Metadata-Version: 2.1
Name: pelote
Version: 0.8.0
Summary: Collection of network-related utilities for python.
Home-page: http://github.com/medialab/pelote
Author: Guillaume Plique
Author-email: guillaume.plique@sciencespo.fr
License: MIT
Description: [![Build Status](https://github.com/medialab/pelote/workflows/Tests/badge.svg)](https://github.com/medialab/pelote/actions)
        
        # Pelote
        
        Pelote is a python library full of graph-related functions that can be used to complement [networkx](https://networkx.org/) for higher-level tasks.
        
        It mainly helps with the following things:
        
        - Conversion of tabular data to graphs (bipartites, citation etc. in the spirit of [Table2Net](https://medialab.github.io/table2net/))
        - Conversion of graphs to tabular data
        - Monopartite projections of bipartite graphs
        - Miscellaneous graph helper functions (filtering out nodes, edges etc.)
        - Sparsification of graphs
        - Reading & writing of graph formats not found in `networkx` (such as [graphology](https://graphology.github.io/) JSON)
        
        As such it is the perfect companion to [ipysigma](https://github.com/Yomguithereal/ipysigma), our Jupyter widget that can render interactive graphs directly within your notebooks.
        
        ## Installation
        
        You can install `pelote` with pip with the following command:
        
        ```
        pip install pelote
        ```
        
        If you want to be able to use the library with `pandas`, you will need to install it also:
        
        ```
        pip install pandas
        ```
        
        ## Usage
        
        * [Tabular data to graphs](#tabular-data-to-graphs)
          * [table_to_bipartite_graph](#table_to_bipartite_graph)
          * [tables_to_graph](#tables_to_graph)
          * [edges_table_to_graph](#edges_table_to_graph)
        * [Graphs to tabular data](#graphs-to-tabular-data)
          * [graph_to_nodes_dataframe](#graph_to_nodes_dataframe)
          * [graph_to_edges_dataframe](#graph_to_edges_dataframe)
          * [graph_to_dataframes](#graph_to_dataframes)
        * [Graph projection](#graph-projection)
          * [monopartite_projection](#monopartite_projection)
        * [Graph sparsification](#graph-sparsification)
          * [global_threshold_sparsification](#global_threshold_sparsification)
          * [multiscale_backbone](#multiscale_backbone)
        * [Miscellaneous graph-related metrics](#miscellaneous-graph-related-metrics)
          * [edge_disparity](#edge_disparity)
          * [triangular_strength](#triangular_strength)
        * [Graph utilities](#graph-utilities)
          * [union_of_maximum_spanning_trees](#union_of_maximum_spanning_trees)
          * [largest_connected_component](#largest_connected_component)
          * [crop_to_largest_connected_component](#crop_to_largest_connected_component)
          * [largest_connected_component_subgraph](#largest_connected_component_subgraph)
          * [remove_edges](#remove_edges)
          * [filter_edges](#filter_edges)
          * [remove_nodes](#remove_nodes)
          * [filter_nodes](#filter_nodes)
          * [remove_leaves](#remove_leaves)
          * [filter_leaves](#filter_leaves)
        * [Learning](#learning)
          * [floatsam_threshold_learner](#floatsam_threshold_learner)
        * [Reading & Writing](#reading-&-writing)
          * [read_graphology_json](#read_graphology_json)
          * [write_graphology_json](#write_graphology_json)
        
        ---
        
        ### Tabular data to graphs
        
        #### table_to_bipartite_graph
        
        Function creating a bipartite graph from the given tabular data.
        
