Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by information processing, e.g. for gene regulatory networks (GRNs). Here we propose a hierarchical adaptive random Boolean Network (HARBN) as a system consisting of distinct adaptive RBNs (ARBNs) – subnetworks – connected by a set of permanent interlinks. We investigate mean node information, mean edge information as well as mean node degree. Information measures and internal subnetworks topology of HARBN coevolve and reach steady-states that are specific for a given network structure. The main natural feature of ARBNs, i.e. their adaptability, is preserved in HARBNs and they evolve towards critical configurations which is documented by power law distrib...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Attractors represent the long-term behaviors of Random Boolean Networks. We study how the amount of ...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
In this paper we investigate how the dynamics of a set of coupled RandomBoolean Netowrks is aected b...
We study information processing in populations of Boolean networks with evolving connectivity and sy...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
Random Boolean networks are used as generic models for the dynamics of complex systems of interactin...
<p>This dissertation presents three studies on Boolean networks. Boolean networks are a class of mat...
We study the order-chaos phase transition in random Boolean networks (RBNs), which have been used as...
The dynamical features of Random Boolean Networks (RBN) are examined, in the case where a scale-free...
Much current research is concentrated on building comput-ing networks based on nanoscale devices. Ho...
Random Boolean networks (RBNs) have been a popular model of genetic regulatory net-works for more th...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Attractors represent the long-term behaviors of Random Boolean Networks. We study how the amount of ...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
In this paper we investigate how the dynamics of a set of coupled RandomBoolean Netowrks is aected b...
We study information processing in populations of Boolean networks with evolving connectivity and sy...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
Random Boolean networks are used as generic models for the dynamics of complex systems of interactin...
<p>This dissertation presents three studies on Boolean networks. Boolean networks are a class of mat...
We study the order-chaos phase transition in random Boolean networks (RBNs), which have been used as...
The dynamical features of Random Boolean Networks (RBN) are examined, in the case where a scale-free...
Much current research is concentrated on building comput-ing networks based on nanoscale devices. Ho...
Random Boolean networks (RBNs) have been a popular model of genetic regulatory net-works for more th...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Attractors represent the long-term behaviors of Random Boolean Networks. We study how the amount of ...
Boolean networks have been used as a discrete model for several biological systems, including metabo...