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Diffstat (limited to 'src/python/gudhi/clustering/tomato.py')
-rw-r--r-- | src/python/gudhi/clustering/tomato.py | 321 |
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diff --git a/src/python/gudhi/clustering/tomato.py b/src/python/gudhi/clustering/tomato.py new file mode 100644 index 00000000..fbba3cc8 --- /dev/null +++ b/src/python/gudhi/clustering/tomato.py @@ -0,0 +1,321 @@ +# This file is part of the Gudhi Library - https://gudhi.inria.fr/ - which is released under MIT. +# See file LICENSE or go to https://gudhi.inria.fr/licensing/ for full license details. +# Author(s): Marc Glisse +# +# Copyright (C) 2020 Inria +# +# Modification(s): +# - YYYY/MM Author: Description of the modification + +import numpy +from ..point_cloud.knn import KNearestNeighbors +from ..point_cloud.dtm import DTMDensity +from ._tomato import * + +# The fit/predict interface is not so well suited... + + +class Tomato: + """ + This clustering algorithm needs a neighborhood graph on the points, and an estimation of the density at each point. + A few possible graph constructions and density estimators are provided for convenience, but it is perfectly natural + to provide your own. + + :Requires: `SciPy <installation.html#scipy>`_, `Scikit-learn <installation.html#scikit-learn>`_ or others + (see :class:`~gudhi.point_cloud.knn.KNearestNeighbors`) in function of the options. + + Attributes + ---------- + n_clusters_: int + The number of clusters. Writing to it automatically adjusts `labels_`. + merge_threshold_: float + minimum prominence of a cluster so it doesn't get merged. Writing to it automatically adjusts `labels_`. + n_leaves_: int + number of leaves (unstable clusters) in the hierarchical tree + leaf_labels_: ndarray of shape (n_samples,) + cluster labels for each point, at the very bottom of the hierarchy + labels_: ndarray of shape (n_samples,) + cluster labels for each point, after merging + diagram_: ndarray of shape (`n_leaves_`, 2) + persistence diagram (only the finite points) + max_weight_per_cc_: ndarray of shape (n_connected_components,) + maximum of the density function on each connected component. This corresponds to the abscissa of infinite + points in the diagram + children_: ndarray of shape (`n_leaves_`-n_connected_components, 2) + The children of each non-leaf node. Values less than `n_leaves_` correspond to leaves of the tree. + A node i greater than or equal to `n_leaves_` is a non-leaf node and has children children_[i - `n_leaves_`]. + Alternatively at the i-th iteration, children[i][0] and children[i][1] are merged to form node `n_leaves_` + i + weights_: ndarray of shape (n_samples,) + weights of the points, as computed by the density estimator or provided by the user + params_: dict + Parameters like metric, etc + """ + + def __init__( + self, + graph_type="knn", + density_type="logDTM", + n_clusters=None, + merge_threshold=None, + # eliminate_threshold=None, + # eliminate_threshold (float): minimum max weight of a cluster so it doesn't get eliminated + **params + ): + """ + Args: + graph_type (str): 'manual', 'knn' or 'radius'. Default is 'knn'. + density_type (str): 'manual', 'DTM', 'logDTM', 'KDE' or 'logKDE'. When you have many points, + 'KDE' and 'logKDE' tend to be slower. Default is 'logDTM'. + metric (str|Callable): metric used when calculating the distance between instances in a feature array. + Defaults to Minkowski of parameter p. + kde_params (dict): if density_type is 'KDE' or 'logKDE', additional parameters passed directly to + sklearn.neighbors.KernelDensity. + k (int): number of neighbors for a knn graph (including the vertex itself). Defaults to 10. + k_DTM (int): number of neighbors for the DTM density estimation (including the vertex itself). + Defaults to k. + r (float): size of a neighborhood if graph_type is 'radius'. Also used as default bandwidth in kde_params. + eps (float): (1+eps) approximation factor when computing distances (ignored in many cases). + n_clusters (int): number of clusters requested. Defaults to None, i.e. no merging occurs and we get + the maximal number of clusters. + merge_threshold (float): minimum prominence of a cluster so it doesn't get merged. + symmetrize_graph (bool): whether we should add edges to make the neighborhood graph symmetric. + This can be useful with k-NN for small k. Defaults to false. + p (float): norm L^p on input points. Defaults to 2. + q (float): order used to compute the distance to