1032 lines
41 KiB
Python
1032 lines
41 KiB
Python
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"""
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HDBSCAN: Hierarchical Density-Based Spatial Clustering
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of Applications with Noise
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"""
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# Authors: Leland McInnes <leland.mcinnes@gmail.com>
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# Steve Astels <sastels@gmail.com>
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# John Healy <jchealy@gmail.com>
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# Meekail Zain <zainmeekail@gmail.com>
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# Copyright (c) 2015, Leland McInnes
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# All rights reserved.
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# Redistribution and use in source and binary forms, with or without
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# modification, are permitted provided that the following conditions are met:
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# 1. Redistributions of source code must retain the above copyright notice,
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# this list of conditions and the following disclaimer.
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# 2. Redistributions in binary form must reproduce the above copyright notice,
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# this list of conditions and the following disclaimer in the documentation
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# and/or other materials provided with the distribution.
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# 3. Neither the name of the copyright holder nor the names of its contributors
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# may be used to endorse or promote products derived from this software without
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# specific prior written permission.
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# THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
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# AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
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# IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
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# ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE
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# LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
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# CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
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# SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
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# INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
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# CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
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# ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
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# POSSIBILITY OF SUCH DAMAGE.
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from numbers import Integral, Real
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from warnings import warn
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import numpy as np
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from scipy.sparse import csgraph, issparse
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from ...base import BaseEstimator, ClusterMixin, _fit_context
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from ...metrics import pairwise_distances
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from ...metrics._dist_metrics import DistanceMetric
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from ...metrics.pairwise import _VALID_METRICS
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from ...neighbors import BallTree, KDTree, NearestNeighbors
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from ...utils._param_validation import Interval, StrOptions
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from ...utils.validation import _allclose_dense_sparse, _assert_all_finite
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from ._linkage import (
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MST_edge_dtype,
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make_single_linkage,
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mst_from_data_matrix,
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mst_from_mutual_reachability,
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)
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from ._reachability import mutual_reachability_graph
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from ._tree import HIERARCHY_dtype, labelling_at_cut, tree_to_labels
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FAST_METRICS = set(KDTree.valid_metrics + BallTree.valid_metrics)
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# Encodings are arbitrary but must be strictly negative.
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# The current encodings are chosen as extensions to the -1 noise label.
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# Avoided enums so that the end user only deals with simple labels.
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_OUTLIER_ENCODING: dict = {
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"infinite": {
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"label": -2,
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# The probability could also be 1, since infinite points are certainly
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# infinite outliers, however 0 is convention from the HDBSCAN library
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# implementation.
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"prob": 0,
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},
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"missing": {
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"label": -3,
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# A nan probability is chosen to emphasize the fact that the
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# corresponding data was not considered in the clustering problem.
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"prob": np.nan,
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},
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}
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def _brute_mst(mutual_reachability, min_samples):
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"""
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Builds a minimum spanning tree (MST) from the provided mutual-reachability
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values. This function dispatches to a custom Cython implementation for
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dense arrays, and `scipy.sparse.csgraph.minimum_spanning_tree` for sparse
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arrays/matrices.
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Parameters
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----------
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mututal_reachability_graph: {ndarray, sparse matrix} of shape \
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(n_samples, n_samples)
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Weighted adjacency matrix of the mutual reachability graph.
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min_samples : int, default=None
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The number of samples in a neighborhood for a point
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to be considered as a core point. This includes the point itself.
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Returns
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-------
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mst : ndarray of shape (n_samples - 1,), dtype=MST_edge_dtype
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The MST representation of the mutual-reachability graph. The MST is
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represented as a collection of edges.
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"""
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if not issparse(mutual_reachability):
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return mst_from_mutual_reachability(mutual_reachability)
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# Check if the mutual reachability matrix has any rows which have
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# less than `min_samples` non-zero elements.
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indptr = mutual_reachability.indptr
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num_points = mutual_reachability.shape[0]
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if any((indptr[i + 1] - indptr[i]) < min_samples for i in range(num_points)):
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raise ValueError(
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f"There exists points with fewer than {min_samples} neighbors. Ensure"
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" your distance matrix has non-zero values for at least"
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f" `min_sample`={min_samples} neighbors for each points (i.e. K-nn"
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" graph), or specify a `max_distance` in `metric_params` to use when"
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" distances are missing."
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)
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# Check connected component on mutual reachability.
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# If more than one connected component is present,
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# it means that the graph is disconnected.
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n_components = csgraph.connected_components(
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mutual_reachability, directed=False, return_labels=False
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)
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if n_components > 1:
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raise ValueError(
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f"Sparse mutual reachability matrix has {n_components} connected"
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" components. HDBSCAN cannot be perfomed on a disconnected graph. Ensure"
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" that the sparse distance matrix has only one connected component."
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)
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# Compute the minimum spanning tree for the sparse graph
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sparse_min_spanning_tree = csgraph.minimum_spanning_tree(mutual_reachability)
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rows, cols = sparse_min_spanning_tree.nonzero()
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mst = np.rec.fromarrays(
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[rows, cols, sparse_min_spanning_tree.data],
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dtype=MST_edge_dtype,
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)
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return mst
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def _process_mst(min_spanning_tree):
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"""
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Builds a single-linkage tree (SLT) from the provided minimum spanning tree
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(MST). The MST is first sorted then processed by a custom Cython routine.
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Parameters
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----------
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min_spanning_tree : ndarray of shape (n_samples - 1,), dtype=MST_edge_dtype
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The MST representation of the mutual-reachability graph. The MST is
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represented as a collection of edges.
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Returns
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-------
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single_linkage : ndarray of shape (n_samples - 1,), dtype=HIERARCHY_dtype
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The single-linkage tree tree (dendrogram) built from the MST.
