temporalmapper.TemporalMapper
- class temporalmapper.TemporalMapper(time: ~numpy.ndarray[~typing.Any, ~numpy.dtype[~numpy._typing._array_like._ScalarType_co]] | None = None, data: ~numpy.ndarray[~typing.Any, ~numpy.dtype[~numpy._typing._array_like._ScalarType_co]] | None = None, clusterer: ~sklearn.base.ClusterMixin = None, n_slices: int = 5, n_neighbors: int = 5, overlap: float = 0.5, inclusion_threshold: float = 0.01, slice_method: str = 'time', density_based: bool = True, kernel: ~collections.abc.Callable[[float, float, float, float], float] = <function square>, kernel_params: dict = None, verbose: bool = False)
Wrapper over density-based Mapper for Temporal Topic Modelling
- graph
The temporal graph itself.
- Type:
networkx.classes.Digraph(Graph)
- fit():
Run the density-based mapper algorithm to construct the temporal graph.
- get_vertex_data(str node):
Returns the index of elements of
datawhich are in vertexnode.
- get_dir_subvertices(str node, float threshold = 0.0, bool backwards=False):
Returns the vertices that descend from
nodewith outedge weight at leastthreshold. Ifbackwards = True, returns the ancestors instead of descendants.
- temporal_plot():
Returns a matplotlib axis containing a temporal plot
- interactive_temporal_plot():
Returns a Plotly figure containing an interactive temporal plot
- __init__(time: ~numpy.ndarray[~typing.Any, ~numpy.dtype[~numpy._typing._array_like._ScalarType_co]] | None = None, data: ~numpy.ndarray[~typing.Any, ~numpy.dtype[~numpy._typing._array_like._ScalarType_co]] | None = None, clusterer: ~sklearn.base.ClusterMixin = None, n_slices: int = 5, n_neighbors: int = 5, overlap: float = 0.5, inclusion_threshold: float = 0.01, slice_method: str = 'time', density_based: bool = True, kernel: ~collections.abc.Callable[[float, float, float, float], float] = <function square>, kernel_params: dict = None, verbose: bool = False)
- Parameters:
clusterer (sklearn clusterer) – the clusterer to use for the slice-wise clustering, must accept sample_weights
n_slices (int) – number of time-points at which to cluster
n_neighbors (int (optional, default=5)) – The number of nearest neighbors used in the density computation.
overlap (float (optional, default=0.5)) – A float in (0,1) which specifies the
gparameter (see README)inclusion_threshold (float (optional, default=0.1)) – A float in [0,1) which specifies the minimum kernel weight for a point to be included in a slice.
slice_method (str (optional, default='time')) – One of ‘time’ or ‘data’. If time, generates n_checkpoints evenly spaced in time. If data, generates n_checkpoints such that there are equal amounts of data between the points.
density_based (bool (optional, default=True)) – Whether to use density-based Mapper. If False, skips the density computation and uses a standard pullback Mapper cover.
kernel (function (optional, default=temporalmapper.kernels.square)) – A function with signature
f(t0, t, density, binwidth, epsilon=0.01, params=None). Options are included in temporalmapper.kernels.kernel_params (tuple or None,) – Passed to kernel as params kwarg.
verbose (bool) – Does what you expect.
Methods
__init__(time, ...)assign_topics()Assign each vertex to a 'topic' based on its change over time.
build()Construct the density-based Mapper graph
edge_thresholded_subgraph(threshold)Return a subgraph
fit(X[, y, time_index, drop_time])Fit the TemporalMapper :param X: Should have shape (n_samples, n_features) :type X: ndarray :param time_index: Which feature of X to use as time.
get_dir_subvertices(v[, threshold, backwards])get_metadata_routing()Get metadata routing of this object.
get_params([deep])Get parameters for this estimator.
get_subgraph_data(vertices)get_vertex_data(node)initial_y_position()Compute initial positions for the y-axis of temporal plot
interactive_temporal_plot([cluster_labels, ...])Generate an interactive (plotly) temporal plot of the Mapper graph on a specified matplotlib axis using sensible defaults.
populate_edge_attrs()Add src_weight and dst_weight properties to every edge.
populate_node_attrs([labels])Add node attributes (dictionaries) to the vertices of the graph.
set_fit_request(*[, drop_time, time_index])Configure whether metadata should be requested to be passed to the
fitmethod.set_params(**params)Set the parameters of this estimator.
temporal_plot([ax, title, cluster_labels, ...])vertex_subgraph(v[, threshold])Attributes
SERIAL_VERSIONclustersdensitygomic_midpointsslicesweights