measure. Defaults to dim. + Beware that when the dimension is large, this can easily cause overflows. + dim (float): final exponent in DTM density estimation, representing the dimension. Defaults to the + dimension, or 2 when the dimension cannot be read from the input (metric is "precomputed"). + n_jobs (int): Number of jobs to schedule for parallel processing on the CPU. + If -1 is given all processors are used. Default: 1. + params: extra parameters are passed to :class:`~gudhi.point_cloud.knn.KNearestNeighbors` and + :class:`~gudhi.point_cloud.dtm.DTMDensity`. + """ + # Should metric='precomputed' mean input_type='distance_matrix'? + # Should we be able to pass metric='minkowski' (what None does currently)? + self.graph_type_ = graph_type + self.density_type_ = density_type + self.params_ = params + self.__n_clusters = n_clusters + self.__merge_threshold = merge_threshold + # self.eliminate_threshold_ = eliminate_threshold + if n_clusters and merge_threshold: + raise ValueError("Cannot specify both a merge threshold and a number of clusters") + + def fit(self, X, y=None, weights=None): + """ + Args: + X ((n,d)-array of float|(n,n)-array of float|Sequence[Iterable[int]]): coordinates of the points, + or distance matrix (full, not just a triangle) if metric is "precomputed", or list of neighbors + for each point (points are represented by their index, starting from 0) if graph_type is "manual". + The number of points is currently limited to about 2 billion. + weights (ndarray of shape (n_samples)): if density_type is 'manual', a density estimate at each point + y: Not used, present here for API consistency with scikit-learn by convention. + """ + # TODO: First detect if this is a new call with the same data (only threshold changed?) + # TODO: less code duplication (subroutines?), less spaghetti, but don't compute neighbors twice if not needed. Clear error message for missing or contradictory parameters. + if weights is not None: + density_type = "manual" + else: + density_type = self.density_type_ + if density_type == "manual": + raise ValueError("If density_type is 'manual', you must provide weights to fit()") + + if self.graph_type_ == "manual": + self.neighbors_ = X + # FIXME: uniformize "message 'option'" vs 'message "option"' + assert density_type == "manual", 'If graph_type is "manual", density_type must be as well' + else: + metric = self.params_.get("metric", "minkowski") + if metric != "precomputed": + self.points_ = X + + # Slight complication to avoid computing knn twice. + need_knn = 0 + need_knn_ngb = False + need_knn_dist = False + if self.graph_type_ == "knn": + k_graph = self.params_.get("k", 10) + # If X has fewer than k points... + if k_graph > len(X): + k_graph = len(X) + need_knn = k_graph + need_knn_ngb = True + if self.density_type_ in ["DTM", "logDTM"]: + k = self.params_.get("k", 10) + k_DTM = self.params_.get("k_DTM", k) + # If X has fewer than k points... + if k_DTM > len(X): + k_DTM = len(X) + need_knn = max(need_knn, k_DTM) + need_knn_dist = True + # if we ask for more neighbors for the graph than the DTM, getting the distances is a slight waste, + # but it looks negligible + if need_knn > 0: + knn_args = dict(self.params_) + knn_args["k"] = need_knn + knn = KNearestNeighbors(return_index=need_knn_ngb, return_distance=need_knn_dist, **knn_args).fit_transform( + X + ) + if need_knn_ngb: + if need_knn_dist: + self.neighbors_ = knn[0][:, 0:k_graph] + knn_dist = knn[1] + else: + self.neighbors_ = knn + elif need_knn_dist: + knn_dist = knn + if self.density_type_ in ["DTM", "logDTM"]: + dim = self.params_.get("dim") + if dim is None: + dim = len(X[0]) if metric != "precomputed" else 2 + q = self.params_.get("q", dim) + weights = DTMDensity(k=k_DTM, metric="neighbors", dim=dim, q=q).fit_transform(knn_dist) + if self.density_type_ == "logDTM": + weights = numpy.log(weights) + + if self.graph_type_ == "radius": + if metric in ["minkowski", "euclidean", "manhattan", "chebyshev"]: + from scipy.spatial import cKDTree + + tree = cKDTree(X) + # TODO: handle "l1" and "l2" aliases? + p = self.params_.get("p") + if metric == "euclidean": + assert p is None or p == 2, "p=" + str(p) + " is not consistent with metric='euclidean'" + p = 2 + elif metric == "manhattan": + assert p is None or p == 1, "p=" + str(p) + " is not consistent with metric='manhattan'" + p = 1 + elif metric == "chebyshev": + assert p is None or p == numpy.inf, "p=" + str(p) + " is not consistent with metric='chebyshev'" + p = numpy.inf + elif p is