go-mo-dataset / code /stats.py
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New: Source code
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import networkx as nx
import numpy as np
def print_graph_stats(G):
n = G.number_of_nodes()
m = G.number_of_edges()
print(f"Number of nodes: {n}")
print(f"Number of edges: {m}")
if n == 0:
print("Average degree: 0.0")
print("Connectivity (weak or strong): False")
print("Is connected as undirected graph: False")
print("Number of weakly connected components: 0")
print("Number of strongly connected components: 0")
print("Number of isolated nodes: 0")
return
# Average degree via m/n
avg_deg = m / n
print(f"Average degree: {avg_deg}")
# Connectivity checks for directed graphs
is_weak = nx.is_weakly_connected(G)
is_strong = nx.is_strongly_connected(G)
print(f"Connectivity (weak or strong): {is_weak or is_strong}")
# Undirected connectivity can raise on empty graphs; guard with try/except just in case
try:
und_connected = nx.is_connected(G.to_undirected(as_view=True))
except Exception:
und_connected = False
print(f"Is connected as undirected graph: {und_connected}")
print(f"Number of weakly connected components: {nx.number_weakly_connected_components(G)}")
print(f"Number of strongly connected components: {nx.number_strongly_connected_components(G)}")
print(f"Number of isolated nodes: {len(list(nx.isolates(G)))}")
def audit_adj(adj: np.ndarray):
has_self = np.all(np.diag(adj) > 0) # check self-loops
sym = np.allclose(adj, adj.T, atol=1e-8)
deg = adj.sum(1)
isolated = np.sum(deg==0)
return {"n":adj.shape[0], "m":int(adj.sum()), "sym":sym, "self_loops":has_self,
"avg_deg":float(deg.mean()), "isolated_nodes":int(isolated)}