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"""
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# Sort edges of the min_spanning_tree by weight
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row_order = np.argsort(min_spanning_tree["distance"])
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min_spanning_tree = min_spanning_tree[row_order]
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# Convert edge list into standard hierarchical clustering format
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return make_single_linkage(min_spanning_tree)
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def _hdbscan_brute(
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X,
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min_samples=5,
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alpha=None,
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metric="euclidean",
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n_jobs=None,
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copy=False,
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**metric_params,
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):
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"""
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Builds a single-linkage tree (SLT) from the input data `X`. If
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`metric="precomputed"` then `X` must be a symmetric array of distances.
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Otherwise, the pairwise distances are calculated directly and passed to
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`mutual_reachability_graph`.
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Parameters
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----------
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X : ndarray of shape (n_samples, n_features) or (n_samples, n_samples)
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Either the raw data from which to compute the pairwise distances,
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or the precomputed distances.
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min_samples : int, default=None
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The number of samples in a neighborhood for a point
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to be considered as a core point. This includes the point itself.
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alpha : float, default=1.0
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A distance scaling parameter as used in robust single linkage.
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metric : str or callable, default='euclidean'
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The metric to use when calculating distance between instances in a
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feature array.
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- If metric is a string or callable, it must be one of
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the options allowed by :func:`~sklearn.metrics.pairwise_distances`
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for its metric parameter.
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- If metric is "precomputed", X is assumed to be a distance matrix and
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must be square.
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n_jobs : int, default=None
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The number of jobs to use for computing the pairwise distances. This
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works by breaking down the pairwise matrix into n_jobs even slices and
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computing them in parallel. This parameter is passed directly to
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:func:`~sklearn.metrics.pairwise_distances`.
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``None`` means 1 unless in a :obj:`joblib.parallel_backend` context.
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``-1`` means using all processors. See :term:`Glossary <n_jobs>`
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for more details.
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copy : bool, default=False
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If `copy=True` then any time an in-place modifications would be made
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that would overwrite `X`, a copy will first be made, guaranteeing that
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the original data will be unchanged. Currently, it only applies when
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`metric="precomputed"`, when passing a dense array or a CSR sparse
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array/matrix.
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metric_params : dict, default=None
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Arguments passed to the distance metric.
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Returns
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-------
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single_linkage : ndarray of shape (n_samples - 1,), dtype=HIERARCHY_dtype
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The single-linkage tree tree (dendrogram) built from the MST.
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"""
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if metric == "precomputed":
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if X.shape[0] != X.shape[1]:
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raise ValueError(
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"The precomputed distance matrix is expected to be symmetric, however"
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f" it has shape {X.shape}. Please verify that the"
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" distance matrix was constructed correctly."
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)
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if not _allclose_dense_sparse(X, X.T):
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raise ValueError(
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"The precomputed distance matrix is expected to be symmetric, however"
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" its values appear to be asymmetric. Please verify that the distance"
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" matrix was constructed correctly."
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)
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distance_matrix = X.copy() if copy else X
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else:
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distance_matrix = pairwise_distances(
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X, metric=metric, n_jobs=n_jobs, **metric_params
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)
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distance_matrix /= alpha
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max_distance = metric_params.get("max_distance", 0.0)
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if issparse(distance_matrix) and distance_matrix.format != "csr":
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# we need CSR format to avoid a conversion in `_brute_mst` when calling
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# `csgraph.connected_components`
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distance_matrix = distance_matrix.tocsr()
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# Note that `distance_matrix` is manipulated in-place, however we do not
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# need it for anything else past this point, hence the operation is safe.
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mutual_reachability_ = mutual_reachability_graph(
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distance_matrix, min_samples=min_samples, max_distance=max_distance
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)
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min_spanning_tree = _brute_mst(mutual_reachability_, min_samples=min_samples)
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# Warn if the MST couldn't be constructed around the missing distances
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if np.isinf(min_spanning_tree["distance"]).any():
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warn(
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(
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"The minimum spanning tree contains edge weights with value "
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"infinity. Potentially, you are missing too many distances "
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|
"in the initial distance matrix for the given neighborhood "
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"size."
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),
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UserWarning,
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)
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return _process_mst(min_spanning_tree)
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def _hdbscan_prims(
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X,
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algo,
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min_samples=5,
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alpha=1.0,
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metric="euclidean",
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leaf_size=40,
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n_jobs=None,
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|
**metric_params,
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|
):
|
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|
"""
|
||
|
Builds a single-linkage tree (SLT) from the input data `X`. If
|
||
|
`metric="precomputed"` then `X` must be a symmetric array of distances.
|
||
|
Otherwise, the pairwise distances are calculated directly and passed to
|
||
|
`mutual_reachability_graph`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
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X : ndarray of shape (n_samples, n_features)
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|
The raw data.
|
||
|
|
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|
min_samples : int, default=None
|
||
|
The number of samples in a neighborhood for a point
|
||
|
to be considered as a core point. This includes the point itself.
|
||
|
|
||
|
alpha : float, default=1.0
|
||
|
A distance scaling parameter as used in robust single linkage.
|
||
|
|
||
|
metric : str or callable, default='euclidean'
|
||
|
The metric to use when calculating distance between instances in a
|
||
|
feature array. `metric` must be one of the options allowed by
|
||
|
:func:`~sklearn.metrics.pairwise_distances` for its metric
|
||
|
parameter.
|
||
|
|
||
|
n_jobs : int, default=None
|
||
|
The number of jobs to use for computing the pairwise distances. This
|
||
|
works by breaking down the pairwise matrix into n_jobs even slices and
|
||
|
computing them in parallel. This parameter is passed directly to
|
||
|
:func:`~sklearn.metrics.pairwise_distances`.
|
||
|
|
||
|
``None`` means 1 unless in a :obj:`joblib.parallel_backend` context.
