We study information processing in populations of Boolean networks with evolving connectivity and systematically explore the interplay between the learning capability, robustness, the network topology, and the task complexity. We solve a long-standing open question and find computationally that, for large system sizes N, adaptive information processing drives the networks to a critical connectivity K_{c}=2. For finite size networks, the connectivity approaches the critical value with a power law of the system size N. We show that network learning and generalization are optimized near criticality, given that the task complexity and the amount of information provided surpass threshold values. Both random and evolved networks exhibit maximal t...
This article presents a theoretical investigation of computation beyond the Turing barrier from emer...
We study the evolution of Boolean networks as model systems for gene regulation. Inspired by biologi...
Systems poised at a dynamical critical regime, between order and disorder, have been shown capable o...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
This article investigates emergence and complexity in complex systems that can share information on ...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Random Boolean networks are a widely acknowledged model for cell dynamics. Previous studies have sho...
Gene regulatory networks can be successfully modeled as Boolean networks. A much discussed hypothesi...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
The properties of most systems composed of many interacting elements are neither determined by the t...
We present a theoretical investigation of the emergence of complexity or irreducible information in ...
This article presents a theoretical investigation of computation beyond the Turing barrier from emer...
We study the evolution of Boolean networks as model systems for gene regulation. Inspired by biologi...
Systems poised at a dynamical critical regime, between order and disorder, have been shown capable o...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
This article investigates emergence and complexity in complex systems that can share information on ...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
Random Boolean networks are a widely acknowledged model for cell dynamics. Previous studies have sho...
Gene regulatory networks can be successfully modeled as Boolean networks. A much discussed hypothesi...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
Random Boolean Networks (RBNs) are frequently used for modeling complex systems driven by informatio...
The properties of most systems composed of many interacting elements are neither determined by the t...
We present a theoretical investigation of the emergence of complexity or irreducible information in ...
This article presents a theoretical investigation of computation beyond the Turing barrier from emer...
We study the evolution of Boolean networks as model systems for gene regulation. Inspired by biologi...
Systems poised at a dynamical critical regime, between order and disorder, have been shown capable o...