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- """Provides explicit constructions of expander graphs."""
- import itertools
- import networkx as nx
- __all__ = [
- "margulis_gabber_galil_graph",
- "chordal_cycle_graph",
- "paley_graph",
- "maybe_regular_expander",
- "maybe_regular_expander_graph",
- "is_regular_expander",
- "random_regular_expander_graph",
- ]
- # Other discrete torus expanders can be constructed by using the following edge
- # sets. For more information, see Chapter 4, "Expander Graphs", in
- # "Pseudorandomness", by Salil Vadhan.
- #
- # For a directed expander, add edges from (x, y) to:
- #
- # (x, y),
- # ((x + 1) % n, y),
- # (x, (y + 1) % n),
- # (x, (x + y) % n),
- # (-y % n, x)
- #
- # For an undirected expander, add the reverse edges.
- #
- # Also appearing in the paper of Gabber and Galil:
- #
- # (x, y),
- # (x, (x + y) % n),
- # (x, (x + y + 1) % n),
- # ((x + y) % n, y),
- # ((x + y + 1) % n, y)
- #
- # and:
- #
- # (x, y),
- # ((x + 2*y) % n, y),
- # ((x + (2*y + 1)) % n, y),
- # ((x + (2*y + 2)) % n, y),
- # (x, (y + 2*x) % n),
- # (x, (y + (2*x + 1)) % n),
- # (x, (y + (2*x + 2)) % n),
- #
- @nx._dispatchable(graphs=None, returns_graph=True)
- def margulis_gabber_galil_graph(n, create_using=None):
- r"""Returns the Margulis-Gabber-Galil undirected MultiGraph on `n^2` nodes.
- The undirected MultiGraph is regular with degree `8`. Nodes are integer
- pairs. The second-largest eigenvalue of the adjacency matrix of the graph
- is at most `5 \sqrt{2}`, regardless of `n`.
- Parameters
- ----------
- n : int
- Determines the number of nodes in the graph: `n^2`.
- create_using : NetworkX graph constructor, optional (default MultiGraph)
- Graph type to create. If graph instance, then cleared before populated.
- Returns
- -------
- G : graph
- The constructed undirected multigraph.
- Raises
- ------
- NetworkXError
- If the graph is directed or not a multigraph.
- """
- G = nx.empty_graph(0, create_using, default=nx.MultiGraph)
- if G.is_directed() or not G.is_multigraph():
- msg = "`create_using` must be an undirected multigraph."
- raise nx.NetworkXError(msg)
- for x, y in itertools.product(range(n), repeat=2):
- for u, v in (
- ((x + 2 * y) % n, y),
- ((x + (2 * y + 1)) % n, y),
- (x, (y + 2 * x) % n),
- (x, (y + (2 * x + 1)) % n),
- ):
- G.add_edge((x, y), (u, v))
- G.graph["name"] = f"margulis_gabber_galil_graph({n})"
- return G
- @nx._dispatchable(graphs=None, returns_graph=True)
- def chordal_cycle_graph(p, create_using=None):
- """Returns the chordal cycle graph on `p` nodes.
- The returned graph is a cycle graph on `p` nodes with chords joining each
- vertex `x` to its inverse modulo `p`. This graph is a (mildly explicit)
- 3-regular expander [1]_.
- `p` *must* be a prime number.
- Parameters
- ----------
- p : a prime number
- The number of vertices in the graph. This also indicates where the
- chordal edges in the cycle will be created.
- create_using : NetworkX graph constructor, optional (default=nx.Graph)
- Graph type to create. If graph instance, then cleared before populated.
- Returns
- -------
- G : graph
- The constructed undirected multigraph.
- Raises
- ------
- NetworkXError
- If `create_using` indicates directed or not a multigraph.
- References
- ----------
- .. [1] Theorem 4.4.2 in A. Lubotzky. "Discrete groups, expanding graphs and
- invariant measures", volume 125 of Progress in Mathematics.
- Birkhäuser Verlag, Basel, 1994.
