""" ============================================== Label Propagation learning a complex structure ============================================== Example of LabelPropagation learning a complex internal structure to demonstrate "manifold learning". The outer circle should be labeled "red" and the inner circle "blue". Because both label groups lie inside their own distinct shape, we can see that the labels propagate correctly around the circle. """ print(__doc__) # Authors: Clay Woolam # Andreas Mueller # Licence: BSD import numpy as np import matplotlib.pyplot as plt from sklearn.semi_supervised import label_propagation from sklearn.datasets import make_circles # generate ring with inner box n_samples = 200 X, y = make_circles(n_samples=n_samples, shuffle=False) outer, inner = 0, 1 labels = -np.ones(n_samples) labels[0] = outer labels[-1] = inner ############################################################################### # Learn with LabelSpreading label_spread = label_propagation.LabelSpreading(kernel='knn', alpha=1.0) label_spread.fit(X, labels) ############################################################################### # Plot output labels output_labels = label_spread.transduction_ plt.figure(figsize=(8.5, 4)) plt.subplot(1, 2, 1) plot_outer_labeled, = plt.plot(X[labels == outer, 0], X[labels == outer, 1], 'rs') plot_unlabeled, = plt.plot(X[labels == -1, 0], X[labels == -1, 1], 'g.') plot_inner_labeled, = plt.plot(X[labels == inner, 0], X[labels == inner, 1], 'bs') plt.legend((plot_outer_labeled, plot_inner_labeled, plot_unlabeled), ('Outer Labeled', 'Inner Labeled', 'Unlabeled'), 'upper left', numpoints=1, shadow=False) plt.title("Raw data (2 classes=red and blue)") plt.subplot(1, 2, 2) output_label_array = np.asarray(output_labels) outer_numbers = np.where(output_label_array == outer)[0] inner_numbers = np.where(output_label_array == inner)[0] plot_outer, = plt.plot(X[outer_numbers, 0], X[outer_numbers, 1], 'rs') plot_inner, = plt.plot(X[inner_numbers, 0], X[inner_numbers, 1], 'bs') plt.legend((plot_outer, plot_inner), ('Outer Learned', 'Inner Learned'), 'upper left', numpoints=1, shadow=False) plt.title("Labels learned with Label Spreading (KNN)") plt.subplots_adjust(left=0.07, bottom=0.07, right=0.93, top=0.92) plt.show()