None: + p = 2 # the default + eps = self.params_.get("eps", 0) + self.neighbors_ = tree.query_ball_tree(tree, r=self.params_["r"], p=p, eps=eps) + + # TODO: sklearn's NearestNeighbors.radius_neighbors can handle more metrics efficiently via its BallTree + # (don't bother with the _graph variant, it just calls radius_neighbors). + elif metric != "precomputed": + from sklearn.metrics import pairwise_distances + + X = pairwise_distances(X, metric=metric, n_jobs=self.params_.get("n_jobs")) + metric = "precomputed" + + if metric == "precomputed": + # TODO: parallelize? May not be worth it. + X = numpy.asarray(X) + r = self.params_["r"] + self.neighbors_ = [numpy.flatnonzero(l <= r) for l in X] + + if self.density_type_ in {"KDE", "logKDE"}: + # Slow... + assert ( + self.graph_type_ != "manual" and metric != "precomputed" + ), "Scikit-learn's KernelDensity requires point coordinates" + kde_params = dict(self.params_.get("kde_params", dict())) + kde_params.setdefault("metric", metric) + r = self.params_.get("r") + if r is not None: + kde_params.setdefault("bandwidth", r) + # Should we default rtol to eps? + from sklearn.neighbors import KernelDensity + + weights = KernelDensity(**kde_params).fit(self.points_).score_samples(self.points_) + if self.density_type_ == "KDE": + weights = numpy.exp(weights) + + # TODO: do it at the C++ level and/or in parallel if this is too slow? + if self.params_.get("symmetrize_graph"): + self.neighbors_ = [set(line) for line in self.neighbors_] + for i, line in enumerate(self.neighbors_): + line.discard(i) + for j in line: + self.neighbors_[j].add(i) + + self.weights_ = weights + # This is where the main computation happens + self.leaf_labels_, self.children_, self.diagram_, self.max_weight_per_cc_ = hierarchy(self.neighbors_, weights) + self.n_leaves_ = len(self.max_weight_per_cc_) + len(self.children_) + assert self.leaf_labels_.max() + 1 == len(self.max_weight_per_cc_) + len(self.children_) + # TODO: deduplicate this code with the setters below + if self.__merge_threshold: + assert not self.__n_clusters + self.__n_clusters = numpy.count_nonzero( + self.diagram_[:, 0] - self.diagram_[:, 1] > self.__merge_threshold + ) + len(self.max_weight_per_cc_) + if self.__n_clusters: + # TODO: set corresponding merge_threshold? + renaming = merge(self.children_, self.n_leaves_, self.__n_clusters) + self.labels_ = renaming[self.leaf_labels_] + # In case the user asked for something impossible. + # TODO: check for impossible situations before calling merge. + self.__n_clusters = self.labels_.max() + 1 + else: + self.labels_ = self.leaf_labels_ + self.__n_clusters = self.n_leaves_ + return self + + def fit_predict(self, X, y=None, weights=None): + """ + Equivalent to fit(), and returns the `labels_`. + """ + return self.fit(X, y, weights).labels_ + + # TODO: add argument k or threshold? Have a version where you can click and it shows the line and the corresponding k? + def plot_diagram(self): + """ + """ + import matplotlib.pyplot as plt + + l = self.max_weight_per_cc_.min() + r = self.max_weight_per_cc_.max() + if self.diagram_.size > 0: + plt.plot(self.diagram_[:, 0], self.diagram_[:, 1], "ro") + l = min(l, self.diagram_[:, 1].min()) + r = max(r, self.diagram_[:, 0].max()) + if l == r: + if l > 0: + l, r = 0.9 * l, 1.1 * r + elif l < 0: + l, r = 1.1 * l, 0.9 * r + else: + l, r = -1.0, 1.0 + plt.plot([l, r], [l, r]) + plt.plot( + self.max_weight_per_cc_, numpy.full(self.max_weight_per_cc_.shape, 1.1 * l - 0.1 * r), "ro", color="green" + ) + plt.show() + + # Use set_params instead? + @property + def n_clusters_(self): + return self.__n_clusters + + @n_clusters_.setter + def n_clusters_(self, n_clusters): + if n_clusters == self.__n_clusters: + return + self.__n_clusters = n_clusters + self.__merge_threshold = None + if hasattr(self, "leaf_labels_"): + renaming = merge(self.children_, self.n_leaves_, self.__n_clusters) + self.labels_ = renaming[self.leaf_labels_] + # In case the user asked for something impossible + self.__n_clusters = self.labels_.max() + 1 + + @property + def merge_threshold_(self): + return self.__merge_threshold + + @merge_threshold_.setter + def merge_threshold_(self, merge_threshold): + if merge_threshold == self.__merge_threshold: + return + if hasattr(self, "leaf_labels_"): + self.n_clusters_ = numpy.count_nonzero(self.diagram_[:, 0] - self.diagram_[:, 1] > merge_threshold) + len( + self.max_weight_per_cc_ + ) + else: + self.__n_clusters = None + self.__merge_threshold = merge_threshold |