Game theory based methods designed to solve the problem of community structure detection in complex networks have emerged in recent years as an alternative to classical and optimization based approaches. The Mixed Nash Extremal Optimization uses a generative relation for the characterization of Nash equilibria to identify the community structure of a network by converting the problem into a non-cooperative game. This paper proposes a method to enhance this algorithm by reducing the number of payoff function evaluations. Numerical experiments performed on synthetic and real-world networks show that this approach is efficient, with results better or just as good as other state-of-the-art methods
The problem of Nash equilibrium seeking is investigated in a networked game. The game is defined as ...
Abstract — This paper studies n-person simultaneous-move games with linear best response function, w...
The difficulty of analysis in social networks mainly originates from its huge scale and complicated ...
The detection of evolving communities in dynamic complex networks is a challenging problem that rece...
The detection of evolving communities in dynamic complex networks is a challenging problem that rece...
In this paper we describe a novel algorithm based on Game Theory for Community Detection in Social N...
Most real-world social networks are inherently dynamic, composed of communities that are constantly ...
The problem of community detection is important as it helps in understanding the spread of informat...
Abstract—Discovering communities in popular social networks like Facebook has been receiving signifi...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Abstract—Most real-world social networks are inherently dynamic and composed of communities that are...
Motivated by the observation that communities in real world social networks form due to actions of r...
Abstract—By increasing the popularity of social networking websites like Facebook and Twitter, analy...
In this paper we describe a novel algorithm based on Game Theory for Community Detection in Online S...
National audienceWe formulate a generic network game as a generalized Nash equilibrium problem. Rely...
The problem of Nash equilibrium seeking is investigated in a networked game. The game is defined as ...
Abstract — This paper studies n-person simultaneous-move games with linear best response function, w...
The difficulty of analysis in social networks mainly originates from its huge scale and complicated ...
The detection of evolving communities in dynamic complex networks is a challenging problem that rece...
The detection of evolving communities in dynamic complex networks is a challenging problem that rece...
In this paper we describe a novel algorithm based on Game Theory for Community Detection in Social N...
Most real-world social networks are inherently dynamic, composed of communities that are constantly ...
The problem of community detection is important as it helps in understanding the spread of informat...
Abstract—Discovering communities in popular social networks like Facebook has been receiving signifi...
Most real-world social networks are inherently dynamic and composed of communities that are constant...
Abstract—Most real-world social networks are inherently dynamic and composed of communities that are...
Motivated by the observation that communities in real world social networks form due to actions of r...
Abstract—By increasing the popularity of social networking websites like Facebook and Twitter, analy...
In this paper we describe a novel algorithm based on Game Theory for Community Detection in Online S...
National audienceWe formulate a generic network game as a generalized Nash equilibrium problem. Rely...
The problem of Nash equilibrium seeking is investigated in a networked game. The game is defined as ...
Abstract — This paper studies n-person simultaneous-move games with linear best response function, w...
The difficulty of analysis in social networks mainly originates from its huge scale and complicated ...