|
||
|
``-1`` means using all processors. See :term:`Glossary <n_jobs>`
|
||
|
for more details.
|
||
|
|
||
|
copy : bool, default=False
|
||
|
If `copy=True` then any time an in-place modifications would be made
|
||
|
that would overwrite `X`, a copy will first be made, guaranteeing that
|
||
|
the original data will be unchanged. Currently, it only applies when
|
||
|
`metric="precomputed"`, when passing a dense array or a CSR sparse
|
||
|
array/matrix.
|
||
|
|
||
|
metric_params : dict, default=None
|
||
|
Arguments passed to the distance metric.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
single_linkage : ndarray of shape (n_samples - 1,), dtype=HIERARCHY_dtype
|
||
|
The single-linkage tree tree (dendrogram) built from the MST.
|
||
|
"""
|
||
|
# The Cython routines used require contiguous arrays
|
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|
X = np.asarray(X, order="C")
|
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|
|
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# Get distance to kth nearest neighbour
|
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|
nbrs = NearestNeighbors(
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n_neighbors=min_samples,
|
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|
algorithm=algo,
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|
leaf_size=leaf_size,
|
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|
metric=metric,
|
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|
metric_params=metric_params,
|
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|
n_jobs=n_jobs,
|
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|
p=None,
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|
).fit(X)
|
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|
|
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|
neighbors_distances, _ = nbrs.kneighbors(X, min_samples, return_distance=True)
|
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|
core_distances = np.ascontiguousarray(neighbors_distances[:, -1])
|
||
|
dist_metric = DistanceMetric.get_metric(metric, **metric_params)
|
||
|
|
||
|
# Mutual reachability distance is implicit in mst_from_data_matrix
|
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|
min_spanning_tree = mst_from_data_matrix(X, core_distances, dist_metric, alpha)
|
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|
return _process_mst(min_spanning_tree)
|
||
|
|
||
|
|
||
|
def remap_single_linkage_tree(tree, internal_to_raw, non_finite):
|
||
|
"""
|
||
|
Takes an internal single_linkage_tree structure and adds back in a set of points
|
||
|
that were initially detected as non-finite and returns that new tree.
|
||
|
These points will all be merged into the final node at np.inf distance and
|
||
|
considered noise points.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
tree : ndarray of shape (n_samples - 1,), dtype=HIERARCHY_dtype
|
||
|
The single-linkage tree tree (dendrogram) built from the MST.
|
||
|
internal_to_raw: dict
|
||
|
A mapping from internal integer index to the raw integer index
|
||
|
non_finite : ndarray
|
||
|
Boolean array of which entries in the raw data are non-finite
|
||
|
"""
|
||
|
finite_count = len(internal_to_raw)
|
||
|
|
||
|
outlier_count = len(non_finite)
|
||
|
for i, _ in enumerate(tree):
|
||
|
left = tree[i]["left_node"]
|
||
|
right = tree[i]["right_node"]
|
||
|
|
||
|
if left < finite_count:
|
||
|
tree[i]["left_node"] = internal_to_raw[left]
|
||
|
else:
|
||
|
tree[i]["left_node"] = left + outlier_count
|
||
|
if right < finite_count:
|
||
|
tree[i]["right_node"] = internal_to_raw[right]
|
||
|
else:
|
||
|
tree[i]["right_node"] = right + outlier_count
|
||
|
|
||
|
outlier_tree = np.zeros(len(non_finite), dtype=HIERARCHY_dtype)
|
||
|
last_cluster_id = max(
|
||
|
tree[tree.shape[0] - 1]["left_node"], tree[tree.shape[0] - 1]["right_node"]
|
||
|
)
|
||
|
last_cluster_size = tree[tree.shape[0] - 1]["cluster_size"]
|
||
|
for i, outlier in enumerate(non_finite):
|
||
|
outlier_tree[i] = (outlier, last_cluster_id + 1, np.inf, last_cluster_size + 1)
|
||
|
last_cluster_id += 1
|
||
|
last_cluster_size += 1
|
||
|
tree = np.concatenate([tree, outlier_tree])
|
||
|
return tree
|
||
|
|
||
|
|
||
|
def _get_finite_row_indices(matrix):
|
||
|
"""
|
||
|
Returns the indices of the purely finite rows of a
|
||
|
sparse matrix or dense ndarray
|
||
|
"""
|
||
|
if issparse(matrix):
|
||
|
row_indices = np.array(
|
||
|
[i for i, row in enumerate(matrix.tolil().data) if np.all(np.isfinite(row))]
|
||
|
)
|
||
|
else:
|
||
|
(row_indices,) = np.isfinite(matrix.sum(axis=1)).nonzero()
|
||
|
return row_indices
|
||
|
|
||
|
|
||
|
class HDBSCAN(ClusterMixin, BaseEstimator):
|
||
|
"""Cluster data using hierarchical density-based clustering.
|
||
|
|
||
|
HDBSCAN - Hierarchical Density-Based Spatial Clustering of Applications
|
||
|
with Noise. Performs :class:`~sklearn.cluster.DBSCAN` over varying epsilon
|
||
|
values and integrates the result to find a clustering that gives the best
|
||
|
stability over epsilon.
|
||
|
This allows HDBSCAN to find clusters of varying densities (unlike
|
||
|
:class:`~sklearn.cluster.DBSCAN`), and be more robust to parameter selection.
|
||
|
Read more in the :ref:`User Guide <hdbscan>`.
|
||
|
|
||
|
For an example of how to use HDBSCAN, as well as a comparison to
|
||
|
:class:`~sklearn.cluster.DBSCAN`, please see the :ref:`plotting demo
|
||
|
<sphx_glr_auto_examples_cluster_plot_hdbscan.py>`.
