Structural node similarity is widely used in analyzing complex networks. As one of the structural node similarity metrics, role similarity has the good merit of indicating automorphism (isomorphism). Existing algorithms to compute role similarity (e.g., RoleSim and NED) suffer from severe performance bottlenecks and thus cannot handle large real-world graphs. In this paper, we propose a new framework, namely StructSim, to compute nodes’ role similarity. Under this framework, we first prove that StructSim is an admissible role similarity metric based on the maximum matching. While the maximum matching is still too costly to scale, we then devise the BinCount matching that not only is efficient to compute but also guarantees the admissibility...
In this paper, we study the problem of retrieving top-k nodes that are similar to a given query node...
Similarity estimation between nodes based on structural properties of graphs is a basic building blo...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
RoleSim and SimRank are among the popular graph-theoretic similarity measures with many applications...
With the advent of the Internet, graph-structured data are ubiquitous. An essential task for graph-s...
Graphs are widely used to represent interactions (i.e., edges) between entities (i.e., nodes/vertice...
Abstract — Computing meaningful clusters of nodes is crucial to analyze large networks. In this pape...
RoleSim and SimRank are popular graph-theoretic similarity measures with many applications in, e.g.,...
This work was partially supported by the Spanish Ministry of Economy and the European Regional Devel...
Graphs allow to represent real problems in an abstract fashion which, though easily stated, raises n...
The orbits or a graph, diagraph or network provide an effective definition for role equivalence sinc...
Many real networks encompass a community structure which means that nodes are organized in densely c...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
Graphs are a data structure that lends itself to representing a wide range of entities connected by ...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
In this paper, we study the problem of retrieving top-k nodes that are similar to a given query node...
Similarity estimation between nodes based on structural properties of graphs is a basic building blo...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
RoleSim and SimRank are among the popular graph-theoretic similarity measures with many applications...
With the advent of the Internet, graph-structured data are ubiquitous. An essential task for graph-s...
Graphs are widely used to represent interactions (i.e., edges) between entities (i.e., nodes/vertice...
Abstract — Computing meaningful clusters of nodes is crucial to analyze large networks. In this pape...
RoleSim and SimRank are popular graph-theoretic similarity measures with many applications in, e.g.,...
This work was partially supported by the Spanish Ministry of Economy and the European Regional Devel...
Graphs allow to represent real problems in an abstract fashion which, though easily stated, raises n...
The orbits or a graph, diagraph or network provide an effective definition for role equivalence sinc...
Many real networks encompass a community structure which means that nodes are organized in densely c...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
Graphs are a data structure that lends itself to representing a wide range of entities connected by ...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...
In this paper, we study the problem of retrieving top-k nodes that are similar to a given query node...
Similarity estimation between nodes based on structural properties of graphs is a basic building blo...
Given a graph, how can we quantify similarity between two nodes in an effective and scalable way? Si...