Class BarabasiAlbertGenerator<V,E>

java.lang.Object
edu.uci.ics.jung.algorithms.generators.random.BarabasiAlbertGenerator<V,E>
All Implemented Interfaces:
com.google.common.base.Supplier<Graph<V,E>>, EvolvingGraphGenerator<V,E>, GraphGenerator<V,E>, Supplier<Graph<V,E>>

public class BarabasiAlbertGenerator<V,E> extends Object implements EvolvingGraphGenerator<V,E>

Simple evolving scale-free random graph generator. At each time step, a new vertex is created and is connected to existing vertices according to the principle of "preferential attachment", whereby vertices with higher degree have a higher probability of being selected for attachment.

At a given timestep, the probability p of creating an edge between an existing vertex v and the newly added vertex is

 p = (degree(v) + 1) / (|E| + |V|);
 

where |E| and |V| are, respectively, the number of edges and vertices currently in the network (counting neither the new vertex nor the other edges that are being attached to it).

Note that the formula specified in the original paper (cited below) was

 p = degree(v) / |E|
 

However, this would have meant that the probability of attachment for any existing isolated vertex would be 0. This version uses Lagrangian smoothing to give each existing vertex a positive attachment probability.

The graph created may be either directed or undirected (controlled by a constructor parameter); the default is undirected. If the graph is specified to be directed, then the edges added will be directed from the newly added vertex u to the existing vertex v, with probability proportional to the indegree of v (number of edges directed towards v). If the graph is specified to be undirected, then the (undirected) edges added will connect u to v, with probability proportional to the degree of v.

The parallel constructor parameter specifies whether parallel edges may be created.

See Also:
  • "A.-L. Barabasi and R. Albert, Emergence of scaling in random networks, Science 286, 1999."
  • Field Details

    • mGraph

      private Graph<V,E> mGraph
    • mNumEdgesToAttachPerStep

      private int mNumEdgesToAttachPerStep
    • mElapsedTimeSteps

      private int mElapsedTimeSteps
    • mRandom

      private Random mRandom
    • vertex_index

      protected List<V> vertex_index
    • init_vertices

      protected int init_vertices
    • index_vertex

      protected Map<V,Integer> index_vertex
    • graphFactory

      protected com.google.common.base.Supplier<Graph<V,E>> graphFactory
    • vertexFactory

      protected com.google.common.base.Supplier<V> vertexFactory
    • edgeFactory

      protected com.google.common.base.Supplier<E> edgeFactory
  • Constructor Details

    • BarabasiAlbertGenerator

      public BarabasiAlbertGenerator(com.google.common.base.Supplier<Graph<V,E>> graphFactory, com.google.common.base.Supplier<V> vertexFactory, com.google.common.base.Supplier<E> edgeFactory, int init_vertices, int numEdgesToAttach, int seed, Set<V> seedVertices)
      Constructs a new instance of the generator.
      Parameters:
      graphFactory - factory for graphs of the appropriate type
      vertexFactory - factory for vertices of the appropriate type
      edgeFactory - factory for edges of the appropriate type
      init_vertices - number of unconnected 'seed' vertices that the graph should start with
      numEdgesToAttach - the number of edges that should be attached from the new vertex to pre-existing vertices at each time step
      seed - random number seed
      seedVertices - storage for the seed vertices that this graph creates
    • BarabasiAlbertGenerator

      public BarabasiAlbertGenerator(com.google.common.base.Supplier<Graph<V,E>> graphFactory, com.google.common.base.Supplier<V> vertexFactory, com.google.common.base.Supplier<E> edgeFactory, int init_vertices, int numEdgesToAttach, Set<V> seedVertices)
      Constructs a new instance of the generator, whose output will be an undirected graph, and which will use the current time as a seed for the random number generation.
      Parameters:
      graphFactory - factory for graphs of the appropriate type
      vertexFactory - factory for vertices of the appropriate type
      edgeFactory - factory for edges of the appropriate type
      init_vertices - number of vertices that the graph should start with
      numEdgesToAttach - the number of edges that should be attached from the new vertex to pre-existing vertices at each time step
      seedVertices - storage for the seed vertices that this graph creates
  • Method Details

    • initialize

      private void initialize(Set<V> seedVertices)
    • evolveGraph

      public void evolveGraph(int numTimeSteps)
      Description copied from interface: EvolvingGraphGenerator
      Instructs the algorithm to evolve the graph N steps.
      Specified by:
      evolveGraph in interface EvolvingGraphGenerator<V,E>
      Parameters:
      numTimeSteps - number of steps to iterate from the current state
    • evolveGraph

      private void evolveGraph()
    • createRandomEdges

      private Set<Pair<V>> createRandomEdges(Collection<V> preexistingNodes, V newVertex, int numEdges)
    • createRandomEdge

      private void createRandomEdge(Collection<V> preexistingNodes, V newVertex, Set<Pair<V>> added_pairs, WeightedChoice<V> weightedProbabilities)
    • numIterations

      public int numIterations()
      Description copied from interface: EvolvingGraphGenerator
      Retrieves the total number of steps elapsed.
      Specified by:
      numIterations in interface EvolvingGraphGenerator<V,E>
      Returns:
      number of elapsed steps
    • get

      public Graph<V,E> get()
      Specified by:
      get in interface com.google.common.base.Supplier<V>
      Specified by:
      get in interface Supplier<V>