We extend the study of learning and generalization in feed forward Boolean networks to random Boolean networks (RBNs). We explore the relationship between the learning capability and the network topology, the system size, the training sample size, and the complexity of the computational tasks. We show experimentally that there exists a critical connectivity Kc that improves the generalization and adaptation in networks. In addition, we show that in finite size networks, the critical K is a power-law function of the system size N and the fraction of inputs used during the training. We explain why adaptation improves at this critical connectivity by showing that the network ensemble manifests maximal topological diversity near Kc. Our work is...
Boolean networks have been used as a discrete model for several biological systems, including metabo...
The study of the response of complex dynamical social, biological, or technological networks to exte...
In artificial neural networks, learning from data is a computationally demanding task in which a lar...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
We study information processing in populations of Boolean networks with evolving connectivity and sy...
Canalization is a property of Boolean automata that characterizes the extent to which subsets of inp...
Biomolecular network dynamics are thought to operate near the critical boundary between ordered and ...
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...
We discuss an ensemble investigation of the computational capabilities of small-world networks as co...
Random automata networks consist of a set of simple compute nodes interacting with each other. In th...
<p>This dissertation presents three studies on Boolean networks. Boolean networks are a class of mat...
We study the complexity of network dynamics in a couple of very different model classes: The traditi...
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...
The study of the response of complex dynamical social, biological, or technological networks to exte...
In artificial neural networks, learning from data is a computationally demanding task in which a lar...
Abstract. It has been shown [7,16] that feedforward Boolean networks can learn to perform specific s...
Random Boolean networks (RBN) are discrete dynamical systems composed of N automata with a binary st...
We study information processing in populations of Boolean networks with evolving connectivity and sy...
Canalization is a property of Boolean automata that characterizes the extent to which subsets of inp...
Biomolecular network dynamics are thought to operate near the critical boundary between ordered and ...
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...
We discuss an ensemble investigation of the computational capabilities of small-world networks as co...
Random automata networks consist of a set of simple compute nodes interacting with each other. In th...
<p>This dissertation presents three studies on Boolean networks. Boolean networks are a class of mat...
We study the complexity of network dynamics in a couple of very different model classes: The traditi...
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...
The study of the response of complex dynamical social, biological, or technological networks to exte...
In artificial neural networks, learning from data is a computationally demanding task in which a lar...