Community Search in Attributed Networks using Dominance Relationships and Random Walks
By: Nikolaos Georgiadis, Eleftherios Tiakas, Apostolos N. Papadopoulos
Potential Business Impact:
Finds groups of people with similar interests.
Community search in attributed networks poses a dual challenge: balancing structural connectivity -- the network's topological properties -- and attribute similarity -- the shared characteristics of nodes. This paper introduces a novel algorithm that integrates hop-based and random-walk-based methods to identify high-quality communities, effectively addressing this balance. Our approach employs the concept of the domination score to quantify the influence of nodes based on their attributes, followed by $k$-core extraction to ensure strong structural cohesion within the communities. By considering both the network structure and node attributes, the algorithm identifies communities that are not only well-connected, but also share meaningful attribute similarities. We evaluated the algorithm on large real-world datasets, demonstrating its ability to efficiently identify cohesive communities, making it suitable for applications such as social network analysis and recommendation systems.
Similar Papers
Community Search in Time-dependent Road-social Attributed Networks
Social and Information Networks
Finds groups of people with similar interests and places.
Community Quality and Influence Maximization: An Empirical Study
Social and Information Networks
Finds best people to spread ideas online.
Exact Matching in Correlated Networks with Node Attributes for Improved Community Recovery
Social and Information Networks
Connects people across different online groups.