Source code for networkx.algorithms.assortativity.neighbor_degree

import networkx as nx

__all__ = ["average_neighbor_degree"]


[docs]def average_neighbor_degree(G, source="out", target="out", nodes=None, weight=None): r"""Returns the average degree of the neighborhood of each node. The average neighborhood degree of a node `i` is .. math:: k_{nn,i} = \frac{1}{|N(i)|} \sum_{j \in N(i)} k_j where `N(i)` are the neighbors of node `i` and `k_j` is the degree of node `j` which belongs to `N(i)`. For weighted graphs, an analogous measure can be defined [1]_, .. math:: k_{nn,i}^{w} = \frac{1}{s_i} \sum_{j \in N(i)} w_{ij} k_j where `s_i` is the weighted degree of node `i`, `w_{ij}` is the weight of the edge that links `i` and `j` and `N(i)` are the neighbors of node `i`. Parameters ---------- G : NetworkX graph source : string ("in"|"out"|"in+out") Directed graphs only. Use "in"- or "out"-degree for source node. target : string ("in"|"out"|"in+out") Directed graphs only. Use "in"- or "out"-degree for target node. nodes : list or iterable, optional Compute neighbor degree for specified nodes. The default is all nodes in the graph. weight : string or None, optional (default=None) The edge attribute that holds the numerical value used as a weight. If None, then each edge has weight 1. Returns ------- d: dict A dictionary keyed by node with average neighbors degree value. Raises ------ NetworkXError If either `source` or `target` are not one of 'in', 'out', or 'in+out'. If either `source` or `target` is passed for an undirected graph. Examples -------- >>> G = nx.path_graph(4) >>> G.edges[0, 1]["weight"] = 5 >>> G.edges[2, 3]["weight"] = 3 >>> nx.average_neighbor_degree(G) {0: 2.0, 1: 1.5, 2: 1.5, 3: 2.0} >>> nx.average_neighbor_degree(G, weight="weight") {0: 2.0, 1: 1.1666666666666667, 2: 1.25, 3: 2.0} >>> G = nx.DiGraph() >>> nx.add_path(G, [0, 1, 2, 3]) >>> nx.average_neighbor_degree(G, source="in", target="in") {0: 0.0, 1: 1.0, 2: 1.0, 3: 0.0} >>> nx.average_neighbor_degree(G, source="out", target="out") {0: 1.0, 1: 1.0, 2: 0.0, 3: 0.0} Notes ----- For directed graphs you can also specify in-degree or out-degree by passing keyword arguments. See Also -------- average_degree_connectivity References ---------- .. [1] A. Barrat, M. Barthélemy, R. Pastor-Satorras, and A. Vespignani, "The architecture of complex weighted networks". PNAS 101 (11): 3747–3752 (2004). """ if G.is_directed(): if source == "in": source_degree = G.in_degree elif source == "out": source_degree = G.out_degree elif source == "in+out": source_degree = G.degree else: raise nx.NetworkXError( f"source argument {source} must be 'in', 'out' or 'in+out'" ) if target == "in": target_degree = G.in_degree elif target == "out": target_degree = G.out_degree elif target == "in+out": target_degree = G.degree else: raise nx.NetworkXError( f"target argument {target} must be 'in', 'out' or 'in+out'" ) else: if source != "out" or target != "out": raise nx.NetworkXError( f"source and target arguments are only supported for directed graphs" ) source_degree = G.degree target_degree = G.degree # precompute target degrees -- should *not* be weighted degree tgt_deg = dict(target_degree()) # average degree of neighbors avg = {} for n, deg in source_degree(nodes, weight=weight): # normalize but not by zero degree if deg == 0: avg[n] = 0.0 continue G_n = G[n] if weight is None: avg[n] = sum(tgt_deg[nbr] for nbr in G_n) / deg else: avg[n] = sum(G_n[nbr].get(weight, 1) * tgt_deg[nbr] for nbr in G_n) / deg return avg