Python编程语言学习:sklearn.manifold的TSNE函数的简介、使用方法、代码实现之详细攻略
目录
Manifold简介
TSNE简介—数据降维且可视化
TSNE使用方法
TSNE代码实现
Manifold简介
Manifold learning is an approach to non-linear dimensionality reduction. Algorithms for this task are based on the idea that the dimensionality of many data sets is only artificially high.
Manifold是一种非线性降维的方法。这个任务的算法是基于这样一种想法,即许多数据集的维数只是人为地偏高。High-dimensional datasets can be very difficult to visualize. While data in two or three dimensions can be plotted to show the inherent structure of the data, equivalent high-dimensional plots are much less intuitive. To aid visualization of the structure of a dataset, the dimension must be reduced in some way.
The simplest way to accomplish this dimensionality reduction is by taking a random projection of the data. Though this allows some degree of visualization of the data structure, the randomness of the choice leaves much to be desired. In a random projection, it is likely that the more interesting structure within the data will be lost.
To address this concern, a number of supervised and unsupervised linear dimensionality reduction frameworks have been designed, such as Principal Component Analysis (PCA), Independent Component Analysis, Linear Discriminant Analysis, and others. These algorithms define specific rubrics to choose an “interesting” linear projection of the data. These methods can be powerful, but often miss important non-linear structure in the data.
高维数据集很难可视化。虽然可以绘制二维或三维的数据来显示数据的固有结构,但等效的高维图就不那么直观了。为了帮助可视化数据集的结构,必须以某种方式减少维数。完成这种维数减少的最简单方法是对数据进行随机投影。尽管这允许一定程度的数据结构可视化,但选择的随机性仍有很多不足之处。在随机投影中,数据中更有趣的结构很可能会丢失。为了解决这一问题,设计了许多监督和非监督线性降维框架,如主成分分析(PCA),独立成分分析,线性判别分析,以及其他。这些算法定义了选择数据的“有趣的”线性投影的特定规则。这些方法可能很强大,但往往忽略了数据中重要的非线性结构。Manifold Learning can be thought of as an attempt to generalize linear frameworks like PCA to be sensitive to non-linear structure in data. Though supervised variants exist, the typical manifold learning problem is unsupervised: it learns the high-dimensional structure of the data from the data itself, without the use of predetermined classifications.Manifold可以被认为是一种推广线性框架的尝试,如PCA,以敏感的非线性数据结构。虽然有监督变量存在,但典型的Manifold问题是非监督的:它从数据本身学习数据的高维结构,而不使用预定的分类。TSNE简介—数据降维且可视化
t-distributed Stochastic Neighbor Embedding(t-SNE),即t-分布随机邻居嵌入。t-SNE是一个可视化高维数据的工具。它将数据点之间的相似性转化为联合概率,并试图最小化低维嵌入和高维数据联合概率之间的Kullback-Leibler差异。t-SNE有一个非凸的代价函数,即通过不同的初始化,我们可以得到不同的结果。强烈建议使用另一种降维方法(如密集数据的PCA或稀疏数据的集群svd)来减少维数到一个合理的数量(如50),如果特征的数量非常高。这将抑制一些噪声,加快样本间成对距离的计算。
t-SNE是目前来说效果最好的数据降维与可视化方法,但是它的缺点也很明显,比如:占内存大,运行时间长。但是,当我们想要对高维数据进行分类,又不清楚这个数据集有没有很好的可分性(即同类之间间隔小,异类之间间隔大),可以通过t-SNE投影到2维或者3维的空间中观察一下。如果在低维空间中具有可分性,则数据是可分的;如果在高维空间中不具有可分性,可能是数据不可分,也可能仅仅是因为不能投影到低维空间。t-SNE(TSNE)的原理是将数据点之间的相似度转换为概率。原始空间中的相似度由高斯联合概率表示,嵌入空间的相似度由“学生t分布”表示。
参考文章:https://www.deeplearn.me/2137.html
TSNE使用方法
from sklearn.manifold import TSNE
visual_model = TSNE(metric='precomputed', perplexity=10) # t分布随机邻接嵌入
visual = visual_model.fit_transform(dis)
TSNE代码实现
class TSNE Found at: sklearn.manifold._t_sne
class TSNE(BaseEstimator):
"""t-distributed Stochastic Neighbor Embedding.
