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"""Test sequences for graphiness. | |
""" | |
import heapq | |
import networkx as nx | |
__all__ = [ | |
"is_graphical", | |
"is_multigraphical", | |
"is_pseudographical", | |
"is_digraphical", | |
"is_valid_degree_sequence_erdos_gallai", | |
"is_valid_degree_sequence_havel_hakimi", | |
] | |
def is_graphical(sequence, method="eg"): | |
"""Returns True if sequence is a valid degree sequence. | |
A degree sequence is valid if some graph can realize it. | |
Parameters | |
---------- | |
sequence : list or iterable container | |
A sequence of integer node degrees | |
method : "eg" | "hh" (default: 'eg') | |
The method used to validate the degree sequence. | |
"eg" corresponds to the Erdős-Gallai algorithm | |
[EG1960]_, [choudum1986]_, and | |
"hh" to the Havel-Hakimi algorithm | |
[havel1955]_, [hakimi1962]_, [CL1996]_. | |
Returns | |
------- | |
valid : bool | |
True if the sequence is a valid degree sequence and False if not. | |
Examples | |
-------- | |
>>> G = nx.path_graph(4) | |
>>> sequence = (d for n, d in G.degree()) | |
>>> nx.is_graphical(sequence) | |
True | |
To test a non-graphical sequence: | |
>>> sequence_list = [d for n, d in G.degree()] | |
>>> sequence_list[-1] += 1 | |
>>> nx.is_graphical(sequence_list) | |
False | |
References | |
---------- | |
.. [EG1960] Erdős and Gallai, Mat. Lapok 11 264, 1960. | |
.. [choudum1986] S.A. Choudum. "A simple proof of the Erdős-Gallai theorem on | |
graph sequences." Bulletin of the Australian Mathematical Society, 33, | |
pp 67-70, 1986. https://doi.org/10.1017/S0004972700002872 | |
.. [havel1955] Havel, V. "A Remark on the Existence of Finite Graphs" | |
Casopis Pest. Mat. 80, 477-480, 1955. | |
.. [hakimi1962] Hakimi, S. "On the Realizability of a Set of Integers as | |
Degrees of the Vertices of a Graph." SIAM J. Appl. Math. 10, 496-506, 1962. | |
.. [CL1996] G. Chartrand and L. Lesniak, "Graphs and Digraphs", | |
Chapman and Hall/CRC, 1996. | |
""" | |
if method == "eg": | |
valid = is_valid_degree_sequence_erdos_gallai(list(sequence)) | |
elif method == "hh": | |
valid = is_valid_degree_sequence_havel_hakimi(list(sequence)) | |
else: | |
msg = "`method` must be 'eg' or 'hh'" | |
raise nx.NetworkXException(msg) | |
return valid | |
def _basic_graphical_tests(deg_sequence): | |
# Sort and perform some simple tests on the sequence | |
deg_sequence = nx.utils.make_list_of_ints(deg_sequence) | |
p = len(deg_sequence) | |
num_degs = [0] * p | |
dmax, dmin, dsum, n = 0, p, 0, 0 | |
for d in deg_sequence: | |
# Reject if degree is negative or larger than the sequence length | |
if d < 0 or d >= p: | |
raise nx.NetworkXUnfeasible | |
# Process only the non-zero integers | |
elif d > 0: | |
dmax, dmin, dsum, n = max(dmax, d), min(dmin, d), dsum + d, n + 1 | |
num_degs[d] += 1 | |
# Reject sequence if it has odd sum or is oversaturated | |
if dsum % 2 or dsum > n * (n - 1): | |
raise nx.NetworkXUnfeasible | |
return dmax, dmin, dsum, n, num_degs | |
def is_valid_degree_sequence_havel_hakimi(deg_sequence): | |
r"""Returns True if deg_sequence can be realized by a simple graph. | |
The validation proceeds using the Havel-Hakimi theorem | |
[havel1955]_, [hakimi1962]_, [CL1996]_. | |
Worst-case run time is $O(s)$ where $s$ is the sum of the sequence. | |
Parameters | |
---------- | |
deg_sequence : list | |
A list of integers where each element specifies the degree of a node | |
in a graph. | |
Returns | |
------- | |
valid : bool | |
True if deg_sequence is graphical and False if not. | |
Examples | |
-------- | |
>>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (3, 4), (4, 2), (5, 1), (5, 4)]) | |
>>> sequence = (d for _, d in G.degree()) | |