|
||
|
|
||
|
.. versionadded:: 1.3
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
min_cluster_size : int, default=5
|
||
|
The minimum number of samples in a group for that group to be
|
||
|
considered a cluster; groupings smaller than this size will be left
|
||
|
as noise.
|
||
|
|
||
|
min_samples : int, default=None
|
||
|
The number of samples in a neighborhood for a point
|
||
|
to be considered as a core point. This includes the point itself.
|
||
|
When `None`, defaults to `min_cluster_size`.
|
||
|
|
||
|
cluster_selection_epsilon : float, default=0.0
|
||
|
A distance threshold. Clusters below this value will be merged.
|
||
|
See [5]_ for more information.
|
||
|
|
||
|
max_cluster_size : int, default=None
|
||
|
A limit to the size of clusters returned by the `"eom"` cluster
|
||
|
selection algorithm. There is no limit when `max_cluster_size=None`.
|
||
|
Has no effect if `cluster_selection_method="leaf"`.
|
||
|
|
||
|
metric : str or callable, default='euclidean'
|
||
|
The metric to use when calculating distance between instances in a
|
||
|
feature array.
|
||
|
|
||
|
- If metric is a string or callable, it must be one of
|
||
|
the options allowed by :func:`~sklearn.metrics.pairwise_distances`
|
||
|
for its metric parameter.
|
||
|
|
||
|
- If metric is "precomputed", X is assumed to be a distance matrix and
|
||
|
must be square.
|
||
|
|
||
|
metric_params : dict, default=None
|
||
|
Arguments passed to the distance metric.
|
||
|
|
||
|
alpha : float, default=1.0
|
||
|
A distance scaling parameter as used in robust single linkage.
|
||
|
See [3]_ for more information.
|
||
|
|
||
|
algorithm : {"auto", "brute", "kd_tree", "ball_tree"}, default="auto"
|
||
|
Exactly which algorithm to use for computing core distances; By default
|
||
|
this is set to `"auto"` which attempts to use a
|
||
|
:class:`~sklearn.neighbors.KDTree` tree if possible, otherwise it uses
|
||
|
a :class:`~sklearn.neighbors.BallTree` tree. Both `"kd_tree"` and
|
||
|
`"ball_tree"` algorithms use the
|
||
|
:class:`~sklearn.neighbors.NearestNeighbors` estimator.
|
||
|
|
||
|
If the `X` passed during `fit` is sparse or `metric` is invalid for
|
||
|
both :class:`~sklearn.neighbors.KDTree` and
|
||
|
:class:`~sklearn.neighbors.BallTree`, then it resolves to use the
|
||
|
`"brute"` algorithm.
|
||
|
|
||
|
.. deprecated:: 1.4
|
||
|
The `'kdtree'` option was deprecated in version 1.4,
|
||
|
and will be renamed to `'kd_tree'` in 1.6.
|
||
|
|
||
|
.. deprecated:: 1.4
|
||
|
The `'balltree'` option was deprecated in version 1.4,
|
||
|
and will be renamed to `'ball_tree'` in 1.6.
|
||
|
|
||
|
leaf_size : int, default=40
|
||
|
Leaf size for trees responsible for fast nearest neighbour queries when
|
||
|
a KDTree or a BallTree are used as core-distance algorithms. A large
|
||
|
dataset size and small `leaf_size` may induce excessive memory usage.
|
||
|
If you are running out of memory consider increasing the `leaf_size`
|
||
|
parameter. Ignored for `algorithm="brute"`.
|
||
|
|
||
|
n_jobs : int, default=None
|
||
|
Number of jobs to run in parallel to calculate distances.
|
||
|
`None` means 1 unless in a :obj:`joblib.parallel_backend` context.
|
||
|
`-1` means using all processors. See :term:`Glossary <n_jobs>`
|
||
|
for more details.
|
||
|
|
||
|
cluster_selection_method : {"eom", "leaf"}, default="eom"
|
||
|
The method used to select clusters from the condensed tree. The
|
||
|
standard approach for HDBSCAN* is to use an Excess of Mass (`"eom"`)
|
||
|
algorithm to find the most persistent clusters. Alternatively you can
|
||
|
instead select the clusters at the leaves of the tree -- this provides
|
||
|
the most fine grained and homogeneous clusters.
|
||
|
|
||
|
allow_single_cluster : bool, default=False
|
||
|
By default HDBSCAN* will not produce a single cluster, setting this
|
||
|
to True will override this and allow single cluster results in
|
||
|
the case that you feel this is a valid result for your dataset.
|
||
|
|
||
|
store_centers : str, default=None
|
||
|
Which, if any, cluster centers to compute and store. The options are:
|
||
|
|
||
|
- `None` which does not compute nor store any centers.
|
||
|
- `"centroid"` which calculates the center by taking the weighted
|
||
|
average of their positions. Note that the algorithm uses the
|
||
|
euclidean metric and does not guarantee that the output will be
|
||
|
an observed data point.
|
||
|
- `"medoid"` which calculates the center by taking the point in the
|
||
|
fitted data which minimizes the distance to all other points in
|
||
|
the cluster. This is slower than "centroid" since it requires
|
||
|
computing additional pairwise distances between points of the
|
||
|
same cluster but guarantees the output is an observed data point.
|
||
|
The medoid is also well-defined for arbitrary metrics, and does not
|
||
|
depend on a euclidean metric.
|
||
|
- `"both"` which computes and stores both forms of centers.
|
||
|
|
||
|
copy : bool, default=False
|
||
|
If `copy=True` then any time an in-place modifications would be made
|
||
|
that would overwrite data passed to :term:`fit`, a copy will first be
|
||
|
made, guaranteeing that the original data will be unchanged.
|
||
|
Currently, it only applies when `metric="precomputed"`, when passing
|
||
|
a dense array or a CSR sparse matrix and when `algorithm="brute"`.