t-SNE [1] is a tool to visualize high-dimensional data. It converts
similarities between data points to joint probabilities and tries
to minimize the Kullback-Leibler divergence between the joint
probabilities of the low-dimensional embedding and the
high-dimensional data. t-SNE has a cost function that is not convex,
i.e. with different initializations we can get different results.
It is highly recommended to use another dimensionality reduction
method (e.g. PCA for dense data or TruncatedSVD for sparse data)
to reduce the number of dimensions to a reasonable amount (e.g.
50)
if the number of features is very high. This will suppress some
noise and speed up the computation of pairwise distances
between
samples. For more tips see Laurens van der Maaten's FAQ [2].
Read more in the :ref:`User Guide `.
Parameters
----------
n_components : int, optional (default: 2)
Dimension of the embedded space.
perplexity : float, optional (default: 30)
The perplexity is related to the number of nearest neighbors that
is used in other manifold learning algorithms. Larger datasets
usually require a larger perplexity. Consider selecting a value
between 5 and 50. Different values can result in significanlty
different results.
early_exaggeration : float, optional (default: 12.0)
Controls how tight natural clusters in the original space are in
the embedded space and how much space will be between them.
For
larger values, the space between natural clusters will be larger
in the embedded space. Again, the choice of this parameter is not
very critical. If the cost function increases during initial
optimization, the early exaggeration factor or the learning rate
might be too high.
learning_rate : float, optional (default: 200.0)
The learning rate for t-SNE is usually in the range [10.0, 1000.0]. If
the learning rate is too high, the data may look like a 'ball' with any
point approximately equidistant from its nearest neighbours. If the
learning rate is too low, most points may look compressed in a
dense
cloud with few outliers. If the cost function gets stuck in a bad local
minimum increasing the learning rate may help.
n_iter : int, optional (default: 1000)
Maximum number of iterations for the optimization. Should be at
least 250.
n_iter_without_progress : int, optional (default: 300)
Maximum number of iterations without progress before we abort
the
optimization, used after 250 initial iterations with early
exaggeration. Note that progress is only checked every 50
iterations so
this value is rounded to the next multiple of 50.
.. versionadded:: 0.17
parameter *n_iter_without_progress* to control stopping criteria.
min_grad_norm : float, optional (default: 1e-7)
If the gradient norm is below this threshold, the optimization will
be stopped.
metric : string or callable, optional
The metric to use when calculating distance between instances in a
feature array. If metric is a string, it must be one of the options
allowed by scipy.spatial.distance.pdist for its metric parameter, or
a metric listed in pairwise.PAIRWISE_DISTANCE_FUNCTIONS.
If metric is "precomputed", X is assumed to be a distance matrix.
Alternatively, if metric is a callable function, it is called on each
pair of instances (rows) and the resulting value recorded. The
callable
should take two arrays from X as input and return a value indicating
the distance between them. The default is "euclidean" which is
interpreted as squared euclidean distance.
init : string or numpy array, optional (default: "random")
Initialization of embedding. Possible options are 'random', 'pca',
and a numpy array of shape (n_samples, n_components).
PCA initialization cannot be used with precomputed distances and
is
usually more globally stable than random initialization.
verbose : int, optional (default: 0)
Verbosity level.
random_state : int, RandomState instance, default=None
Determines the random number generator. Pass an int for
reproducible
results across multiple function calls. Note that different
initializations might result in different local minima of the cost
function. See :term: `Glossary `.
method : string (default: 'barnes_hut')
By default the gradient calculation algorithm uses Barnes-Hut
approximation running in O(NlogN) time. method='exact'
will run on the slower, but exact, algorithm in O(N^2) time. The
exact algorithm should be used when nearest-neighbor errors
need
to be better than 3%. However, the exact method cannot scale to
millions of examples.