>>> nx.is_valid_degree_sequence_havel_hakimi(sequence) | |
True | |
To test a non-valid sequence: | |
>>> sequence_list = [d for _, d in G.degree()] | |
>>> sequence_list[-1] += 1 | |
>>> nx.is_valid_degree_sequence_havel_hakimi(sequence_list) | |
False | |
Notes | |
----- | |
The ZZ condition says that for the sequence d if | |
.. math:: | |
|d| >= \frac{(\max(d) + \min(d) + 1)^2}{4*\min(d)} | |
then d is graphical. This was shown in Theorem 6 in [1]_. | |
References | |
---------- | |
.. [1] I.E. Zverovich and V.E. Zverovich. "Contributions to the theory | |
of graphic sequences", Discrete Mathematics, 105, pp. 292-303 (1992). | |
.. [havel1955] Havel, V. "A Remark on the Existence of Finite Graphs" | |
Casopis Pest. Mat. 80, 477-480, 1955. | |
.. [hakimi1962] Hakimi, S. "On the Realizability of a Set of Integers as | |
Degrees of the Vertices of a Graph." SIAM J. Appl. Math. 10, 496-506, 1962. | |
.. [CL1996] G. Chartrand and L. Lesniak, "Graphs and Digraphs", | |
Chapman and Hall/CRC, 1996. | |
""" | |
try: | |
dmax, dmin, dsum, n, num_degs = _basic_graphical_tests(deg_sequence) | |
except nx.NetworkXUnfeasible: | |
return False | |
# Accept if sequence has no non-zero degrees or passes the ZZ condition | |
if n == 0 or 4 * dmin * n >= (dmax + dmin + 1) * (dmax + dmin + 1): | |
return True | |
modstubs = [0] * (dmax + 1) | |
# Successively reduce degree sequence by removing the maximum degree | |
while n > 0: | |
# Retrieve the maximum degree in the sequence | |
while num_degs[dmax] == 0: | |
dmax -= 1 | |
# If there are not enough stubs to connect to, then the sequence is | |
# not graphical | |
if dmax > n - 1: | |
return False | |
# Remove largest stub in list | |
num_degs[dmax], n = num_degs[dmax] - 1, n - 1 | |
# Reduce the next dmax largest stubs | |
mslen = 0 | |
k = dmax | |
for i in range(dmax): | |
while num_degs[k] == 0: | |
k -= 1 | |
num_degs[k], n = num_degs[k] - 1, n - 1 | |
if k > 1: | |
modstubs[mslen] = k - 1 | |
mslen += 1 | |
# Add back to the list any non-zero stubs that were removed | |
for i in range(mslen): | |
stub = modstubs[i] | |
num_degs[stub], n = num_degs[stub] + 1, n + 1 | |
return True | |
def is_valid_degree_sequence_erdos_gallai(deg_sequence): | |
r"""Returns True if deg_sequence can be realized by a simple graph. | |
The validation is done using the Erdős-Gallai theorem [EG1960]_. | |
Parameters | |
---------- | |
deg_sequence : list | |
A list of integers | |
Returns | |
------- | |
valid : bool | |
True if deg_sequence is graphical and False if not. | |
Examples | |
-------- | |
>>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (3, 4), (4, 2), (5, 1), (5, 4)]) | |
>>> sequence = (d for _, d in G.degree()) | |
>>> nx.is_valid_degree_sequence_erdos_gallai(sequence) | |
True | |
To test a non-valid sequence: | |
>>> sequence_list = [d for _, d in G.degree()] | |
>>> sequence_list[-1] += 1 | |
>>> nx.is_valid_degree_sequence_erdos_gallai(sequence_list) | |
False | |
Notes | |
----- | |
This implementation uses an equivalent form of the Erdős-Gallai criterion. | |
Worst-case run time is $O(n)$ where $n$ is the length of the sequence. | |
Specifically, a sequence d is graphical if and only if the | |
sum of the sequence is even and for all strong indices k in the sequence, | |
.. math:: | |
\sum_{i=1}^{k} d_i \leq k(k-1) + \sum_{j=k+1}^{n} \min(d_i,k) | |
= k(n-1) - ( k \sum_{j=0}^{k-1} n_j - \sum_{j=0}^{k-1} j n_j ) | |
A strong index k is any index where d_k >= k and the value n_j is the | |
number of occurrences of j in d. The maximal strong index is called the | |
Durfee index. | |
This particular rearrangement comes from the proof of Theorem 3 in [2]_. | |
The ZZ condition says that for the sequence d if | |
