | |
| jblossoms = [j] | |
| while blossomparent[iblossoms[-1]] is not None: | |
| iblossoms.append(blossomparent[iblossoms[-1]]) | |
| while blossomparent[jblossoms[-1]] is not None: | |
| jblossoms.append(blossomparent[jblossoms[-1]]) | |
| iblossoms.reverse() | |
| jblossoms.reverse() | |
| for bi, bj in zip(iblossoms, jblossoms): | |
| if bi != bj: | |
| break | |
| s += 2 * blossomdual[bi] | |
| assert s >= 0 | |
| if mate.get(i) == j or mate.get(j) == i: | |
| assert mate[i] == j and mate[j] == i | |
| assert s == 0 | |
| # 2. all single vertices have zero dual value; | |
| for v in gnodes: | |
| assert (v in mate) or dualvar[v] + vdualoffset == 0 | |
| # 3. all blossoms with positive dual value are full. | |
| for b in blossomdual: | |
| if blossomdual[b] > 0: | |
| assert len(b.edges) % 2 == 1 | |
| for i, j in b.edges[1::2]: | |
| assert mate[i] == j and mate[j] == i | |
| # Ok. | |
| # Main loop: continue until no further improvement is possible. | |
| while 1: | |
| # Each iteration of this loop is a "stage". | |
| # A stage finds an augmenting path and uses that to improve | |
| # the matching. | |
| # Remove labels from top-level blossoms/vertices. | |
| label.clear() | |
| labeledge.clear() | |
| # Forget all about least-slack edges. | |
| bestedge.clear() | |
| for b in blossomdual: | |
| b.mybestedges = None | |
| # Loss of labeling means that we can not be sure that currently | |
| # allowable edges remain allowable throughout this stage. | |
| allowedge.clear() | |
| # Make queue empty. | |
| queue[:] = [] | |
| # Label single blossoms/vertices with S and put them in the queue. | |
| for v in gnodes: | |
| if (v not in mate) and label.get(inblossom[v]) is None: | |
| assignLabel(v, 1, None) | |
| # Loop until we succeed in augmenting the matching. | |
| augmented = 0 | |
| while 1: | |
| # Each iteration of this loop is a "substage". | |
| # A substage tries to find an augmenting path; | |
| # if found, the path is used to improve the matching and | |
| # the stage ends. If there is no augmenting path, the | |
| # primal-dual method is used to pump some slack out of | |
| # the dual variables. | |
| # Continue labeling until all vertices which are reachable | |
| # through an alternating path have got a label. | |
| while queue and not augmented: | |
| # Take an S vertex from the queue. | |
| v = queue.pop() | |
| assert label[inblossom[v]] == 1 | |
| # Scan its neighbours: | |
| for w in G.neighbors(v): | |
| if w == v: | |
| continue # ignore self-loops | |
| # w is a neighbour to v | |
| bv = inblossom[v] | |
| bw = inblossom[w] | |
| if bv == bw: | |
| # this edge is internal to a blossom; ignore it | |
| continue | |
| if (v, w) not in allowedge: | |
| kslack = slack(v, w) | |
| if kslack <= 0: | |
| # edge k has zero slack => it is allowable | |
| allowedge[(v, w)] = allowedge[(w, v)] = True | |
| if (v, w) in allowedge: | |
| if label.get(bw) is None: | |
| # (C1) w is a free vertex; | |
| # label w with T and label its mate with S (R12). | |
| assignLabel(w, 2, v) | |
| elif label.get(bw) == 1: | |
| # (C2) w is an S-vertex (not in the same blossom); | |
| # follow back-links to discover either an | |
| # augmenting path or a new blossom. | |
| base = scanBlossom(v, w) | |
| if base is not NoNode: | |
| # Found a new blossom; add it to the blossom | |
| # bookkeeping and turn it into an S-blossom. | |
| addBlossom(base, v, w) | |
| else: | |
| # Found an augmenting path; augment the | |
| # matching and end this stage. | |
| augmentMatching(v, w) | |
| augmented = 1 | |
| break | |
| elif label.get(w) is None: | |
| # w is inside a T-blossom, but w itself has not | |
| # yet been reached from outside the blossom; | |
| # mark it as reached (we need this to relabel | |
| # during T-blossom expansion). | |
| assert label[bw] == 2 | |
| label[w] = 2 | |
| labeledge[w] = (v, w) | |
| elif label.get(bw) == 1: | |
| # keep track of the least-slack non-allowable edge to | |
| # a different S-blossom. | |
| if bestedge.get(bv) is None or kslack < slack(*bestedge[bv]): | |
| bestedge[bv] = (v, w) | |