- """
- G = nx.empty_graph(0, create_using, default=nx.MultiGraph)
- if G.is_directed() or not G.is_multigraph():
- msg = "`create_using` must be an undirected multigraph."
- raise nx.NetworkXError(msg)
- for x in range(p):
- left = (x - 1) % p
- right = (x + 1) % p
- # Here we apply Fermat's Little Theorem to compute the multiplicative
- # inverse of x in Z/pZ. By Fermat's Little Theorem,
- #
- # x^p = x (mod p)
- #
- # Therefore,
- #
- # x * x^(p - 2) = 1 (mod p)
- #
- # The number 0 is a special case: we just let its inverse be itself.
- chord = pow(x, p - 2, p) if x > 0 else 0
- for y in (left, right, chord):
- G.add_edge(x, y)
- G.graph["name"] = f"chordal_cycle_graph({p})"
- return G
- @nx._dispatchable(graphs=None, returns_graph=True)
- def paley_graph(p, create_using=None):
- r"""Returns the Paley $\frac{(p-1)}{2}$ -regular graph on $p$ nodes.
- The returned graph is a graph on $\mathbb{Z}/p\mathbb{Z}$ with edges between $x$ and $y$
- if and only if $x-y$ is a nonzero square in $\mathbb{Z}/p\mathbb{Z}$.
- If $p \equiv 1 \pmod 4$, $-1$ is a square in
- $\mathbb{Z}/p\mathbb{Z}$ and therefore $x-y$ is a square if and
- only if $y-x$ is also a square, i.e the edges in the Paley graph are symmetric.
- If $p \equiv 3 \pmod 4$, $-1$ is not a square in $\mathbb{Z}/p\mathbb{Z}$
- and therefore either $x-y$ or $y-x$ is a square in $\mathbb{Z}/p\mathbb{Z}$ but not both.
- Note that a more general definition of Paley graphs extends this construction
- to graphs over $q=p^n$ vertices, by using the finite field $F_q$ instead of
- $\mathbb{Z}/p\mathbb{Z}$.
- This construction requires to compute squares in general finite fields and is
- not what is implemented here (i.e `paley_graph(25)` does not return the true
- Paley graph associated with $5^2$).
- Parameters
- ----------
- p : int, an odd prime number.
- create_using : NetworkX graph constructor, optional (default=nx.Graph)
- Graph type to create. If graph instance, then cleared before populated.
- Returns
- -------
- G : graph
- The constructed directed graph.
- Raises
- ------
- NetworkXError
- If the graph is a multigraph.
- References
- ----------
- Chapter 13 in B. Bollobas, Random Graphs. Second edition.
- Cambridge Studies in Advanced Mathematics, 73.
- Cambridge University Press, Cambridge (2001).
- """
- G = nx.empty_graph(0, create_using, default=nx.DiGraph)
- if G.is_multigraph():
- msg = "`create_using` cannot be a multigraph."
- raise nx.NetworkXError(msg)
- # Compute the squares in Z/pZ.
- # Make it a set to uniquify (there are exactly (p-1)/2 squares in Z/pZ
- # when is prime).
- square_set = {(x**2) % p for x in range(1, p) if (x**2) % p != 0}
- for x in range(p):
- for x2 in square_set:
- G.add_edge(x, (x + x2) % p)
- G.graph["name"] = f"paley({p})"
- return G
- @nx.utils.decorators.np_random_state("seed")
- @nx._dispatchable(graphs=None, returns_graph=True)
- def maybe_regular_expander_graph(n, d, *, create_using=None, max_tries=100, seed=None):
- r"""Utility for creating a random regular expander.
- Returns a random $d$-regular graph on $n$ nodes which is an expander
- graph with very good probability.
- Parameters
- ----------
- n : int
- The number of nodes.
- d : int
- The degree of each node.
- create_using : Graph Instance or Constructor
- Indicator of type of graph to return.
- If a Graph-type instance, then clear and use it.
- If a constructor, call it to create an empty graph.
- Use the Graph constructor by default.
