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author | yuichi-ike <yuichi.ike.1990@gmail.com> | 2020-05-13 09:54:47 +0900 |
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committer | yuichi-ike <yuichi.ike.1990@gmail.com> | 2020-05-13 09:54:47 +0900 |
commit | fd7112b7e665d495543d9647f675a14f75061bbf (patch) | |
tree | b3ce0738be05f39b15fbf465bd441d3b5e2ee80c /src/python/doc/rips_complex_user.rst | |
parent | c60caee5623d0b1ef55e7b2a5854604080419df1 (diff) |
documents modified
Diffstat (limited to 'src/python/doc/rips_complex_user.rst')
-rw-r--r-- | src/python/doc/rips_complex_user.rst | 48 |
1 files changed, 48 insertions, 0 deletions
diff --git a/src/python/doc/rips_complex_user.rst b/src/python/doc/rips_complex_user.rst index 8efb12e6..adb002a8 100644 --- a/src/python/doc/rips_complex_user.rst +++ b/src/python/doc/rips_complex_user.rst @@ -347,3 +347,51 @@ until dimension 1 - one skeleton graph in other words), the output is: points in the persistence diagram will be under the diagonal, and bottleneck distance and persistence graphical tool will not work properly, this is a known issue. + +Weighted Rips Complex +--------------------- + +Example from a distance matrix and weights +^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ + +The following example computes the weighted Rips filtration associated with a distance matrix and weights on vertices. + +.. testcode:: + + from gudhi.weighted_rips_complex import WeightedRipsComplex + dist = [[], [1]] + weights = [1, 100] + w_rips = WeightedRipsComplex(distance_matrix=dist, weights=weights) + st = w_rips.create_simplex_tree(max_dimension=2) + print(list(st.get_filtration())) + +The output is: + +.. testoutput:: + + [([0], 2.0), ([1], 200.0), ([0, 1], 200.0)] + +Example from a point cloud combined with DistanceToMeasure +---------------------------------------------------------- + +Combining with DistanceToMeasure, one can compute the DTM-filtration of a point set, as in `this notebook <https://github.com/GUDHI/TDA-tutorial/blob/master/Tuto-GUDHI-DTM-filtrations.ipynb>`_. + +.. testcode:: + + import numpy as np + from scipy.spatial.distance import cdist + from gudhi.point_cloud.dtm import DistanceToMeasure + from gudhi.weighted_rips_complex import WeightedRipsComplex + pts = np.array([[2.0, 2.0], [0.0, 1.0], [3.0, 4.0]]) + dist = cdist(pts,pts) + dtm = DistanceToMeasure(2, q=2, metric="precomputed") + r = dtm.fit_transform(dist) + w_rips = WeightedRipsComplex(distance_matrix=dist, weights=r) + st = w_rips.create_simplex_tree(max_dimension=2) + print(st.persistence()) + +The output is: + +.. testoutput:: + + [(0, (3.1622776601683795, inf)), (0, (3.1622776601683795, 5.39834563766817)), (0, (3.1622776601683795, 5.39834563766817))] |