| elif label.get(w) is None: | |
| # w is a free vertex (or an unreached vertex inside | |
| # a T-blossom) but we can not reach it yet; | |
| # keep track of the least-slack edge that reaches w. | |
| if bestedge.get(w) is None or kslack < slack(*bestedge[w]): | |
| bestedge[w] = (v, w) | |
| if augmented: | |
| break | |
| # There is no augmenting path under these constraints; | |
| # compute delta and reduce slack in the optimization problem. | |
| # (Note that our vertex dual variables, edge slacks and delta's | |
| # are pre-multiplied by two.) | |
| deltatype = -1 | |
| delta = deltaedge = deltablossom = None | |
| # Compute delta1: the minimum value of any vertex dual. | |
| if not maxcardinality: | |
| deltatype = 1 | |
| delta = min(dualvar.values()) | |
| # Compute delta2: the minimum slack on any edge between | |
| # an S-vertex and a free vertex. | |
| for v in G.nodes(): | |
| if label.get(inblossom[v]) is None and bestedge.get(v) is not None: | |
| d = slack(*bestedge[v]) | |
| if deltatype == -1 or d < delta: | |
| delta = d | |
| deltatype = 2 | |
| deltaedge = bestedge[v] | |
| # Compute delta3: half the minimum slack on any edge between | |
| # a pair of S-blossoms. | |
| for b in blossomparent: | |
| if ( | |
| blossomparent[b] is None | |
| and label.get(b) == 1 | |
| and bestedge.get(b) is not None | |
| ): | |
| kslack = slack(*bestedge[b]) | |
| if allinteger: | |
| assert (kslack % 2) == 0 | |
| d = kslack // 2 | |
| else: | |
| d = kslack / 2.0 | |
| if deltatype == -1 or d < delta: | |
| delta = d | |
| deltatype = 3 | |
| deltaedge = bestedge[b] | |
| # Compute delta4: minimum z variable of any T-blossom. | |
| for b in blossomdual: | |
| if ( | |
| blossomparent[b] is None | |
| and label.get(b) == 2 | |
| and (deltatype == -1 or blossomdual[b] < delta) | |
| ): | |
| delta = blossomdual[b] | |
| deltatype = 4 | |
| deltablossom = b | |
| if deltatype == -1: | |
| # No further improvement possible; max-cardinality optimum | |
| # reached. Do a final delta update to make the optimum | |
| # verifiable. | |
| assert maxcardinality | |
| deltatype = 1 | |
| delta = max(0, min(dualvar.values())) | |
| # Update dual variables according to delta. | |
| for v in gnodes: | |
| if label.get(inblossom[v]) == 1: | |
| # S-vertex: 2*u = 2*u - 2*delta | |
| dualvar[v] -= delta | |
| elif label.get(inblossom[v]) == 2: | |
| # T-vertex: 2*u = 2*u + 2*delta | |
| dualvar[v] += delta | |
| for b in blossomdual: | |
| if blossomparent[b] is None: | |
| if label.get(b) == 1: | |
| # top-level S-blossom: z = z + 2*delta | |
| blossomdual[b] += delta | |
| elif label.get(b) == 2: | |
| # top-level T-blossom: z = z - 2*delta | |
| blossomdual[b] -= delta | |
| # Take action at the point where minimum delta occurred. | |
| if deltatype == 1: | |
| # No further improvement possible; optimum reached. | |
| break | |
| elif deltatype == 2: | |
| # Use the least-slack edge to continue the search. | |
| (v, w) = deltaedge | |
| assert label[inblossom[v]] == 1 | |
| allowedge[(v, w)] = allowedge[(w, v)] = True | |
| queue.append(v) | |
| elif deltatype == 3: | |
| # Use the least-slack edge to continue the search. | |
| (v, w) = deltaedge | |
| allowedge[(v, w)] = allowedge[(w, v)] = True | |
| assert label[inblossom[v]] == 1 | |
| queue.append(v) | |
| elif deltatype == 4: | |
| # Expand the least-z blossom. | |
| expandBlossom(deltablossom, False) | |
| # End of a this substage. | |
| # Paranoia check that the matching is symmetric. | |
| for v in mate: | |
| assert mate[mate[v]] == v | |
| # Stop when no more augmenting path can be found. | |
| if not augmented: | |
| break | |
| # End of a stage; expand all S-blossoms which have zero dual. | |
| for b in list(blossomdual.keys()): | |
| if b not in blossomdual: | |
| continue # already expanded | |
| if blossomparent[b] is None and label.get(b) == 1 and blossomdual[b] == 0: | |
| expandBlossom(b, True) | |
| # Verify that we reached the optimum solution (only for integer weights). | |
| if allinteger: | |
| verifyOptimum() | |
| return matching_dict_to_set(mate) | |