|
||
|
|
||
|
Attributes
|
||
|
----------
|
||
|
labels_ : ndarray of shape (n_samples,)
|
||
|
Cluster labels for each point in the dataset given to :term:`fit`.
|
||
|
Outliers are labeled as follows:
|
||
|
|
||
|
- Noisy samples are given the label -1.
|
||
|
- Samples with infinite elements (+/- np.inf) are given the label -2.
|
||
|
- Samples with missing data are given the label -3, even if they
|
||
|
also have infinite elements.
|
||
|
|
||
|
probabilities_ : ndarray of shape (n_samples,)
|
||
|
The strength with which each sample is a member of its assigned
|
||
|
cluster.
|
||
|
|
||
|
- Clustered samples have probabilities proportional to the degree that
|
||
|
they persist as part of the cluster.
|
||
|
- Noisy samples have probability zero.
|
||
|
- Samples with infinite elements (+/- np.inf) have probability 0.
|
||
|
- Samples with missing data have probability `np.nan`.
|
||
|
|
||
|
n_features_in_ : int
|
||
|
Number of features seen during :term:`fit`.
|
||
|
|
||
|
feature_names_in_ : ndarray of shape (`n_features_in_`,)
|
||
|
Names of features seen during :term:`fit`. Defined only when `X`
|
||
|
has feature names that are all strings.
|
||
|
|
||
|
centroids_ : ndarray of shape (n_clusters, n_features)
|
||
|
A collection containing the centroid of each cluster calculated under
|
||
|
the standard euclidean metric. The centroids may fall "outside" their
|
||
|
respective clusters if the clusters themselves are non-convex.
|
||
|
|
||
|
Note that `n_clusters` only counts non-outlier clusters. That is to
|
||
|
say, the `-1, -2, -3` labels for the outlier clusters are excluded.
|
||
|
|
||
|
medoids_ : ndarray of shape (n_clusters, n_features)
|
||
|
A collection containing the medoid of each cluster calculated under
|
||
|
the whichever metric was passed to the `metric` parameter. The
|
||
|
medoids are points in the original cluster which minimize the average
|
||
|
distance to all other points in that cluster under the chosen metric.
|
||
|
These can be thought of as the result of projecting the `metric`-based
|
||
|
centroid back onto the cluster.
|
||
|
|
||
|
Note that `n_clusters` only counts non-outlier clusters. That is to
|
||
|
say, the `-1, -2, -3` labels for the outlier clusters are excluded.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
DBSCAN : Density-Based Spatial Clustering of Applications
|
||
|
with Noise.
|
||
|
OPTICS : Ordering Points To Identify the Clustering Structure.
|
||
|
Birch : Memory-efficient, online-learning algorithm.
|
||
|
|
||
|
Notes
|
||
|
-----
|
||
|
The `min_samples` parameter includes the point itself, whereas the implementation in
|
||
|
`scikit-learn-contrib/hdbscan <https://github.com/scikit-learn-contrib/hdbscan>`_
|
||
|
does not. To get the same results in both versions, the value of `min_samples` here
|
||
|
must be 1 greater than the value used in `scikit-learn-contrib/hdbscan
|
||
|
<https://github.com/scikit-learn-contrib/hdbscan>`_.
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
|
||
|
.. [1] :doi:`Campello, R. J., Moulavi, D., & Sander, J. Density-based clustering
|
||
|
based on hierarchical density estimates.
|
||
|
<10.1007/978-3-642-37456-2_14>`
|
||
|
.. [2] :doi:`Campello, R. J., Moulavi, D., Zimek, A., & Sander, J.
|
||
|
Hierarchical density estimates for data clustering, visualization,
|
||
|
and outlier detection.<10.1145/2733381>`
|
||
|
|
||
|
.. [3] `Chaudhuri, K., & Dasgupta, S. Rates of convergence for the
|
||
|
cluster tree.
|
||
|
<https://papers.nips.cc/paper/2010/hash/
|
||
|
b534ba68236ba543ae44b22bd110a1d6-Abstract.html>`_
|
||
|
|
||
|
.. [4] `Moulavi, D., Jaskowiak, P.A., Campello, R.J., Zimek, A. and
|
||
|
Sander, J. Density-Based Clustering Validation.