.. versionadded:: 0.17
Approximate optimization *method* via the Barnes-Hut.
angle : float (default: 0.5)
Only used if method='barnes_hut'
This is the trade-off between speed and accuracy for Barnes-Hut T-
SNE.
'angle' is the angular size (referred to as theta in [3]) of a distant
node as measured from a point. If this size is below 'angle' then it is
used as a summary node of all points contained within it.
This method is not very sensitive to changes in this parameter
in the range of 0.2 - 0.8. Angle less than 0.2 has quickly increasing
computation time and angle greater 0.8 has quickly increasing
error.
n_jobs : int or None, optional (default=None)
The number of parallel jobs to run for neighbors search. This
parameter
has no impact when ``metric="precomputed"`` or
(``metric="euclidean"`` and ``method="exact"``).
``None`` means 1 unless in a :obj:`joblib.parallel_backend` context.
``-1`` means using all processors. See :term:`Glossary `
for more details.
.. versionadded:: 0.22
Attributes
----------
embedding_ : array-like, shape (n_samples, n_components)
Stores the embedding vectors.
kl_divergence_ : float
Kullback-Leibler divergence after optimization.
n_iter_ : int
Number of iterations run.
Examples
--------
>>> import numpy as np
>>> from sklearn.manifold import TSNE
>>> X = np.array([[0, 0, 0], [0, 1, 1], [1, 0, 1], [1, 1, 1]])
>>> X_embedded = TSNE(n_components=2).fit_transform(X)
>>> X_embedded.shape
(4, 2)
References
----------
[1] van der Maaten, L.J.P.; Hinton, G.E. Visualizing High-
Dimensional Data
Using t-SNE. Journal of Machine Learning Research 9:2579-2605,
2008.
[2] van der Maaten, L.J.P. t-Distributed Stochastic Neighbor
Embedding
https://lvdmaaten.github.io/tsne/
[3] L.J.P. van der Maaten. Accelerating t-SNE using Tree-Based
Algorithms.
Journal of Machine Learning Research 15(Oct):3221-3245, 2014.
https://lvdmaaten.github.io/publications/papers/JMLR_2014.pdf
"""
# Control the number of exploration iterations with
early_exaggeration on
_EXPLORATION_N_ITER = 250
# Control the number of iterations between progress checks
_N_ITER_CHECK = 50
@_deprecate_positional_args
def __init__(self, n_components=2, *, perplexity=30.0,
early_exaggeration=12.0, learning_rate=200.0, n_iter=1000,
n_iter_without_progress=300, min_grad_norm=1e-7,
metric="euclidean", init="random", verbose=0,
random_state=None, method='barnes_hut', angle=0.5,
n_jobs=None):
self.n_components = n_components
self.perplexity = perplexity
self.early_exaggeration = early_exaggeration
self.learning_rate = learning_rate
self.n_iter = n_iter
self.n_iter_without_progress = n_iter_without_progress
self.min_grad_norm = min_grad_norm
self.metric = metric
self.init = init
self.verbose = verbose
self.random_state = random_state
self.method = method
self.angle = angle
self.n_jobs = n_jobs
def _fit(self, X, skip_num_points=0):
"""Private function to fit the model using X as training data."""
if self.method not in ['barnes_hut', 'exact']:
raise ValueError("'method' must be 'barnes_hut' or 'exact'")
if self.angle < 0.0 or self.angle > 1.0:
raise ValueError("'angle' must be between 0.0 - 1.0")
if self.method == 'barnes_hut':
X = self._validate_data(X, accept_sparse=['csr'],
ensure_min_samples=2,
dtype=[np.float32, np.float64])
else:
X = self._validate_data(X, accept_sparse=['csr', 'csc', 'coo'],
dtype=[np.float32, np.float64])
if self.metric == "precomputed":
if isinstance(self.init, str) and self.init == 'pca':
raise ValueError("The parameter init=\"pca\" cannot be "
"used with metric=\"precomputed\".")