.. math:: | |
|d| >= \frac{(\max(d) + \min(d) + 1)^2}{4*\min(d)} | |
then d is graphical. This was shown in Theorem 6 in [2]_. | |
References | |
---------- | |
.. [1] A. Tripathi and S. Vijay. "A note on a theorem of Erdős & Gallai", | |
Discrete Mathematics, 265, pp. 417-420 (2003). | |
.. [2] I.E. Zverovich and V.E. Zverovich. "Contributions to the theory | |
of graphic sequences", Discrete Mathematics, 105, pp. 292-303 (1992). | |
.. [EG1960] Erdős and Gallai, Mat. Lapok 11 264, 1960. | |
""" | |
try: | |
dmax, dmin, dsum, n, num_degs = _basic_graphical_tests(deg_sequence) | |
except nx.NetworkXUnfeasible: | |
return False | |
# Accept if sequence has no non-zero degrees or passes the ZZ condition | |
if n == 0 or 4 * dmin * n >= (dmax + dmin + 1) * (dmax + dmin + 1): | |
return True | |
# Perform the EG checks using the reformulation of Zverovich and Zverovich | |
k, sum_deg, sum_nj, sum_jnj = 0, 0, 0, 0 | |
for dk in range(dmax, dmin - 1, -1): | |
if dk < k + 1: # Check if already past Durfee index | |
return True | |
if num_degs[dk] > 0: | |
run_size = num_degs[dk] # Process a run of identical-valued degrees | |
if dk < k + run_size: # Check if end of run is past Durfee index | |
run_size = dk - k # Adjust back to Durfee index | |
sum_deg += run_size * dk | |
for v in range(run_size): | |
sum_nj += num_degs[k + v] | |
sum_jnj += (k + v) * num_degs[k + v] | |
k += run_size | |
if sum_deg > k * (n - 1) - k * sum_nj + sum_jnj: | |
return False | |
return True | |
def is_multigraphical(sequence): | |
"""Returns True if some multigraph can realize the sequence. | |
Parameters | |
---------- | |
sequence : list | |
A list of integers | |
Returns | |
------- | |
valid : bool | |
True if deg_sequence is a multigraphic degree sequence and False if not. | |
Examples | |
-------- | |
>>> G = nx.MultiGraph([(1, 2), (1, 3), (2, 3), (3, 4), (4, 2), (5, 1), (5, 4)]) | |
>>> sequence = (d for _, d in G.degree()) | |
>>> nx.is_multigraphical(sequence) | |
True | |
To test a non-multigraphical sequence: | |
>>> sequence_list = [d for _, d in G.degree()] | |
>>> sequence_list[-1] += 1 | |
>>> nx.is_multigraphical(sequence_list) | |
False | |
Notes | |
----- | |
The worst-case run time is $O(n)$ where $n$ is the length of the sequence. | |
References | |
---------- | |
.. [1] S. L. Hakimi. "On the realizability of a set of integers as | |
degrees of the vertices of a linear graph", J. SIAM, 10, pp. 496-506 | |
(1962). | |
""" | |
try: | |
deg_sequence = nx.utils.make_list_of_ints(sequence) | |
except nx.NetworkXError: | |
return False | |
dsum, dmax = 0, 0 | |
for d in deg_sequence: | |
if d < 0: | |
return False | |
dsum, dmax = dsum + d, max(dmax, d) | |
if dsum % 2 or dsum < 2 * dmax: | |
return False | |
return True | |
def is_pseudographical(sequence): | |
"""Returns True if some pseudograph can realize the sequence. | |
Every nonnegative integer sequence with an even sum is pseudographical | |
(see [1]_). | |
Parameters | |
---------- | |
sequence : list or iterable container | |
A sequence of integer node degrees | |
Returns | |
------- | |
valid : bool | |
True if the sequence is a pseudographic degree sequence and False if not. | |
Examples | |
-------- | |
>>> G = nx.Graph([(1, 2), (1, 3), (2, 3), (3, 4), (4, 2), (5, 1), (5, 4)]) | |
>>> sequence = (d for _, d in G.degree()) | |
>>> nx.is_pseudographical(sequence) | |
True | |
To test a non-pseudographical sequence: | |
>>> sequence_list = [d for _, d in G.degree()] | |
>>> sequence_list[-1] += 1 | |
>>> nx.is_pseudographical(sequence_list) | |
False | |
Notes | |
----- | |
The worst-case run time is $O(n)$ where n is the length of the sequence. | |
References | |
---------- | |