        *Arguments*
        
        * **table** *Iterable[Indexable] or pd.DataFrame* - input tabular data. It can
        be a large variety of things as long as it is 1. iterable and 2.
        yields indexable values such as dicts or lists. This can for instance
        be a list of dicts, a csv.DictReader stream etc. It also supports
        pandas DataFrame if the library is installed.
        * **first_part_col** *Hashable* - the name of the column containing the
        value representing a node in the resulting graph's first part.
        It could be the index if your rows are lists or a key if your rows
        are dicts instead.
        * **second_par_col** *Hashable* - the name of the column containing the
        value representing a node in the resulting graph's second part.
        It could be the index if your rows are lists or a key if your rows
        are dicts instead.
        * **node_part_attr** *str, optional* `"part"` - name of the node attribute containing
        the part it belongs to.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute containing
        its weight, i.e. the number of times it was found in the table.
        * **first_part_data** *Sequence or Callable or Mapping, optional* `None` - sequence (i.e. list, tuple etc.)
        of column from rows to keep as node attributes for the graph's first part.
        Can also be a mapping (i.e. dict) from row column to node attribute
        name to create.
        Can also be a function returning a dict of those attributes.
        Note that the first row containing a given node will take precedence over
        subsequent ones regarding data to include.
        * **second_part_data** *Sequence or Callable or Mapping, optional* `None` - sequence (i.e. list, tuple etc.)
        of column from rows to keep as node attributes for the graph's second part.
        Can also be a mapping (i.e. dict) from row column to node attribute
        name to create.
        Can also be a function returning a dict of those attributes.
        Note that the first row containing a given node will take precedence over
        subsequent ones regarding data to include.
        * **first_part_name** *Hashable, optional* `None` - can be given to rename the first part.
        * **second_part_name** *Hashable, optional* `None` - can be given to rename the second part.
        to display as graph's second part's name.
        * **disjoint_keys** *bool, optional* `False` - set this to True as an optimization
        mechanism if you know your part keys are disjoint, i.e. if no
        value for `first_part_col` can also be found in `second_part_col`.
        If you enable this option wrongly, the result can be incorrect.
        
        *Returns*
        
        *nx.AnyGraph* - the bipartite graph.
        
        #### tables_to_graph
        
        Function creating a graph from two tables: a table of nodes and a table of edges.
        
        ```python
        from pelote import tables_to_graph
        
        table_nodes = [
            {"name": "alice", "age": 50},
            {"name": "bob", "age": 12}
        ]
        
        table_edges = [
            {"source": "alice", "target": "bob", "weight": 0.8},
            {"source": "bob", "target": "alice", "weight": 0.2}
        ]
        
        g = tables_to_graph(
            table_nodes, table_edges, node_col="name", node_data=["age"], edge_data=["weight"], directed=True
        )
        ```
        
        *Arguments*
        
        * **nodes_table** *Iterable[Indexable] or pd.DataFrame* - input nodes in tabular
        format. It can be a large variety of things as long as it is 1. iterable
        and 2. yields indexable values such as dicts or lists. This can for
        instance be a list of dicts, a csv.DictReader stream etc. It also supports
        pandas DataFrame if the library is installed.
        * **edges_table** *Iterable[Indexable] or pd.DataFrame* - input edges in tabular
        format.
        * **node_col** *Hashable, optional* `"key"` - the name of the column containing the nodes in the nodes_table.
        It could be the index if your rows are lists or a key if your rows
        are dicts instead.
        * **edge_source_col** *Hashable, optional* `"source"` - the name of the column containing the edges' source
        nodes in the edges_table.
        * **edge_target_col** *Hashable, optional* `"target"` - the name of the column containing the edges' target
        nodes in the edges_table.
        * **node_data** *Sequence, optional* `[]` - sequence (i.e. list, tuple etc.)
        of columns' names from the nodes_table to keep as node attributes in the resulting graph.
        * **edge_data** *Sequence, optional* `[]` - sequence (i.e. list, tuple etc.) of columns' names
        from the edges_table to keep as edge attributes in the resulting graph, e.g. ["weight"].
        * **count_rows_as_weight** *bool, optional* `False` - set this to True to compute a weight
        attribute for each edge, corresponding to the number of times it was
        found in the table. The name of this attribute is defined by the
        `edge_weight_attr` parameter. If set to False, only the last occurrence of
        each edge will be kept in the graph.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute containing
        its weight, i.e. the number of times it was found in the table, if
        `count_rows_as_weight` is set to True.
        * **add_missing_nodes** *bool, optional* `True` - set this to True to check that the edges' sources and targets
        in the edges_table are all defined in the nodes_table.
        * **directed** *bool, optional* `False` - whether the resulting graph must be directed.
        
        *Returns*
        
        *nx.AnyGraph* - the resulting graph.
        
        #### edges_table_to_graph
        
        Function creating a graph from a table of edges.
        
