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比较玩具数据集上不同的层次聚类方法#
此示例展示了在“有趣”但仍然是二维的数据集上,不同层次聚类方法的链接方法的特点。
主要观察结果是
- 单链接速度快,在非球形数据上表现良好,但在存在噪声的情况下表现不佳。 
- 平均链接和完全链接在干净分离的球状簇上表现良好,但在其他情况下结果混合。 
- Ward 方法对于噪声数据最有效。 
虽然这些例子对算法提供了一些直觉,但这直觉可能不适用于非常高维的数据。
# Authors: The scikit-learn developers
# SPDX-License-Identifier: BSD-3-Clause
import time
import warnings
from itertools import cycle, islice
import matplotlib.pyplot as plt
import numpy as np
from sklearn import cluster, datasets
from sklearn.preprocessing import StandardScaler
生成数据集。我们选择足够大的大小来查看算法的可扩展性,但不要太大以避免运行时间过长
n_samples = 1500
noisy_circles = datasets.make_circles(
    n_samples=n_samples, factor=0.5, noise=0.05, random_state=170
)
noisy_moons = datasets.make_moons(n_samples=n_samples, noise=0.05, random_state=170)
blobs = datasets.make_blobs(n_samples=n_samples, random_state=170)
rng = np.random.RandomState(170)
no_structure = rng.rand(n_samples, 2), None
# Anisotropicly distributed data
X, y = datasets.make_blobs(n_samples=n_samples, random_state=170)
transformation = [[0.6, -0.6], [-0.4, 0.8]]
X_aniso = np.dot(X, transformation)
aniso = (X_aniso, y)
# blobs with varied variances
varied = datasets.make_blobs(
    n_samples=n_samples, cluster_std=[1.0, 2.5, 0.5], random_state=170
)
运行聚类并绘图
# Set up cluster parameters
plt.figure(figsize=(9 * 1.3 + 2, 14.5))
plt.subplots_adjust(
    left=0.02, right=0.98, bottom=0.001, top=0.96, wspace=0.05, hspace=0.01
)
plot_num = 1
default_base = {"n_neighbors": 10, "n_clusters": 3}
datasets = [
    (noisy_circles, {"n_clusters": 2}),
    (noisy_moons, {"n_clusters": 2}),
    (varied, {"n_neighbors": 2}),
    (aniso, {"n_neighbors": 2}),
    (blobs, {}),
    (no_structure, {}),
]
for i_dataset, (dataset, algo_params) in enumerate(datasets):
    # update parameters with dataset-specific values
    params = default_base.copy()
    params.update(algo_params)
    X, y = dataset
    # normalize dataset for easier parameter selection
    X = StandardScaler().fit_transform(X)
    # ============
    # Create cluster objects
    # ============
    ward = cluster.AgglomerativeClustering(
        n_clusters=params["n_clusters"], linkage="ward"
    )
    complete = cluster.AgglomerativeClustering(
        n_clusters=params["n_clusters"], linkage="complete"
    )
    average = cluster.AgglomerativeClustering(
        n_clusters=params["n_clusters"], linkage="average"
    )
    single = cluster.AgglomerativeClustering(
        n_clusters=params["n_clusters"], linkage="single"
    )
    clustering_algorithms = (
        ("Single Linkage", single),
        ("Average Linkage", average),
        ("Complete Linkage", complete),
        ("Ward Linkage", ward),
    )
    for name, algorithm in clustering_algorithms:
        t0 = time.time()
        # catch warnings related to kneighbors_graph
        with warnings.catch_warnings():
            warnings.filterwarnings(
                "ignore",
                message="the number of connected components of the "
                + "connectivity matrix is [0-9]{1,2}"
                + " > 1. Completing it to avoid stopping the tree early.",
                category=UserWarning,
            )
            algorithm.fit(X)
        t1 = time.time()
        if hasattr(algorithm, "labels_"):
            y_pred = algorithm.labels_.astype(int)
        else:
            y_pred = algorithm.predict(X)
        plt.subplot(len(datasets), len(clustering_algorithms), plot_num)
        if i_dataset == 0:
            plt.title(name, size=18)
        colors = np.array(
            list(
                islice(
                    cycle(
                        [
                            "#377eb8",
                            "#ff7f00",
                            "#4daf4a",
                            "#f781bf",
                            "#a65628",
                            "#984ea3",
                            "#999999",
                            "#e41a1c",
                            "#dede00",
                        ]
                    ),
                    int(max(y_pred) + 1),
                )
            )
        )
        plt.scatter(X[:, 0], X[:, 1], s=10, color=colors[y_pred])
        plt.xlim(-2.5, 2.5)
        plt.ylim(-2.5, 2.5)
        plt.xticks(())
        plt.yticks(())
        plt.text(
            0.99,
            0.01,
            ("%.2fs" % (t1 - t0)).lstrip("0"),
            transform=plt.gca().transAxes,
            size=15,
            horizontalalignment="right",
        )
        plot_num += 1
plt.show()

脚本总运行时间:(0 分钟 2.011 秒)
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