Submit
Path:
~
/
/
opt
/
alt
/
python35
/
share
/
doc
/
alt-python35-scikit-learn-0.18.1
/
examples
/
cluster
/
File Content:
plot_agglomerative_clustering.py
""" Agglomerative clustering with and without structure =================================================== This example shows the effect of imposing a connectivity graph to capture local structure in the data. The graph is simply the graph of 20 nearest neighbors. Two consequences of imposing a connectivity can be seen. First clustering with a connectivity matrix is much faster. Second, when using a connectivity matrix, average and complete linkage are unstable and tend to create a few clusters that grow very quickly. Indeed, average and complete linkage fight this percolation behavior by considering all the distances between two clusters when merging them. The connectivity graph breaks this mechanism. This effect is more pronounced for very sparse graphs (try decreasing the number of neighbors in kneighbors_graph) and with complete linkage. In particular, having a very small number of neighbors in the graph, imposes a geometry that is close to that of single linkage, which is well known to have this percolation instability. """ # Authors: Gael Varoquaux, Nelle Varoquaux # License: BSD 3 clause import time import matplotlib.pyplot as plt import numpy as np from sklearn.cluster import AgglomerativeClustering from sklearn.neighbors import kneighbors_graph # Generate sample data n_samples = 1500 np.random.seed(0) t = 1.5 * np.pi * (1 + 3 * np.random.rand(1, n_samples)) x = t * np.cos(t) y = t * np.sin(t) X = np.concatenate((x, y)) X += .7 * np.random.randn(2, n_samples) X = X.T # Create a graph capturing local connectivity. Larger number of neighbors # will give more homogeneous clusters to the cost of computation # time. A very large number of neighbors gives more evenly distributed # cluster sizes, but may not impose the local manifold structure of # the data knn_graph = kneighbors_graph(X, 30, include_self=False) for connectivity in (None, knn_graph): for n_clusters in (30, 3): plt.figure(figsize=(10, 4)) for index, linkage in enumerate(('average', 'complete', 'ward')): plt.subplot(1, 3, index + 1) model = AgglomerativeClustering(linkage=linkage, connectivity=connectivity, n_clusters=n_clusters) t0 = time.time() model.fit(X) elapsed_time = time.time() - t0 plt.scatter(X[:, 0], X[:, 1], c=model.labels_, cmap=plt.cm.spectral) plt.title('linkage=%s (time %.2fs)' % (linkage, elapsed_time), fontdict=dict(verticalalignment='top')) plt.axis('equal') plt.axis('off') plt.subplots_adjust(bottom=0, top=.89, wspace=0, left=0, right=1) plt.suptitle('n_cluster=%i, connectivity=%r' % (n_clusters, connectivity is not None), size=17) plt.show()
Submit
FILE
FOLDER
Name
Size
Permission
Action
README.txt
101 bytes
0644
plot_adjusted_for_chance_measures.py
4300 bytes
0644
plot_affinity_propagation.py
2304 bytes
0644
plot_agglomerative_clustering.py
2931 bytes
0644
plot_agglomerative_clustering_metrics.py
4492 bytes
0644
plot_birch_vs_minibatchkmeans.py
3694 bytes
0644
plot_cluster_comparison.py
4681 bytes
0644
plot_cluster_iris.py
2593 bytes
0644
plot_color_quantization.py
3444 bytes
0644
plot_dbscan.py
2479 bytes
0644
plot_dict_face_patches.py
2747 bytes
0644
plot_digits_agglomeration.py
1694 bytes
0644
plot_digits_linkage.py
2959 bytes
0644
plot_face_compress.py
2479 bytes
0644
plot_face_segmentation.py
2839 bytes
0644
plot_face_ward_segmentation.py
2460 bytes
0644
plot_feature_agglomeration_vs_univariate_selection.py
3903 bytes
0644
plot_kmeans_assumptions.py
2040 bytes
0644
plot_kmeans_digits.py
4524 bytes
0644
plot_kmeans_silhouette_analysis.py
5888 bytes
0644
plot_kmeans_stability_low_dim_dense.py
4324 bytes
0644
plot_mean_shift.py
1793 bytes
0644
plot_mini_batch_kmeans.py
4092 bytes
0644
plot_segmentation_toy.py
3522 bytes
0644
plot_ward_structured_vs_unstructured.py
3369 bytes
0644
N4ST4R_ID | Naxtarrr