        *Arguments*
        
        * **edges_table** *Iterable[Indexable] or pd.DataFrame* - input edges in tabular
        format. It can be a large variety of things as long as it is 1. iterable
        and 2. yields indexable values such as dicts or lists. This can for
        instance be a list of dicts, a csv.DictReader stream etc. It also supports
        pandas DataFrame if the library is installed.
        * **edge_source_col** *Hashable, optional* `"source"` - the name of the column containing the edges' source
        nodes in the edges_table.
        * **edge_target_col** *Hashable, optional* `"target"` - the name of the column containing the edges' target
        nodes in the edges_table.
        * **edge_data** *Sequence, optional* `[]` - sequence (i.e. list, tuple etc.) of columns' names
        from the edges_table to keep as edge attributes in the resulting graph, e.g. ["weight"].
        * **count_rows_as_weight** *bool, optional* `False` - set this to True to compute a weight
        attribute for each edge, corresponding to the number of times it was
        found in the table. The name of this attribute is defined by the
        `edge_weight_attr` parameter. If set to False, only the last occurrence of
        each edge will be kept in the graph.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute containing
        its weight, i.e. the number of times it was found in the table, if
        `count_rows_as_weight` is set to True.
        * **directed** *bool, optional* `False` - whether the resulting graph must be directed.
        
        *Returns*
        
        *nx.AnyGraph* - the resulting graph.
        
        ---
        
        ### Graphs to tabular data
        
        #### graph_to_nodes_dataframe
        
        Function converting the given networkx graph into a pandas DataFrame of
        its nodes.
        
        ```python
        from pelote import graph_to_nodes_dataframe
        
        df = graph_to_nodes_dataframe(graph)
        ```
        
        *Arguments*
        
        * **nx.AnyGraph**  - a networkx graph instance
        * **node_key_col** *str, optional* `"key"` - name of the DataFrame column containing
        the node keys. If None, the node keys will be used as the DataFrame
        index.
        
        *Returns*
        
        *pd.DataFrame* - A pandas DataFrame
        
        #### graph_to_edges_dataframe
        
        Function converting the given networkx graph into a pandas DataFrame of
        its edges.
        
        *Arguments*
        
        * **nx.AnyGraph**  - a networkx graph instance
        * **edge_source_col** *str, optional* `"source"` - name of the DataFrame column containing
        the edge source.
        * **edge_target_col** *str, optional* `"target"` - name of the DataFrame column containing
        the edge target.
        * **source_node_data** *Iterable or Mapping, optional* `None` - iterable of attribute names
        or mapping from attribute names to column name to be used to add
        columns to the resulting dataframe based on source node data.
        * **target_node_data** *Iterable or Mapping, optional* `None` - iterable of attribute names
        or mapping from attribute names to column name to be used to add
        columns to the resulting dataframe based on target node data.
        
        *Returns*
        
        *pd.DataFrame* - A pandas DataFrame
        
        #### graph_to_dataframes
        
        Function converting the given networkx graph into two pandas DataFrames:
        one for its nodes, one for its edges.
        
        *Arguments*
        
        * **nx.AnyGraph**  - a networkx graph instance
        * **node_key_col** *str, optional* `"key"` - name of the node DataFrame column containing
        the node keys. If None, the node keys will be used as the DataFrame
        index.
        * **edge_source_col** *str, optional* `"source"` - name of the edge DataFrame column containing
        the edge source.
        * **edge_target_col** *str, optional* `"target"` - name of the edge DataFrame column containing
        the edge target.
        * **source_node_data** *Iterable or Mapping, optional* `None` - iterable of attribute names
        or mapping from attribute names to column name to be used to add
        columns to the edge dataframe based on source node data.
        * **target_node_data** *Iterable or Mapping, optional* `None` - iterable of attribute names
        or mapping from attribute names to column name to be used to add
        columns to the edge dataframe based on target node data.
        
        *Returns*
        
        *None* - (pd.DataFrame, pd.DataFrame)
        
        ---
        
        ### Graph projection
        
        #### monopartite_projection
        
        Function returning the monopartite projection of a given bipartite graph
        wrt one of both partitions of the graph.
        
        That is to say the resulting graph will keep a single type of nodes sharing
        weighted edges based on the neighbors they shared in the bipartite graph.
        
