/
mmpi.py
69 lines (58 loc) · 3.08 KB
/
mmpi.py
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
import qmain
import cluster_diffusion as cdiff
import numpy as np
SINGLETONS = False
WEIGHTED = False
ROWS_KNN = 10
COLS_KNN = 10
CLUSTER_KNN = 10
N_ROW_EIGS = 8
N_COL_EIGS = 8
def mmpi_questionnaire(matrix,iters):
col_data = matrix
col_aff = qmain.local_geometry_gaussian(col_data,knn=COLS_KNN,
init_eps_pt=False,symm_inner=True)
p,eigvals,eigvecs = cdiff.diffusion_embed(col_aff,n_eigs=N_COL_EIGS,
normalized=True)
n_eigs = np.sum(np.abs(eigvals[~np.isnan(eigvals)]) > 1e-14)
tree_cols = cdiff.cluster(eigvecs[:,1:n_eigs],eigvals[1:n_eigs],
knn=CLUSTER_KNN)
#tree_cols.disp_tree()
row_data = qmain.extend_coords_means(matrix.T,tree_cols,
weighted=WEIGHTED,
singletons=SINGLETONS)
#row_aff = qmain.local_geometry_norm_ip(row_data)
row_aff = qmain.local_geometry_gaussian(row_data,knn=ROWS_KNN,
init_eps_pt=False,symm_inner=True)
p,eigvals,eigvecs = cdiff.diffusion_embed(row_aff,n_eigs=N_ROW_EIGS,
normalized=True)
n_eigs = np.sum(np.abs(eigvals[~np.isnan(eigvals)]) > 1e-14)
tree_rows = cdiff.cluster(eigvecs[:,1:n_eigs],eigvals[1:n_eigs],
knn=CLUSTER_KNN)
#tree_rows.disp_tree()
for i in xrange(iters):
col_data = qmain.extend_coords_means(matrix,tree_rows,
weighted=WEIGHTED,
singletons=SINGLETONS)
col_aff = qmain.local_geometry_gaussian(col_data,knn=COLS_KNN,
init_eps_pt=False,symm_inner=False)
p,col_eigvals,col_eigvecs = cdiff.diffusion_embed(col_aff,
n_eigs=N_COL_EIGS,
normalized=True)
#print col_eigvals
n_eigs = np.sum(np.abs(col_eigvals[~np.isnan(col_eigvals)]) > 1e-14)
tree_cols = cdiff.cluster(col_eigvecs[:,1:n_eigs],col_eigvals[1:n_eigs],
knn=CLUSTER_KNN)
#tree_cols.disp_tree()
row_data = qmain.extend_coords_means(matrix.T,tree_cols,WEIGHTED,SINGLETONS)
row_aff = qmain.local_geometry_gaussian(row_data,knn=ROWS_KNN,
init_eps_pt=False,symm_inner=False)
p,row_eigvals,row_eigvecs = cdiff.diffusion_embed(row_aff,
n_eigs=N_ROW_EIGS,
normalized=True)
#print row_eigvals
n_eigs = np.sum(np.abs(row_eigvals[~np.isnan(row_eigvals)]) > 1e-14)
tree_rows = cdiff.cluster(row_eigvecs[:,1:n_eigs],row_eigvals[1:n_eigs],
knn=CLUSTER_KNN)
#tree_rows.disp_tree()
return tree_rows,tree_cols,row_eigvecs,col_eigvecs,row_eigvals,col_eigvals