Llama-3.1-8B-DALv0.1
/
venv
/lib
/python3.12
/site-packages
/networkx
/algorithms
/traversal
/beamsearch.py
"""Basic algorithms for breadth-first searching the nodes of a graph.""" | |
import networkx as nx | |
__all__ = ["bfs_beam_edges"] | |
def bfs_beam_edges(G, source, value, width=None): | |
"""Iterates over edges in a beam search. | |
The beam search is a generalized breadth-first search in which only | |
the "best" *w* neighbors of the current node are enqueued, where *w* | |
is the beam width and "best" is an application-specific | |
heuristic. In general, a beam search with a small beam width might | |
not visit each node in the graph. | |
.. note:: | |
With the default value of ``width=None`` or `width` greater than the | |
maximum degree of the graph, this function equates to a slower | |
version of `~networkx.algorithms.traversal.breadth_first_search.bfs_edges`. | |
All nodes will be visited, though the order of the reported edges may | |
vary. In such cases, `value` has no effect - consider using `bfs_edges` | |
directly instead. | |
Parameters | |
---------- | |
G : NetworkX graph | |
source : node | |
Starting node for the breadth-first search; this function | |
iterates over only those edges in the component reachable from | |
this node. | |
value : function | |
A function that takes a node of the graph as input and returns a | |
real number indicating how "good" it is. A higher value means it | |
is more likely to be visited sooner during the search. When | |
visiting a new node, only the `width` neighbors with the highest | |
`value` are enqueued (in decreasing order of `value`). | |
width : int (default = None) | |
The beam width for the search. This is the number of neighbors | |
(ordered by `value`) to enqueue when visiting each new node. | |
Yields | |
------ | |
edge | |
Edges in the beam search starting from `source`, given as a pair | |
of nodes. | |
Examples | |
-------- | |
To give nodes with, for example, a higher centrality precedence | |
during the search, set the `value` function to return the centrality | |
value of the node: | |
>>> G = nx.karate_club_graph() | |
>>> centrality = nx.eigenvector_centrality(G) | |
>>> list(nx.bfs_beam_edges(G, source=0, value=centrality.get, width=3)) | |
[(0, 2), (0, 1), (0, 8), (2, 32), (1, 13), (8, 33)] | |
""" | |
if width is None: | |
width = len(G) | |
def successors(v): | |
"""Returns a list of the best neighbors of a node. | |
`v` is a node in the graph `G`. | |
The "best" neighbors are chosen according to the `value` | |
function (higher is better). Only the `width` best neighbors of | |
`v` are returned. | |
""" | |
# TODO The Python documentation states that for small values, it | |
# is better to use `heapq.nlargest`. We should determine the | |
# threshold at which its better to use `heapq.nlargest()` | |
# instead of `sorted()[:]` and apply that optimization here. | |
# | |
# If `width` is greater than the number of neighbors of `v`, all | |
# neighbors are returned by the semantics of slicing in | |
# Python. This occurs in the special case that the user did not | |
# specify a `width`: in this case all neighbors are always | |
# returned, so this is just a (slower) implementation of | |
# `bfs_edges(G, source)` but with a sorted enqueue step. | |
return iter(sorted(G.neighbors(v), key=value, reverse=True)[:width]) | |
yield from nx.generic_bfs_edges(G, source, successors) | |