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Wasserstein distance user manual
================================
Definition
----------

.. include:: wasserstein_distance_sum.inc

This implementation is based on ideas from "Large Scale Computation of Means and Cluster for Persistence Diagrams via Optimal Transport".

Function
--------
.. autofunction:: gudhi.wasserstein.wasserstein_distance


Basic example
-------------

This example computes the 1-Wasserstein distance from 2 persistence diagrams with euclidean ground metric.
Note that persistence diagrams must be submitted as (n x 2) numpy arrays and must not contain inf values.

.. testcode::

    import gudhi.wasserstein
    import numpy as np

    diag1 = np.array([[2.7, 3.7],[9.6, 14.],[34.2, 34.974]])
    diag2 = np.array([[2.8, 4.45],[9.5, 14.1]])

    message = "Wasserstein distance value = " + '%.2f' % gudhi.wasserstein.wasserstein_distance(diag1, diag2, internal_p=2., q=1.)
    print(message)

The output is:

.. testoutput::

    Wasserstein distance value = 1.45