|
||
|
<https://www.dbs.ifi.lmu.de/~zimek/publications/SDM2014/DBCV.pdf>`_
|
||
|
|
||
|
.. [5] :arxiv:`Malzer, C., & Baum, M. "A Hybrid Approach To Hierarchical
|
||
|
Density-based Cluster Selection."<1911.02282>`.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> from sklearn.cluster import HDBSCAN
|
||
|
>>> from sklearn.datasets import load_digits
|
||
|
>>> X, _ = load_digits(return_X_y=True)
|
||
|
>>> hdb = HDBSCAN(min_cluster_size=20)
|
||
|
>>> hdb.fit(X)
|
||
|
HDBSCAN(min_cluster_size=20)
|
||
|
>>> hdb.labels_
|
||
|
array([ 2, 6, -1, ..., -1, -1, -1])
|
||
|
"""
|
||
|
|
||
|
_parameter_constraints = {
|
||
|
"min_cluster_size": [Interval(Integral, left=2, right=None, closed="left")],
|
||
|
"min_samples": [Interval(Integral, left=1, right=None, closed="left"), None],
|
||
|
"cluster_selection_epsilon": [
|
||
|
Interval(Real, left=0, right=None, closed="left")
|
||
|
],
|
||
|
"max_cluster_size": [
|
||
|
None,
|
||
|
Interval(Integral, left=1, right=None, closed="left"),
|
||
|
],
|
||
|
"metric": [
|
||
|
StrOptions(FAST_METRICS | set(_VALID_METRICS) | {"precomputed"}),
|
||
|
callable,
|
||
|
],
|
||
|
"metric_params": [dict, None],
|
||
|
"alpha": [Interval(Real, left=0, right=None, closed="neither")],
|
||
|
# TODO(1.6): Remove "kdtree" and "balltree" option
|
||
|
"algorithm": [
|
||
|
StrOptions(
|
||
|
{"auto", "brute", "kd_tree", "ball_tree", "kdtree", "balltree"},
|
||
|
deprecated={"kdtree", "balltree"},
|
||
|
),
|
||
|
],
|
||
|
"leaf_size": [Interval(Integral, left=1, right=None, closed="left")],
|
||
|
"n_jobs": [Integral, None],
|
||
|
"cluster_selection_method": [StrOptions({"eom", "leaf"})],
|
||
|
"allow_single_cluster": ["boolean"],
|
||
|
"store_centers": [None, StrOptions({"centroid", "medoid", "both"})],
|
||
|
"copy": ["boolean"],
|
||
|
}
|
||
|
|
||
|
def __init__(
|
||
|
self,
|
||
|
min_cluster_size=5,
|
||
|
min_samples=None,
|
||
|
cluster_selection_epsilon=0.0,
|
||
|
max_cluster_size=None,
|
||
|
metric="euclidean",
|
||
|
metric_params=None,
|
||
|
alpha=1.0,
|
||
|
algorithm="auto",
|
||
|
leaf_size=40,
|
||
|
n_jobs=None,
|
||
|
cluster_selection_method="eom",
|
||
|
allow_single_cluster=False,
|
||
|
store_centers=None,
|
||
|
copy=False,
|
||
|
):
|
||
|
self.min_cluster_size = min_cluster_size
|
||
|
self.min_samples = min_samples
|
||
|
self.alpha = alpha
|
||
|
self.max_cluster_size = max_cluster_size
|
||
|
self.cluster_selection_epsilon = cluster_selection_epsilon
|
||
|
self.metric = metric
|
||
|
self.metric_params = metric_params
|
||
|
self.algorithm = algorithm
|
||
|
self.leaf_size = leaf_size
|
||
|
self.n_jobs = n_jobs
|
||
|
self.cluster_selection_method = cluster_selection_method
|
||
|
self.allow_single_cluster = allow_single_cluster
|
||
|
self.store_centers = store_centers
|
||
|
self.copy = copy
|
||
|
|
||
|
@_fit_context(
|
||
|
# HDBSCAN.metric is not validated yet
|
||
|
prefer_skip_nested_validation=False
|
||
|
)
|
||
|
def fit(self, X, y=None):
|
||
|
"""Find clusters based on hierarchical density-based clustering.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix} of shape (n_samples, n_features), or \
|
||
|
ndarray of shape (n_samples, n_samples)
|
||
|
A feature array, or array of distances between samples if
|
||
|
`metric='precomputed'`.
|
||
|
|
||
|
y : None
|
||
|
Ignored.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
self : object
|
||
|
Returns self.
|
||
|
"""
|
||
|
if self.metric == "precomputed" and self.store_centers is not None:
|
||
|
raise ValueError(
|
||
|
"Cannot store centers when using a precomputed distance matrix."
|
||
|
)
|
||
|
|
||
|
self._metric_params = self.metric_params or {}
|
||
|
if self.metric != "precomputed":
|
||
|
# Non-precomputed matrices may contain non-finite values.
|
||
|
X = self._validate_data(
|
||
|
X,
|
||
|
accept_sparse=["csr", "lil"],
|
||
|
force_all_finite=False,
|
||
|
dtype=np.float64,
|
||
|
)
|
||
|
self._raw_data = X
|
||
|
all_finite = True
|
||
|
try:
|
||
|
_assert_all_finite(X.data if issparse(X) else X)
|
||
|
except ValueError:
|
||
|
all_finite = False
|
||
|
|
||
|
if not all_finite:
|
||
|
# Pass only the purely finite indices into hdbscan
|
||
|
# We will later assign all non-finite points their
|
||
|
# corresponding labels, as specified in `_OUTLIER_ENCODING`
|
||
|
|
||
|
# Reduce X to make the checks for missing/outlier samples more
|
||
|
# convenient.
|
||
|
reduced_X = X.sum(axis=1)
|
||
|
|
||
|
# Samples with missing data are denoted by the presence of
|
||
|
# `np.nan`
|
||
|
missing_index = np.isnan(reduced_X).nonzero()[0]
|
||
|
|
||
|
# Outlier samples are denoted by the presence of `np.inf`
|
||
|
infinite_index = np.isinf(reduced_X).nonzero()[0]
|
||
|
|
||
|
# Continue with only finite samples
|
||
|
finite_index = _get_finite_row_indices(X)
|
||
|
internal_to_raw = {x: y for x, y in enumerate(finite_index)}
|
||
|
X = X[finite_index]
|
||
|
elif issparse(X):
|
||
|
# Handle sparse precomputed distance matrices separately
|
||
|
X = self._validate_data(
|
||
|
X,
|
||
|
accept_sparse=["csr", "lil"],
|
||
|
dtype=np.float64,
|
||
|
)
|
||
|
else:
|
||
|
# Only non-sparse, precomputed distance matrices are handled here
|
||
|
# and thereby allowed to contain numpy.inf for missing distances
|
||
|
|
||
|
# Perform data validation after removing infinite values (numpy.inf)
|
||
|
# from the given distance matrix.
|
||
|
X = self._validate_data(X, force_all_finite=False, dtype=np.float64)
|
||
|
if np.isnan(X).any():
|
||
|
# TODO: Support np.nan in Cython implementation for precomputed
|
||
|
# dense HDBSCAN
|
||
|
raise ValueError("np.nan values found in precomputed-dense")
|
||
|
if X.shape[0] == 1:
|
||
|
raise ValueError("n_samples=1 while HDBSCAN requires more than one sample")
|
||
|
self._min_samples = (
|
||
|
self.min_cluster_size if self.min_samples is None else self.min_samples
|
||
|
)
|
||
|
|
||
|
if self._min_samples > X.shape[0]:
|
||
|
raise ValueError(
|
||
|
f"min_samples ({self._min_samples}) must be at most the number of"
|
||
|
f" samples in X ({X.shape[0]})"
|
||
|
)
|
||
|
|
||
|
# TODO(1.6): Remove
|
||
|
if self.algorithm == "kdtree":
|
||
|
warn(
|
||
|
(
|
||
|
"`algorithm='kdtree'`has been deprecated in 1.4 and will be renamed"
|
||
|
" to'kd_tree'`in 1.6. To keep the past behaviour, set"
|
||
|
" `algorithm='kd_tree'`."