        ```python
        import networkx as nx
        from pelote import monopartite_projection
        
        bipartite = nx.Graph()
        bipartite.add_nodes_from([1, 2, 3], part='account')
        bipartite.add_nodes_from([4, 5, 6], part='color')
        bipartite.add_edges_from([
            (1, 4),
            (1, 5),
            (2, 6),
            (3, 4),
            (3, 6)
        ])
        
        # Resulting graph will only contain nodes [1, 2, 3]
        # with edges: (1, 3) and (2, 3)
        monopartite = monopartite_projection(bipartite, 'account')
        ```
        
        *Arguments*
        
        * **bipartite_graph** *nx.AnyGraph* - target graph. The function will raise
        if given graph is not truly bipartite.
        * **part_to_keep** *Hashable or Collection* - partition to keep in the projected
        graph. It can either be the value of the part node attribute in the
        given graph (a string, most commonly), or a collection (a set, list etc.)
        holding the nodes composing the part to keep.
        * **node_part_attr** *str, optional* `"part"` - name of the node attribute containing
        the part the node belongs to.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute containing
        the edge's weight.
        * **metric** *str, optional* `None` - one of "jaccard", "overlap", "cosine", "dice",
        "binary_cosine", "pmi" or "dot_product". If not given, resulting weight
        will be set to the size of neighbor intersection.
        * **bipartition_check** *bool, optional* `True` - whether to check if given graph
        is truly bipartite. You can disable this as an optimization
        strategy if you know what you are doing.
        * **weight_threshold** *float, optional* `None` - if an edge weight should be less
        than this threshold we would not add it to the projected
        monopartite graph.
        
        *Returns*
        
        *nx.Graph* - the projected monopartite graph.
        
        ---
        
        ### Graph sparsification
        
        #### global_threshold_sparsification
        
        Function returning a copy of the given graph without edges whose weight
        is less than a given threshold.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **weight_threshold** *float* - weight threshold.
        * **edge_weight_attr** *str, optional* - name of the edge weight attribute.
        * **reverse** *bool, optional* - whether to reverse the threshold condition.
        That is to say an edge would be removed if its weight is greater
        than the threshold.
        * **keep_connected** *bool, optional* `False` - whether to keep the graph connected
        as it is using the UMST method.
        
        *Returns*
        
        *nx.AnyGraph* - the sparse graph.
        
        #### multiscale_backbone
        
        Function returning the multiscale backbone of the given graph, i.e. a copy
        of the graph were we only kept "relevant" edges, as defined by a
        statistical test where we compare the likelihood of a weighted edge existing
        vs. the null model.
        
        *Article*
        > Serrano, M. Ángeles, Marián Boguná, and Alessandro Vespignani. "Extracting the multiscale backbone of complex weighted networks." Proceedings of the national academy of sciences 106.16 (2009): 6483-6488.
        
        *References*
        
        - https://www.pnas.org/content/pnas/106/16/6483.full.pdf
        - https://en.wikipedia.org/wiki/Disparity_filter_algorithm_of_weighted_network
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **alpha** *float, optional* `0.05` - alpha value for the statistical test. It can
        be intuitively thought of as a p-value score for an edge to be
        kept in the resulting graph.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute holding
        the edge's weight.
        * **keep_connected** *bool, optional* `False` - whether to keep the graph connected
        as it is using the UMST method.
        
        *Returns*
        
        *nx.AnyGraph* - the sparse graph.
        
        ---
        
        ### Miscellaneous graph-related metrics
        
        #### edge_disparity
        
        Function computing the disparity score of each edge in the given graph. This
        score is typically used to extract the multiscale backbone of a weighted
        graph.
        
        The formula from the paper (relying on integral calculus) can be simplified
        to become:
        
        ```
        disparity(u, v) = min(
            (1 - normalizedWeight(u, v)) ^ (degree(u) - 1)),
            (1 - normalizedWeight(v, u)) ^ (degree(v) - 1))
        )
        ```
        
        where
        
        ```
        normalizedWeight(u, v) = weight(u, v) / weightedDegree(u)
        weightedDegree(u) = sum(weight(u, v) for v in neighbors(u))
        ```
        
        This score can sometimes be found reversed likewise:
        
        ```
        disparity(u, v) = max(
            1 - (1 - normalizedWeight(u, v)) ^ (degree(u) - 1)),
            1 - (1 - normalizedWeight(v, u)) ^ (degree(v) - 1))
        )
        ```
        
        so that higher score means better edges. We chose to keep the metric close
        to the paper to keep the statistical test angle. This means that, in this
        implementation at least, a low score for an edge means a high relevance and
        increases its chances to be kept in the backbone.
        
        Note that this algorithm has no proper definition for directed graphs and
        is only useful if edges have varying weights. This said, it could be
        possible to compute the disparity score only based on edge direction, if
        we drop the min part.
        