if X.shape[0] != X.shape[1]:
raise ValueError("X should be a square distance matrix")
check_non_negative(X, "TSNE.fit(). With
metric='precomputed', X "
"should contain positive distances.")
if self.method == "exact" and issparse(X):
raise TypeError('TSNE with method="exact" does not
accept sparse '
'precomputed distance matrix. Use method="
barnes_hut" '
'or provide the dense distance matrix.')
if self.method == 'barnes_hut' and self.n_components > 3:
raise ValueError("'n_components' should be inferior to 4 for
the "
"barnes_hut algorithm as it relies on "
"quad-tree or oct-tree.")
random_state = check_random_state(self.random_state)
if self.early_exaggeration < 1.0:
raise ValueError(
"early_exaggeration must be at least 1, but is {}".format(self.
early_exaggeration))
if self.n_iter < 250:
raise ValueError("n_iter should be at least 250")
n_samples = X.shape[0]
neighbors_nn = None
if self.method == "exact":
# Retrieve the distance matrix, either using the precomputed
one or
# computing it.
if self.metric == "precomputed":
distances = X
else:
if self.verbose:
print("[t-SNE] Computing pairwise distances...")
if self.metric == "euclidean":
distances = pairwise_distances(X, metric=self.metric,
squared=True)
else:
distances = pairwise_distances(X, metric=self.metric,
n_jobs=self.n_jobs)
if np.any(distances < 0):
raise ValueError("All distances should be positive, the "
"metric given is not correct")
# compute the joint probability distribution for the input
space
P = _joint_probabilities(distances, self.perplexity, self.verbose)
assert np.all(np.isfinite(P)), "All probabilities should be finite"
assert np.all(P >= 0), "All probabilities should be non-
negative"
assert np.all(P 0:
opt_args['n_iter'] = self.n_iter
opt_args['it'] = it + 1
opt_args['momentum'] = 0.8
opt_args['n_iter_without_progress'] = self.
n_iter_without_progress
params, kl_divergence, it = _gradient_descent(obj_func,
params, **opt_args)
# Save the final number of iterations
self.n_iter_ = it
if self.verbose:
print("[t-SNE] KL divergence after %d iterations: %f" % (it + 1,
kl_divergence))
X_embedded = params.reshape(n_samples, self.n_components)
self.kl_divergence_ = kl_divergence
return X_embedded
def fit_transform(self, X, y=None):
"""Fit X into an embedded space and return that transformed
output.
Parameters
----------
X : array, shape (n_samples, n_features) or (n_samples,
n_samples)
If the metric is 'precomputed' X must be a square distance
matrix. Otherwise it contains a sample per row. If the method
is 'exact', X may be a sparse matrix of type 'csr', 'csc'
or 'coo'. If the method is 'barnes_hut' and the metric is
'precomputed', X may be a precomputed sparse graph.
y : Ignored
Returns
-------
X_new : array, shape (n_samples, n_components)
Embedding of the training data in low-dimensional space.
"""
embedding = self._fit(X)
self.embedding_ = embedding
return self.embedding_
def fit(self, X, y=None):
"""Fit X into an embedded space.
Parameters
----------
X : array, shape (n_samples, n_features) or (n_samples,
n_samples)
If the metric is 'precomputed' X must be a square distance
matrix. Otherwise it contains a sample per row. If the method
is 'exact', X may be a sparse matrix of type 'csr', 'csc'
or 'coo'. If the method is 'barnes_hut' and the metric is
'precomputed', X may be a precomputed sparse graph.
y : Ignored
"""
self.fit_transform(X)
return self