|
||
|
),
|
||
|
FutureWarning,
|
||
|
)
|
||
|
self.algorithm = "kd_tree"
|
||
|
|
||
|
# TODO(1.6): Remove
|
||
|
if self.algorithm == "balltree":
|
||
|
warn(
|
||
|
(
|
||
|
"`algorithm='balltree'`has been deprecated in 1.4 and will be"
|
||
|
" renamed to'ball_tree'`in 1.6. To keep the past behaviour, set"
|
||
|
" `algorithm='ball_tree'`."
|
||
|
),
|
||
|
FutureWarning,
|
||
|
)
|
||
|
self.algorithm = "ball_tree"
|
||
|
|
||
|
mst_func = None
|
||
|
kwargs = dict(
|
||
|
X=X,
|
||
|
min_samples=self._min_samples,
|
||
|
alpha=self.alpha,
|
||
|
metric=self.metric,
|
||
|
n_jobs=self.n_jobs,
|
||
|
**self._metric_params,
|
||
|
)
|
||
|
if self.algorithm == "kd_tree" and self.metric not in KDTree.valid_metrics:
|
||
|
raise ValueError(
|
||
|
f"{self.metric} is not a valid metric for a KDTree-based algorithm."
|
||
|
" Please select a different metric."
|
||
|
)
|
||
|
elif (
|
||
|
self.algorithm == "ball_tree" and self.metric not in BallTree.valid_metrics
|
||
|
):
|
||
|
raise ValueError(
|
||
|
f"{self.metric} is not a valid metric for a BallTree-based algorithm."
|
||
|
" Please select a different metric."
|
||
|
)
|
||
|
|
||
|
if self.algorithm != "auto":
|
||
|
if (
|
||
|
self.metric != "precomputed"
|
||
|
and issparse(X)
|
||
|
and self.algorithm != "brute"
|
||
|
):
|
||
|
raise ValueError("Sparse data matrices only support algorithm `brute`.")
|
||
|
|
||
|
if self.algorithm == "brute":
|
||
|
mst_func = _hdbscan_brute
|
||
|
kwargs["copy"] = self.copy
|
||
|
elif self.algorithm == "kd_tree":
|
||
|
mst_func = _hdbscan_prims
|
||
|
kwargs["algo"] = "kd_tree"
|
||
|
kwargs["leaf_size"] = self.leaf_size
|
||
|
else:
|
||
|
mst_func = _hdbscan_prims
|
||
|
kwargs["algo"] = "ball_tree"
|
||
|
kwargs["leaf_size"] = self.leaf_size
|
||
|
else:
|
||
|
if issparse(X) or self.metric not in FAST_METRICS:
|
||
|
# We can't do much with sparse matrices ...
|
||
|
mst_func = _hdbscan_brute
|
||
|
kwargs["copy"] = self.copy
|
||
|
elif self.metric in KDTree.valid_metrics:
|
||
|
# TODO: Benchmark KD vs Ball Tree efficiency
|
||
|
mst_func = _hdbscan_prims
|
||
|
kwargs["algo"] = "kd_tree"
|
||
|
kwargs["leaf_size"] = self.leaf_size
|
||
|
else:
|
||
|
# Metric is a valid BallTree metric
|
||
|
mst_func = _hdbscan_prims
|
||
|
kwargs["algo"] = "ball_tree"
|
||
|
kwargs["leaf_size"] = self.leaf_size
|
||
|
|
||
|
self._single_linkage_tree_ = mst_func(**kwargs)
|
||
|
|
||
|
self.labels_, self.probabilities_ = tree_to_labels(
|
||
|
self._single_linkage_tree_,
|
||
|
self.min_cluster_size,
|
||
|
self.cluster_selection_method,
|
||
|
self.allow_single_cluster,
|
||
|
self.cluster_selection_epsilon,
|
||
|
self.max_cluster_size,
|
||
|
)
|
||
|
if self.metric != "precomputed" and not all_finite:
|
||
|
# Remap indices to align with original data in the case of
|
||
|
# non-finite entries. Samples with np.inf are mapped to -1 and
|
||
|
# those with np.nan are mapped to -2.
|
||
|
self._single_linkage_tree_ = remap_single_linkage_tree(
|
||
|
self._single_linkage_tree_,
|
||
|
internal_to_raw,
|
||
|
# There may be overlap for points w/ both `np.inf` and `np.nan`
|
||
|
non_finite=set(np.hstack([infinite_index, missing_index])),
|
||
|
)
|
||
|
new_labels = np.empty(self._raw_data.shape[0], dtype=np.int32)
|
||
|
new_labels[finite_index] = self.labels_
|
||
|
new_labels[infinite_index] = _OUTLIER_ENCODING["infinite"]["label"]
|
||
|
new_labels[missing_index] = _OUTLIER_ENCODING["missing"]["label"]
|
||
|
self.labels_ = new_labels
|
||
|
|
||
|
new_probabilities = np.zeros(self._raw_data.shape[0], dtype=np.float64)
