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graph_loaders.py
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import networkx as nx
import numpy as np
import scipy as sp
from scipy.sparse import coo_matrix
from sklearn.neighbors import kneighbors_graph as knn_gr, radius_neighbors_graph as rad_gr
def load_coo_matrix(filename):
coo = np.loadtxt(filename)
if len(coo.shape) < 2:
coo = np.reshape(coo,(-1,3))
if coo.shape[0] <= 1:
return np.array([[1.0]])
coo = coo[coo[:,0] != 0.0,:]
row = coo[:,0].astype('int')
col = coo[:,1].astype('int')
data = coo[:,2].astype('float')
aapr = coo_matrix((data,(row,col))).todense()
return aapr
def construct_coord_graph(filename, neighspec):
print(neighspec)
method, param = neighspec
X = np.loadtxt(filename)
if method == 'knn':
return knn_gr(X,int(param),mode='connectivity',include_self=False).toarray()
else:
return rad_gr(X,float(param),mode='connectivity',include_self=False).toarray()
def load_graph(filename, gformat='dense', neigh_rule=None):
if 'gml' in filename.lower():
gg = nx.read_gml(filename)
aapr = nx.to_numpy_array(gg)
elif gformat == 'dense':
aapr = np.loadtxt(filename)
elif gformat == 'scipy_sparse':
aapr = load_coo_matrix(filename)
elif gformat == 'coords':
aapr = construct_coord_graph(filename,neigh_rule)
else:
pass
aa = np.triu(aapr, k=1)
aa += aa.T
dd = np.diagflat(np.sum(np.abs(aa),axis=-1))
ll = aa - dd
return ll