        *Article*
        > Serrano, M. Ángeles, Marián Boguná, and Alessandro Vespignani. "Extracting the multiscale backbone of complex weighted networks." Proceedings of the national academy of sciences 106.16 (2009): 6483-6488.
        
        *References*
        
        - https://www.pnas.org/content/pnas/106/16/6483.full.pdf
        - https://en.wikipedia.org/wiki/Disparity_filter_algorithm_of_weighted_network
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge attribute containing
        its weight.
        * **reverse** *bool, optional* `False` - whether to reverse the metric, i.e. higher weight
        means more relevant edges.
        
        *Returns*
        
        *dict* - Dictionnary with edges - (source, target) tuples - as keys and the disparity scores as values
        
        #### triangular_strength
        
        Function returning a graph edges triangular strength, sometimes also called
        Simmelian strength, i.e. the number of triangles each edge is a part of.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **full** *bool, optional* `False` - whether to return strength for every edge,
        including those with strength = 0.
        
        *Returns*
        
        *dict* - mapping of edges to their triangular strength.
        
        ---
        
        ### Graph utilities
        
        #### union_of_maximum_spanning_trees
        
        Generator yielding the edges belonging to any Maximum Spanning Tree (MST) of
        the given networkx graph.
        
        Note that this function will give to each edge with no weight a default
        weight of 1.
        
        *Article*
        > Arlind Nocaj, Mark Ortmann, and Ulrik Brandes "Untangling Hairballs. From 3 to 14 Degrees of Separation." Computer & Information Science, University of Konstanz, Germany, 2014, https://dx.doi.org/10.1007/978-3-662-45803-7_9.
        
        *References*
        
        - https://kops.uni-konstanz.de/bitstream/handle/123456789/30583/Nocaj_0-284485.pdf
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **edge_weight_attr** *str, optional* `"weight"` - name of the edge weight attribute.
        
        *Yields*
        
        *tuple* - source, target, attributes
        
        #### largest_connected_component
        
        Function returning the largest connected component of given networkx graph
        as a set of nodes.
        
        Note that this function will consider any given graph as undirected and
        will therefore work with weakly connected components in the directed case.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        
        *Returns*
        
        *set* - set of nodes representing the largest connected component.
        
        #### crop_to_largest_connected_component
        
        Function mutating the given networkx graph in order to keep only the
        largest connected component.
        
        Note that this function will consider any given graph as undirected and
        will therefore work with weakly connected components in the directed case.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        
        #### largest_connected_component_subgraph
        
        Function returning the largest connected component subgraph of the given
        networkx graph.
        
        Note that this function will consider any given graph as undirected and
        will therefore work with weakly connected components in the directed case.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - target graph.
        * **as_view** *bool, optional* `False` - whether to return the subgraph as a view.
        
        *Returns*
        
        *nx.AnyGraph* - the subgraph.
        
        #### remove_edges
        
        Function removing all edges that do not pass a predicate function from a
        given networkx graph.
        
        Note that this function mutates the given graph.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        * **predicate** *callable* - a function taking each edge source, target and
        attributes and returning True if you want to keep the edge or False
        if you want to remove it.
        
        #### filter_edges
        
        Function returning a copy of the given networkx graph but without the edges
        filtered out by the given predicate function
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        * **predicate** *callable* - a function taking each edge source, target and
        attributes and returning True if you want to keep the edge or False
        if you want to remove it.
        
        *Returns*
        
        *nx.AnyGraph* - the filtered graph.
        
        #### remove_nodes
        
        Function removing all nodes that do not pass a predicate function from a
        given networkx graph.
        
        Note that this function mutates the given graph.
        
        ```python
        from pelote import remove_nodes
        
        g = nx.Graph()
        g.add_node(1, weight=22)
        g.add_node(2, weight=4)
        g.add_edge(1, 2)
        
        remove_nodes(g, lambda n, a: a["weight"] >= 10)
        ```
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        * **predicate** *callable* - a function taking each node and node attributes
        and returning True if you want to keep the node or False if you want
        to remove it.
        
        #### filter_nodes
        
        Function returning a copy of the given networkx graph but without the nodes
        filtered out by the given predicate function
        
        ```python
        from pelote import filter_nodes
        
        g = nx.Graph()
        g.add_node(1, weight=22)
        g.add_node(2, weight=4)
        g.add_edge(1, 2)
        
        h = filter_nodes(g, lambda n, a: a["weight"] >= 10)
        ```
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        * **predicate** *callable* - a function taking each node and node attributes
        and returning True if you want to keep the node or False if you want
        to remove it.
        