- max_tries : int. (default: 100)
- The number of allowed loops when generating each independent cycle
- seed : (default: None)
- Seed used to set random number generation state. See :ref`Randomness<randomness>`.
- Notes
- -----
- The nodes are numbered from $0$ to $n - 1$.
- The graph is generated by taking $d / 2$ random independent cycles.
- Joel Friedman proved that in this model the resulting
- graph is an expander with probability
- $1 - O(n^{-\tau})$ where $\tau = \lceil (\sqrt{d - 1}) / 2 \rceil - 1$. [1]_
- Examples
- --------
- >>> G = nx.maybe_regular_expander_graph(n=200, d=6, seed=8020)
- Returns
- -------
- G : graph
- The constructed undirected graph.
- Raises
- ------
- NetworkXError
- If $d % 2 != 0$ as the degree must be even.
- If $n - 1$ is less than $ 2d $ as the graph is complete at most.
- If max_tries is reached
- See Also
- --------
- is_regular_expander
- random_regular_expander_graph
- References
- ----------
- .. [1] Joel Friedman,
- A Proof of Alon's Second Eigenvalue Conjecture and Related Problems, 2004
- https://arxiv.org/abs/cs/0405020
- """
- import numpy as np
- if n < 1:
- raise nx.NetworkXError("n must be a positive integer")
- if not (d >= 2):
- raise nx.NetworkXError("d must be greater than or equal to 2")
- if not (d % 2 == 0):
- raise nx.NetworkXError("d must be even")
- if not (n - 1 >= d):
- raise nx.NetworkXError(
- f"Need n-1>= d to have room for {d // 2} independent cycles with {n} nodes"
- )
- G = nx.empty_graph(n, create_using)
- if n < 2:
- return G
- cycles = []
- edges = set()
- # Create d / 2 cycles
- for i in range(d // 2):
- iterations = max_tries
- # Make sure the cycles are independent to have a regular graph
- while len(edges) != (i + 1) * n:
- iterations -= 1
- # Faster than random.permutation(n) since there are only
- # (n-1)! distinct cycles against n! permutations of size n
- cycle = seed.permutation(n - 1).tolist()
- cycle.append(n - 1)
- new_edges = {
- (u, v)
- for u, v in nx.utils.pairwise(cycle, cyclic=True)
- if (u, v) not in edges and (v, u) not in edges
- }
- # If the new cycle has no edges in common with previous cycles
- # then add it to the list otherwise try again
- if len(new_edges) == n:
- cycles.append(cycle)
- edges.update(new_edges)
- if iterations == 0:
- msg = "Too many iterations in maybe_regular_expander_graph"
- raise nx.NetworkXError(msg)
- G.add_edges_from(edges)
- return G
- def maybe_regular_expander(n, d, *, create_using=None, max_tries=100, seed=None):
- """
- .. deprecated:: 3.6
- `maybe_regular_expander` is a deprecated alias
- for `maybe_regular_expander_graph`.
- Use `maybe_regular_expander_graph` instead.
- """
- import warnings
- warnings.warn(
- "maybe_regular_expander is deprecated, "
- "use `maybe_regular_expander_graph` instead.",
- category=DeprecationWarning,
- stacklevel=2,
- )
- return maybe_regular_expander_graph(
- n, d, create_using=create_using, max_tries=max_tries, seed=seed
- )
- @nx.utils.not_implemented_for("directed")
- @nx.utils.not_implemented_for("multigraph")
- @nx._dispatchable(preserve_edge_attrs={"G": {"weight": 1}})
- def is_regular_expander(G, *, epsilon=0):
- r"""Determines whether the graph G is a regular expander. [1]_
- An expander graph is a sparse graph with strong connectivity properties.
- More precisely, this helper checks whether the graph is a
- regular $(n, d, \lambda)$-expander with $\lambda$ close to
- the Alon-Boppana bound and given by
- $\lambda = 2 \sqrt{d - 1} + \epsilon$. [2]_
- In the case where $\epsilon = 0$ then if the graph successfully passes the test
- it is a Ramanujan graph. [3]_
- A Ramanujan graph has spectral gap almost as large as possible, which makes them
- excellent expanders.
