Пример #1
0
 def test_SPD_graph_cv(self):
   expected = [
       [0,    0.230,0.380,0.390,0,    0,    0,    0,    0,    0],
       [0.603,0,    0.209,0,    0.188,0,    0,    0,    0,    0],
       [0.366,0.133,0,    0,    0.501,0,    0,    0,    0,    0],
       [0.414,0,    0.119,0,    0.383,0,    0,    0,    0.084,0],
       [0.002,0.062,0.482,0.454,0,    0,    0,    0,    0,    0],
       [0,    0,    0,    0,    0,    0,    0.921,0.079,0,    0],
       [0,    0,    0,    0,    0.006,0.584,0,    0,    0.088,0.322],
       [0,    0,    0,    0,    0,    0.286,0,    0,    0.288,0.426],
       [0,    0,    0,    0,    0,    0.052,0.541,0.254,0,    0.153],
       [0,    0,    0,    0,    0,    0,    0.458,0.408,0.134,0]
   ]
   G = sparse_regularized_graph(self.pts, positive=True)
   assert_array_almost_equal(G.matrix('dense'), expected, decimal=3)
Пример #2
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 def test_SPD_graph(self):
   expected = [
       [0,    0.216,0.380,0.404,0,    0,    0,    0,    0,    0],
       [0.676,0,    0.123,0,    0.202,0,    0,    0,    0,    0],
       [0.377,0.140,0,    0,    0.483,0,    0,    0,    0,    0],
       [0.506,0,    0,    0,    0.441,0,    0,    0,    0.053,0],
       [0.017,0.065,0.454,0.464,0,    0,    0,    0,    0,    0],
       [0,    0,    0,    0,    0,    0,    0.907,0.093,0,    0],
       [0,    0,    0,    0,    0,    0.575,0,    0,    0.117,0.308],
       [0,    0,    0,    0,    0,    0.295,0,    0,    0.319,0.386],
       [0,    0,    0,    0,    0,    0.010,0.599,0.274,0,    0.117],
       [0,    0,    0,    0,    0,    0,    0.440,0.386,0.174,0]
   ]
   G = sparse_regularized_graph(self.pts, positive=True, sparsity_param=0.002)
   assert_array_almost_equal(G.matrix('dense'), expected, decimal=3)
Пример #3
0
 def test_L1_knn_graph(self):
   expected = [
       [0,    0.286,0.352,0.362,0,    0,    0,    0,    0,    0],
       [0.637,0,    0.209,0,    0.153,0,    0,    0,    0,    0],
       [0.446,0.133,0,    0,    0.421,0,    0,    0,    0,    0],
       [0.493,0,    0,    0,    0.507,0,    0,    0,    0,    0],
       [0,    0,    0.535,0.465,0,    0,    0,    0,    0,    0],
       [0,    0,    0,    0,    0,    0,    0.924,0,    0.076,0],
       [0,    0,    0,    0,    0,    0.603,0,    0,    0.136,0.261],
       [0,    0,    0,    0,    0,    0,    0,    0,    0.454,0.546],
       [0,    0,    0,    0,    0,    0.138,0.520,0,    0,    0.343],
       [0,    0,    0,    0,    0,    0,    0.441,0.395,0.164,0]
   ]
   G = sparse_regularized_graph(self.pts, sparsity_param=0.005, kmax=3)
   assert_array_almost_equal(G.matrix('dense'), expected, decimal=3)
Пример #4
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 def test_L1_graph(self):
   expected = [
       [0,    0.286,0.352,0.362,0,    0,    0,    0,    0,    0],
       [0.637,0,    0.209,0,    0.153,0,    0,    0,    0,    0],
       [0.446,0.133,0,    0,    0.421,0,    0,    0,    0,    0],
       [0.493,0,    0,    0,    0.507,0,    0,    0,    0,    0],
       [0,    0.062,0.493,0.444,0,    0,    0,    0,    0,    0],
       [0,    0,    0,    0,    0,    0,    0.906,0.055,0.039,0],
       [0,    0,    0,    0,    0,    0.603,0,    0,    0.136,0.261],
       [0,    0,    0,    0,    0,    0.172,0,    0,    0.332,0.496],
       [0,    0,    0,    0,    0,    0.007,0.576,0.278,0,    0.139],
       [0,    0,    0,    0,    0,    0,    0.441,0.395,0.164,0]
   ]
   G = sparse_regularized_graph(self.pts, sparsity_param=0.005)
   assert_array_almost_equal(G.matrix('dense'), expected, decimal=3)
Пример #5
0
 def test_L1_graph_cv(self):
   expected = [
       [0,    0.231,0.372,0.397,0,    0,    0,    0,    0,    0],
       [0.670,0,    0.205,0,    0.124,0,    0,    0,    0,    0],
       [0.437,0.138,0,    0.012,0.413,0,    0,    0,    0,    0],
       [0.503,0,    0,    0,    0.497,0,    0,    0,    0,    0],
       [0,    0.053,0.509,0.438,0,    0,    0,    0,    0,    0],
       [0,    0,    0,    0,    0,    0,    0.914,0.061,0.025,0],
       [0,    0,    0,    0,    0,    0.597,0,    0,    0.139,0.264],
       [0,    0,    0,    0,    0,    0.311,0,    0,    0.391,0.297],
       [0,    0,    0,    0,    0,    0.043,0.544,0.310,0,    0.103],
       [0,    0,    0,    0,    0,    0,    0.428,0.399,0.173,0]
   ]
   with warnings.catch_warnings():
     warnings.filterwarnings('ignore', category=ConvergenceWarning)
     G = sparse_regularized_graph(self.pts)
   assert_array_almost_equal(G.matrix('dense'), expected, decimal=3)