        *Returns*
        
        *nx.AnyGraph* - the filtered graph.
        
        #### remove_leaves
        
        Function removing all leaves of the graph, i.e. the nodes incident to a
        single edge, i.e. the nodes with degree 1.
        
        This function is not recursive and will only remove one layer of leaves.
        
        Note that this function mutates the given graph.
        
        ```python
        from pelote import remove_leaves
        
        g = nx.Graph()
        g.add_edge(1, 2)
        g.add_edge(2, 3)
        
        remove_leaves(g)
        
        list(g.nodes)
        >>> [2]
        ```
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        
        #### filter_leaves
        
        Function returning a copy of the given networkx graph but without its leaves,
        i.e. the nodes incident to a single edge, i.e. the nodes with degree 1.
        
        This function is not recursive and will only filter only one layer of leaves.
        
        ```python
        from pelote import remove_leaves
        
        g = nx.Graph()
        g.add_edge(1, 2)
        g.add_edge(2, 3)
        
        h = filter_leaves(g)
        
        list(h.nodes)
        >>> [2]
        ```
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - a networkx graph.
        
        ---
        
        ### Learning
        
        #### floatsam_threshold_learner
        
        Function using an iterative algorithm to try and find the best weight
        threshold to apply to trim the given graph's edges while keeping the
        underlying community structure.
        
        It works by iteratively increasing the threshold and stopping as soon as
        a significant connected component starts to drift away from the principal
        one.
        
        This is basically an optimization algorithm applied to a complex nonlinear
        function using a very naive cost heuristic, but it works decently for typical
        cases as it emulates the method used by hand by some researchers when they
        perform this kind of task on Gephi, for instance.
        
        When working on metrics where lower is better (i.e. edge disparity), you
        can reverse the logic of the algorithm by tweaking `starting_threshold`
        and giving a negative `learning_rate`.
        
        *Arguments*
        
        * **graph** *nx.Graph* - Graph to sparsify.
        * **starting_threshold** *float, optional* `0.0` - Starting similarity threshold.
        * **learning_rate** *float, optional* `0.05` - How much to increase the threshold
        at each step of the algorithm.
        * **max_drifter_order** *int, optional* - Max order of component to detach itself
        from the principal one before stopping the algorithm. If not
        provided it will default to the logarithm of the graph's largest
        connected component's order.
        * **edge_weight_attr** *str, optional* `"weight"` - Name of the weight attribute.
        * **on_epoch** *callable, optional* - Function called on each epoch of the
        algorithm with some metadata about iteration state.
        
        *Returns*
        
        *float* - The found threshold
        
        ---
        
        ### Reading & Writing
        
        #### read_graphology_json
        
        Function reading and parsing the given json file representing a serialized
        [graphology](https://graphology.github.io/) graph as a networkx graph.
        
        Note that this function cannot parse a true mixed graph since this is not
        supported by networkx.
        
        *Arguments*
        
        * **target** *str or Path or file or dict* - target to read and parse. Can
        be a string path, a Path instance, a file buffer or already
        parsed JSON data as a dict.
        
        *Returns*
        
        *nx.AnyGraph* - a networkx graph instance.
        
        #### write_graphology_json
        
        Function serializing the given networkx graph as JSON, using the
        [graphology](https://graphology.github.io/) format.
        
        Note that both node keys and attribute names will be cast to string so
        they can safely be represented in JSON. As such in some cases (where
        your node keys and/or attribute names are not strings), this function
        will not be bijective when used with `read_graphology_json`.
        
        *Arguments*
        
        * **graph** *nx.AnyGraph* - graph to serialize.
        * **allow_mixed_keys** *bool, optional* `False` - whether to allow graph with mixed
        node key types to be serialized nonetheless. Keys will always be
        cast to string so keys might clash and produce an invalid
        serialization. Only use this if you know what you are doing.
        * **allow_invalid_attr_names** *bool, optional* `False` - whether to allow non-string
        attribute names. Note that if you chose to allow them, some might
        clash and produce an invalid serialization. Only use this if you
        know what you are doing.
        
        *Returns*
        
        *dict* - JSON data
        
Keywords: network
Platform: UNKNOWN
Requires-Python: >=3.6
Description-Content-Type: text/markdown
