diff options
Diffstat (limited to 'examples/barycenters/plot_barycenter_1D.py')
-rw-r--r-- | examples/barycenters/plot_barycenter_1D.py | 63 |
1 files changed, 23 insertions, 40 deletions
diff --git a/examples/barycenters/plot_barycenter_1D.py b/examples/barycenters/plot_barycenter_1D.py index 63dc460..2373e99 100644 --- a/examples/barycenters/plot_barycenter_1D.py +++ b/examples/barycenters/plot_barycenter_1D.py @@ -18,10 +18,10 @@ SIAM Journal on Scientific Computing, 37(2), A1111-A1138. # # License: MIT License -# sphinx_gallery_thumbnail_number = 4 +# sphinx_gallery_thumbnail_number = 1 import numpy as np -import matplotlib.pylab as pl +import matplotlib.pyplot as plt import ot # necessary for 3d plot even if not used from mpl_toolkits.mplot3d import Axes3D # noqa @@ -51,18 +51,6 @@ M = ot.utils.dist0(n) M /= M.max() ############################################################################## -# Plot data -# --------- - -#%% plot the distributions - -pl.figure(1, figsize=(6.4, 3)) -for i in range(n_distributions): - pl.plot(x, A[:, i]) -pl.title('Distributions') -pl.tight_layout() - -############################################################################## # Barycenter computation # ---------------------- @@ -78,24 +66,20 @@ bary_l2 = A.dot(weights) reg = 1e-3 bary_wass = ot.bregman.barycenter(A, M, reg, weights) -pl.figure(2) -pl.clf() -pl.subplot(2, 1, 1) -for i in range(n_distributions): - pl.plot(x, A[:, i]) -pl.title('Distributions') +f, (ax1, ax2) = plt.subplots(2, 1, tight_layout=True, num=1) +ax1.plot(x, A, color="black") +ax1.set_title('Distributions') -pl.subplot(2, 1, 2) -pl.plot(x, bary_l2, 'r', label='l2') -pl.plot(x, bary_wass, 'g', label='Wasserstein') -pl.legend() -pl.title('Barycenters') -pl.tight_layout() +ax2.plot(x, bary_l2, 'r', label='l2') +ax2.plot(x, bary_wass, 'g', label='Wasserstein') +ax2.set_title('Barycenters') + +plt.legend() +plt.show() ############################################################################## # Barycentric interpolation # ------------------------- - #%% barycenter interpolation n_alpha = 11 @@ -106,24 +90,23 @@ B_l2 = np.zeros((n, n_alpha)) B_wass = np.copy(B_l2) -for i in range(0, n_alpha): +for i in range(n_alpha): alpha = alpha_list[i] weights = np.array([1 - alpha, alpha]) B_l2[:, i] = A.dot(weights) B_wass[:, i] = ot.bregman.barycenter(A, M, reg, weights) #%% plot interpolation +plt.figure(2) -pl.figure(3) - -cmap = pl.cm.get_cmap('viridis') +cmap = plt.cm.get_cmap('viridis') verts = [] zs = alpha_list for i, z in enumerate(zs): ys = B_l2[:, i] verts.append(list(zip(x, ys))) -ax = pl.gcf().gca(projection='3d') +ax = plt.gcf().gca(projection='3d') poly = PolyCollection(verts, facecolors=[cmap(a) for a in alpha_list]) poly.set_alpha(0.7) @@ -134,18 +117,18 @@ ax.set_ylabel('$\\alpha$') ax.set_ylim3d(0, 1) ax.set_zlabel('') ax.set_zlim3d(0, B_l2.max() * 1.01) -pl.title('Barycenter interpolation with l2') -pl.tight_layout() +plt.title('Barycenter interpolation with l2') +plt.tight_layout() -pl.figure(4) -cmap = pl.cm.get_cmap('viridis') +plt.figure(3) +cmap = plt.cm.get_cmap('viridis') verts = [] zs = alpha_list for i, z in enumerate(zs): ys = B_wass[:, i] verts.append(list(zip(x, ys))) -ax = pl.gcf().gca(projection='3d') +ax = plt.gcf().gca(projection='3d') poly = PolyCollection(verts, facecolors=[cmap(a) for a in alpha_list]) poly.set_alpha(0.7) @@ -156,7 +139,7 @@ ax.set_ylabel('$\\alpha$') ax.set_ylim3d(0, 1) ax.set_zlabel('') ax.set_zlim3d(0, B_l2.max() * 1.01) -pl.title('Barycenter interpolation with Wasserstein') -pl.tight_layout() +plt.title('Barycenter interpolation with Wasserstein') +plt.tight_layout() -pl.show() +plt.show() |