|
||
|
new_probabilities[finite_index] = self.probabilities_
|
||
|
# Infinite outliers have probability 0 by convention, though this
|
||
|
# is arbitrary.
|
||
|
new_probabilities[infinite_index] = _OUTLIER_ENCODING["infinite"]["prob"]
|
||
|
new_probabilities[missing_index] = _OUTLIER_ENCODING["missing"]["prob"]
|
||
|
self.probabilities_ = new_probabilities
|
||
|
|
||
|
if self.store_centers:
|
||
|
self._weighted_cluster_center(X)
|
||
|
return self
|
||
|
|
||
|
def fit_predict(self, X, y=None):
|
||
|
"""Cluster X and return the associated cluster labels.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix} of shape (n_samples, n_features), or \
|
||
|
ndarray of shape (n_samples, n_samples)
|
||
|
A feature array, or array of distances between samples if
|
||
|
`metric='precomputed'`.
|
||
|
|
||
|
y : None
|
||
|
Ignored.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
y : ndarray of shape (n_samples,)
|
||
|
Cluster labels.
|
||
|
"""
|
||
|
self.fit(X)
|
||
|
return self.labels_
|
||
|
|
||
|
def _weighted_cluster_center(self, X):
|
||
|
"""Calculate and store the centroids/medoids of each cluster.
|
||
|
|
||
|
This requires `X` to be a raw feature array, not precomputed
|
||
|
distances. Rather than return outputs directly, this helper method
|
||
|
instead stores them in the `self.{centroids, medoids}_` attributes.
|
||
|
The choice for which attributes are calculated and stored is mediated
|
||
|
by the value of `self.store_centers`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : ndarray of shape (n_samples, n_features)
|
||
|
The feature array that the estimator was fit with.
|
||
|
|
||
|
"""
|
||
|
# Number of non-noise clusters
|
||
|
n_clusters = len(set(self.labels_) - {-1, -2})
|
||
|
mask = np.empty((X.shape[0],), dtype=np.bool_)
|
||
|
make_centroids = self.store_centers in ("centroid", "both")
|
||
|
make_medoids = self.store_centers in ("medoid", "both")
|
||
|
|
||
|
if make_centroids:
|
||
|
self.centroids_ = np.empty((n_clusters, X.shape[1]), dtype=np.float64)
|
||
|
if make_medoids:
|
||
|
self.medoids_ = np.empty((n_clusters, X.shape[1]), dtype=np.float64)
|
||
|
|
||
|
# Need to handle iteratively seen each cluster may have a different
|
||
|
# number of samples, hence we can't create a homogeneous 3D array.
|
||
|
for idx in range(n_clusters):
|
||
|
mask = self.labels_ == idx
|
||
|
data = X[mask]
|
||
|
strength = self.probabilities_[mask]
|
||
|
if make_centroids:
|
||
|
self.centroids_[idx] = np.average(data, weights=strength, axis=0)
|
||
|
if make_medoids:
|
||
|
# TODO: Implement weighted argmin PWD backend
|
||
|
dist_mat = pairwise_distances(
|
||
|
data, metric=self.metric, **self._metric_params
|
||
|
)
|
||
|
dist_mat = dist_mat * strength
|
||
|
medoid_index = np.argmin(dist_mat.sum(axis=1))
|
||
|
self.medoids_[idx] = data[medoid_index]
|
||
|
return
|
||
|
|
||
|
def dbscan_clustering(self, cut_distance, min_cluster_size=5):
|
||
|
"""Return clustering given by DBSCAN without border points.
|
||
|
|
||
|
Return clustering that would be equivalent to running DBSCAN* for a
|
||
|
particular cut_distance (or epsilon) DBSCAN* can be thought of as
|
||
|
DBSCAN without the border points. As such these results may differ
|
||
|
slightly from `cluster.DBSCAN` due to the difference in implementation
|
||
|
over the non-core points.
|
||
|
|
||
|
This can also be thought of as a flat clustering derived from constant
|
||
|
height cut through the single linkage tree.
|
||
|
|
||
|
This represents the result of selecting a cut value for robust single linkage
|
||
|
clustering. The `min_cluster_size` allows the flat clustering to declare noise
|
||
|
points (and cluster smaller than `min_cluster_size`).
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
cut_distance : float
|
||
|
The mutual reachability distance cut value to use to generate a
|
||
|
flat clustering.
|
||
|
|
||
|
min_cluster_size : int, default=5
|
||
|
Clusters smaller than this value with be called 'noise' and remain
|
||
|
unclustered in the resulting flat clustering.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
labels : ndarray of shape (n_samples,)
|
||
|
An array of cluster labels, one per datapoint.
|
||
|
Outliers are labeled as follows:
|
||
|
|
||
|
- Noisy samples are given the label -1.
|
||
|
- Samples with infinite elements (+/- np.inf) are given the label -2.
|
||
|
- Samples with missing data are given the label -3, even if they
|
||
|
also have infinite elements.
|
||
|
"""
|
||
|
labels = labelling_at_cut(
|
||
|
self._single_linkage_tree_, cut_distance, min_cluster_size
|
||
|
)
|
||
|
# Infer indices from labels generated during `fit`
|
||
|
infinite_index = self.labels_ == _OUTLIER_ENCODING["infinite"]["label"]
|
||
|
missing_index = self.labels_ == _OUTLIER_ENCODING["missing"]["label"]
|
||
|
|
||
|
# Overwrite infinite/missing outlier samples (otherwise simple noise)
|
||
|
labels[infinite_index] = _OUTLIER_ENCODING["infinite"]["label"]
|
||
|
labels[missing_index] = _OUTLIER_ENCODING["missing"]["label"]
|
||
|
return labels
|
||
|
|
||
|
def _more_tags(self):
|
||
|
return {"allow_nan": self.metric != "precomputed"}
|