- Parameters
- ----------
- G : NetworkX graph
- epsilon : int, float, default=0
- Returns
- -------
- bool
- Whether the given graph is a regular $(n, d, \lambda)$-expander
- where $\lambda = 2 \sqrt{d - 1} + \epsilon$.
- Examples
- --------
- >>> G = nx.random_regular_expander_graph(20, 4)
- >>> nx.is_regular_expander(G)
- True
- See Also
- --------
- maybe_regular_expander_graph
- random_regular_expander_graph
- References
- ----------
- .. [1] Expander graph, https://en.wikipedia.org/wiki/Expander_graph
- .. [2] Alon-Boppana bound, https://en.wikipedia.org/wiki/Alon%E2%80%93Boppana_bound
- .. [3] Ramanujan graphs, https://en.wikipedia.org/wiki/Ramanujan_graph
- """
- import numpy as np
- import scipy as sp
- if epsilon < 0:
- raise nx.NetworkXError("epsilon must be non negative")
- if not nx.is_regular(G):
- return False
- _, d = nx.utils.arbitrary_element(G.degree)
- A = nx.adjacency_matrix(G, dtype=float)
- lams = sp.sparse.linalg.eigsh(A, which="LM", k=2, return_eigenvectors=False)
- # lambda2 is the second biggest eigenvalue
- lambda2 = min(lams)
- # Use bool() to convert numpy scalar to Python Boolean
- return bool(abs(lambda2) < 2 * np.sqrt(d - 1) + epsilon)
- @nx.utils.decorators.np_random_state("seed")
- @nx._dispatchable(graphs=None, returns_graph=True)
- def random_regular_expander_graph(
- n, d, *, epsilon=0, create_using=None, max_tries=100, seed=None
- ):
- r"""Returns a random regular expander graph on $n$ nodes with degree $d$.
- An expander graph is a sparse graph with strong connectivity properties. [1]_
- More precisely the returned graph is a $(n, d, \lambda)$-expander with
- $\lambda = 2 \sqrt{d - 1} + \epsilon$, close to the Alon-Boppana bound. [2]_
- In the case where $\epsilon = 0$ it returns a Ramanujan graph.
- A Ramanujan graph has spectral gap almost as large as possible,
- which makes them excellent expanders. [3]_
- Parameters
- ----------
- n : int
- The number of nodes.
- d : int
- The degree of each node.
- epsilon : int, float, default=0
- max_tries : int, (default: 100)
- The number of allowed loops,
- also used in the `maybe_regular_expander_graph` utility
- seed : (default: None)
- Seed used to set random number generation state. See :ref`Randomness<randomness>`.
- Raises
- ------
- NetworkXError
- If max_tries is reached
- Examples
- --------
- >>> G = nx.random_regular_expander_graph(20, 4)
- >>> nx.is_regular_expander(G)
- True
- Notes
- -----
- This loops over `maybe_regular_expander_graph` and can be slow when
- $n$ is too big or $\epsilon$ too small.
- See Also
- --------
- maybe_regular_expander_graph
- is_regular_expander
- References
- ----------
- .. [1] Expander graph, https://en.wikipedia.org/wiki/Expander_graph
- .. [2] Alon-Boppana bound, https://en.wikipedia.org/wiki/Alon%E2%80%93Boppana_bound
- .. [3] Ramanujan graphs, https://en.wikipedia.org/wiki/Ramanujan_graph
- """
- G = maybe_regular_expander_graph(
- n, d, create_using=create_using, max_tries=max_tries, seed=seed
- )
- iterations = max_tries
- while not is_regular_expander(G, epsilon=epsilon):
- iterations -= 1
- G = maybe_regular_expander_graph(
- n=n, d=d, create_using=create_using, max_tries=max_tries, seed=seed
- )
- if iterations == 0:
- raise nx.NetworkXError(
- "Too many iterations in random_regular_expander_graph"
- )
- return G
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