Topologies of real-world complex networks are rarely accessible, but can often be reconstructed from experimentally obtained time series via suitable network reconstruction methods. Extending our earlier work on methods based on statistics of derivative-variable correlations, we here present a new method built on integrating an evolutionary optimization algorithm into the derivative-variable correlation method. Results obtained from our modi cation of the method in general outperform the original results, demonstrating the suitability of evolutionary optimization logic in network reconstruction problems. We show the method's usefulness in realistic scenarios where the reconstruction precision can be limited by the nature of the time series....
This paper proposes a mathematical framework for modelling the evolution of dynamic networks. Such ...
Differential evolution (DE) is one popular meta-heuristic, which is used to solve difficult optimiza...
This research deals with complex networks framework for evolutionary algorithms. This paper aims on ...
Topologies of real-world complex networks are rarely accessible, but can often be reconstructed from...
We propose a conceptually novel method of reconstructing the topology of dynamical networks. By exam...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
In this paper, three novel algorithms for optimisation based on the differential evolution algorithm...
In this article we discuss relations between the so-called complex networks and dynamics of evolutio...
The deduction of network connectivity from the observed node dynamics is costly in large networks. T...
Abstract: In this article we discuss relations between the so-called complex networks and dynamics o...
This paper proposes a mathematical framework for modelling the evolution of dynamic networks. Such ...
Differential evolution is a simple yet efficient heuristic originally designed for global optimizati...
This paper proposes a mathematical framework for modelling the evolution of dynamic networks. Such ...
Differential evolution (DE) is one popular meta-heuristic, which is used to solve difficult optimiza...
This research deals with complex networks framework for evolutionary algorithms. This paper aims on ...
Topologies of real-world complex networks are rarely accessible, but can often be reconstructed from...
We propose a conceptually novel method of reconstructing the topology of dynamical networks. By exam...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
Can a graph specifying the pattern of connections of a dynamical network be reconstructed from stati...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
In this paper, three novel algorithms for optimisation based on the differential evolution algorithm...
In this article we discuss relations between the so-called complex networks and dynamics of evolutio...
The deduction of network connectivity from the observed node dynamics is costly in large networks. T...
Abstract: In this article we discuss relations between the so-called complex networks and dynamics o...
This paper proposes a mathematical framework for modelling the evolution of dynamic networks. Such ...
Differential evolution is a simple yet efficient heuristic originally designed for global optimizati...
This paper proposes a mathematical framework for modelling the evolution of dynamic networks. Such ...
Differential evolution (DE) is one popular meta-heuristic, which is used to solve difficult optimiza...
This research deals with complex networks framework for evolutionary algorithms. This paper aims on ...