.. [1] F. Boesch and F. Harary. "Line removal algorithms for graphs | |
and their degree lists", IEEE Trans. Circuits and Systems, CAS-23(12), | |
pp. 778-782 (1976). | |
""" | |
try: | |
deg_sequence = nx.utils.make_list_of_ints(sequence) | |
except nx.NetworkXError: | |
return False | |
return sum(deg_sequence) % 2 == 0 and min(deg_sequence) >= 0 | |
def is_digraphical(in_sequence, out_sequence): | |
r"""Returns True if some directed graph can realize the in- and out-degree | |
sequences. | |
Parameters | |
---------- | |
in_sequence : list or iterable container | |
A sequence of integer node in-degrees | |
out_sequence : list or iterable container | |
A sequence of integer node out-degrees | |
Returns | |
------- | |
valid : bool | |
True if in and out-sequences are digraphic False if not. | |
Examples | |
-------- | |
>>> G = nx.DiGraph([(1, 2), (1, 3), (2, 3), (3, 4), (4, 2), (5, 1), (5, 4)]) | |
>>> in_seq = (d for n, d in G.in_degree()) | |
>>> out_seq = (d for n, d in G.out_degree()) | |
>>> nx.is_digraphical(in_seq, out_seq) | |
True | |
To test a non-digraphical scenario: | |
>>> in_seq_list = [d for n, d in G.in_degree()] | |
>>> in_seq_list[-1] += 1 | |
>>> nx.is_digraphical(in_seq_list, out_seq) | |
False | |
Notes | |
----- | |
This algorithm is from Kleitman and Wang [1]_. | |
The worst case runtime is $O(s \times \log n)$ where $s$ and $n$ are the | |
sum and length of the sequences respectively. | |
References | |
---------- | |
.. [1] D.J. Kleitman and D.L. Wang | |
Algorithms for Constructing Graphs and Digraphs with Given Valences | |
and Factors, Discrete Mathematics, 6(1), pp. 79-88 (1973) | |
""" | |
try: | |
in_deg_sequence = nx.utils.make_list_of_ints(in_sequence) | |
out_deg_sequence = nx.utils.make_list_of_ints(out_sequence) | |
except nx.NetworkXError: | |
return False | |
# Process the sequences and form two heaps to store degree pairs with | |
# either zero or non-zero out degrees | |
sumin, sumout, nin, nout = 0, 0, len(in_deg_sequence), len(out_deg_sequence) | |
maxn = max(nin, nout) | |
maxin = 0 | |
if maxn == 0: | |
return True | |
stubheap, zeroheap = [], [] | |
for n in range(maxn): | |
in_deg, out_deg = 0, 0 | |
if n < nout: | |
out_deg = out_deg_sequence[n] | |
if n < nin: | |
in_deg = in_deg_sequence[n] | |
if in_deg < 0 or out_deg < 0: | |
return False | |
sumin, sumout, maxin = sumin + in_deg, sumout + out_deg, max(maxin, in_deg) | |
if in_deg > 0: | |
stubheap.append((-1 * out_deg, -1 * in_deg)) | |
elif out_deg > 0: | |
zeroheap.append(-1 * out_deg) | |
if sumin != sumout: | |
return False | |
heapq.heapify(stubheap) | |
heapq.heapify(zeroheap) | |
modstubs = [(0, 0)] * (maxin + 1) | |
# Successively reduce degree sequence by removing the maximum out degree | |
while stubheap: | |
# Take the first value in the sequence with non-zero in degree | |
(freeout, freein) = heapq.heappop(stubheap) | |
freein *= -1 | |
if freein > len(stubheap) + len(zeroheap): | |
return False | |
# Attach out stubs to the nodes with the most in stubs | |
mslen = 0 | |
for i in range(freein): | |
if zeroheap and (not stubheap or stubheap[0][0] > zeroheap[0]): | |
stubout = heapq.heappop(zeroheap) | |
stubin = 0 | |
else: | |
(stubout, stubin) = heapq.heappop(stubheap) | |
if stubout == 0: | |
return False | |
# Check if target is now totally connected | |
if stubout + 1 < 0 or stubin < 0: | |
modstubs[mslen] = (stubout + 1, stubin) | |
mslen += 1 | |
# Add back the nodes to the heap that still have available stubs | |
for i in range(mslen): | |
stub = modstubs[i] | |
if stub[1] < 0: | |
heapq.heappush(stubheap, stub) | |
else: | |
heapq.heappush(zeroheap, stub[0]) | |
if freeout < 0: | |
heapq.heappush(zeroheap, freeout) | |
return True | |