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author | S. Solomon Darnell | 2025-03-28 21:52:21 -0500 |
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committer | S. Solomon Darnell | 2025-03-28 21:52:21 -0500 |
commit | 4a52a71956a8d46fcb7294ac71734504bb09bcc2 (patch) | |
tree | ee3dc5af3b6313e921cd920906356f5d4febc4ed /.venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py | |
parent | cc961e04ba734dd72309fb548a2f97d67d578813 (diff) | |
download | gn-ai-master.tar.gz |
Diffstat (limited to '.venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py')
-rw-r--r-- | .venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py | 94 |
1 files changed, 94 insertions, 0 deletions
diff --git a/.venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py b/.venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py new file mode 100644 index 00000000..ef042440 --- /dev/null +++ b/.venv/lib/python3.12/site-packages/networkx/algorithms/approximation/tests/test_maxcut.py @@ -0,0 +1,94 @@ +import random + +import pytest + +import networkx as nx +from networkx.algorithms.approximation import maxcut + + +@pytest.mark.parametrize( + "f", (nx.approximation.randomized_partitioning, nx.approximation.one_exchange) +) +@pytest.mark.parametrize("graph_constructor", (nx.DiGraph, nx.MultiGraph)) +def test_raises_on_directed_and_multigraphs(f, graph_constructor): + G = graph_constructor([(0, 1), (1, 2)]) + with pytest.raises(nx.NetworkXNotImplemented): + f(G) + + +def _is_valid_cut(G, set1, set2): + union = set1.union(set2) + assert union == set(G.nodes) + assert len(set1) + len(set2) == G.number_of_nodes() + + +def _cut_is_locally_optimal(G, cut_size, set1): + # test if cut can be locally improved + for i, node in enumerate(set1): + cut_size_without_node = nx.algorithms.cut_size( + G, set1 - {node}, weight="weight" + ) + assert cut_size_without_node <= cut_size + + +def test_random_partitioning(): + G = nx.complete_graph(5) + _, (set1, set2) = maxcut.randomized_partitioning(G, seed=5) + _is_valid_cut(G, set1, set2) + + +def test_random_partitioning_all_to_one(): + G = nx.complete_graph(5) + _, (set1, set2) = maxcut.randomized_partitioning(G, p=1) + _is_valid_cut(G, set1, set2) + assert len(set1) == G.number_of_nodes() + assert len(set2) == 0 + + +def test_one_exchange_basic(): + G = nx.complete_graph(5) + random.seed(5) + for u, v, w in G.edges(data=True): + w["weight"] = random.randrange(-100, 100, 1) / 10 + + initial_cut = set(random.sample(sorted(G.nodes()), k=5)) + cut_size, (set1, set2) = maxcut.one_exchange( + G, initial_cut, weight="weight", seed=5 + ) + + _is_valid_cut(G, set1, set2) + _cut_is_locally_optimal(G, cut_size, set1) + + +def test_one_exchange_optimal(): + # Greedy one exchange should find the optimal solution for this graph (14) + G = nx.Graph() + G.add_edge(1, 2, weight=3) + G.add_edge(1, 3, weight=3) + G.add_edge(1, 4, weight=3) + G.add_edge(1, 5, weight=3) + G.add_edge(2, 3, weight=5) + + cut_size, (set1, set2) = maxcut.one_exchange(G, weight="weight", seed=5) + + _is_valid_cut(G, set1, set2) + _cut_is_locally_optimal(G, cut_size, set1) + # check global optimality + assert cut_size == 14 + + +def test_negative_weights(): + G = nx.complete_graph(5) + random.seed(5) + for u, v, w in G.edges(data=True): + w["weight"] = -1 * random.random() + + initial_cut = set(random.sample(sorted(G.nodes()), k=5)) + cut_size, (set1, set2) = maxcut.one_exchange(G, initial_cut, weight="weight") + + # make sure it is a valid cut + _is_valid_cut(G, set1, set2) + # check local optimality + _cut_is_locally_optimal(G, cut_size, set1) + # test that all nodes are in the same partition + assert len(set1) == len(G.nodes) or len(set2) == len(G.nodes) |