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v5.2
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    English
    v5.2

      Preferential Attachment

      HDC

      Overview

      Preferential attachment is a common phenomenon in complex networks, where nodes with more existing connections are more likely to attract new ones. When both nodes have a large number of connections, the probability of them forming a connection is significantly higher. This phenomenon was utilized by A. Barabási and R. Albert in their proposed BA model for generating random scale-free networks in 2002:

      The Preferential Attachment algorithm measures the similarity between two nodes by multiplying the number of neighbors each node has. It is computed using the following formula:

      where N(x) and N(y) are the sets of adjacent nodes to nodes x and y respectively.

      Higher Preferential Attachment scores indicate a greater similarity between two nodes, while a score of 0 indicates no such similarity.

      In this example, PA(D,E) = |N(D)| * |N(E)| = |{B, C, E, F}| * |{B, D, F}| = 4 * 3 = 12.

      Considerations

      • The Preferential Attachment algorithm treats all edges as undirected, ignoring their original direction.

      Example Graph

      Run the following statements on an empty graph to define its structure and insert data:

      INSERT (A:default {_id: "A"}),
             (B:default {_id: "B"}),
             (C:default {_id: "C"}),
             (D:default {_id: "D"}),
             (E:default {_id: "E"}),
             (F:default {_id: "F"}),
             (G:default {_id: "G"}),
             (A)-[:default]->(B),
             (B)-[:default]->(E),
             (C)-[:default]->(B),
             (C)-[:default]->(D),
             (C)-[:default]->(F),
             (D)-[:default]->(B),
             (D)-[:default]->(E),
             (F)-[:default]->(D),
             (F)-[:default]->(G);
      

      insert().into(@default).nodes([{_id:"A"}, {_id:"B"}, {_id:"C"}, {_id:"D"}, {_id:"E"}, {_id:"F"}, {_id:"G"}]);
      insert().into(@default).edges([{_from:"A", _to:"B"}, {_from:"B", _to:"E"}, {_from:"C", _to:"B"}, {_from:"C", _to:"D"}, {_from:"C", _to:"F"}, {_from:"D", _to:"B"}, {_from:"D", _to:"E"}, {_from:"F", _to:"D"}, {_from:"F", _to:"G"}]);
      

      Creating HDC Graph

      To load the entire graph to the HDC server hdc-server-1 as my_hdc_graph:

      CREATE HDC GRAPH my_hdc_graph ON "hdc-server-1" OPTIONS {
        nodes: {"*": ["*"]},
        edges: {"*": ["*"]},
        direction: "undirected",
        load_id: true,
        update: "static"
      }
      

      hdc.graph.create("my_hdc_graph", {
        nodes: {"*": ["*"]},
        edges: {"*": ["*"]},
        direction: "undirected",
        load_id: true,
        update: "static"
      }).to("hdc-server-1")
      

      Parameters

      Algorithm name: topological_link_prediction

      Name
      Type
      Spec
      Default
      Optional
      Description
      ids []_id / / No Specifies the first group of nodes for computation by their _id. If unset, all nodes in the graph are used as the first group of nodes.
      uuids []_uuid / / No Specifies the first group of nodes for computation by their _uuid. If unset, all nodes in the graph are used as the first group of nodes.
      ids2 []_id / / No Specifies the second group of nodes for computation by their _id. If unset, all nodes in the graph are used as the second group of nodes.
      uuids2 []_uuid / / No Specifies the second group of nodes for computation by their _uuid. If unset, all nodes in the graph are used as the second group of nodes.
      type String Preferential_Attachment Adamic_Adar No Specifies the similarity type; for Preferential Attachment, keep it as Preferential_Attachment.
      return_id_uuid String uuid, id, both uuid Yes Includes _uuid, _id, or both to represent nodes in the results.
      limit Integer ≥-1 -1 Yes Limits the number of results returned. Set to -1 to include all results.

      File Writeback

      CALL algo.topological_link_prediction.write("my_hdc_graph", {
        ids: ["C"],
        ids2: ["A","E","G"],
        type: "Preferential_Attachment",
        return_id_uuid: "id"
      }, {
        file: {
          filename: "pa"
        }
      })
      

      algo(topological_link_prediction).params({
        projection: "my_hdc_graph",
        ids: ["C"],
        ids2: ["A","E","G"],
        type: "Preferential_Attachment",
        return_id_uuid: "id"
      }).write({
        file: {
          filename: "pa"
        }
      })
      

      Result:

      _id1,_id2,result
      C,A,3
      C,E,6
      C,G,3
      

      Full Return

      CALL algo.topological_link_prediction.run("my_hdc_graph", {
        ids: ["C"],
        ids2: ["A","C","E","G"],
        type: "Preferential_Attachment",
        return_id_uuid: "id"
      }) YIELD pa
      RETURN pa
      

      exec{
        algo(topological_link_prediction).params({
          ids: ["C"],
          ids2: ["A","C","E","G"],
          type: "Preferential_Attachment",
          return_id_uuid: "id"
        }) as pa
        return pa
      } on my_hdc_graph
      

      Result:

      _id1 _id2 result
      C A 3
      C E 6
      C G 3

      Stream Return

      CALL algo.topological_link_prediction.stream("my_hdc_graph", {
        ids: ["C"],
        ids2: ["A", "B", "D", "E", "F", "G"],
        type: "Preferential_Attachment",
        return_id_uuid: "id"
      }) YIELD pa
      FILTER pa.result >= 6
      RETURN pa
      

      exec{
        algo(topological_link_prediction).params({
          ids: ["C"],
          ids2: ["A", "B", "D", "E", "F", "G"],
          type: "Preferential_Attachment",
          return_id_uuid: "id"
        }).stream() as pa
        where pa.result >= 6
        return pa
      } on my_hdc_graph
      

      Result:

      _id1 _id2 result
      C B 12
      C D 12
      C E 6
      C F 9
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