This paper explores the use of a real-valued modular genetic algorithm to evolve continuous-time recurrent neural networks capable of sequential behavior and learning. We evolve networks that can generate a fixed sequence of outputs in response to an external trigger occurring at varying intervals of time. We also evolve networks that can learn to generate one of a set of possible sequences based upon reinforcement from the environment. Finally, we utilize concepts from dynamical systems theory to understand the operation of some of these evolved networks. A novel feature of our approach is that we assume neither an a priori discretization of states or time nor an a priori learning algorithm that explicitly modifies network parameters durin...
We present a model for the time evolution of network architectures based on dynamical systems. We sh...
Ph.D.Thesis, Computer Science Dept., U Rochester; Dana H. Ballard, thesis advisor; simultaneously pu...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
This article extends previous work on evolving learning without synaptic plasticity from discrete ta...
This article extends previous work on evolving learning without synaptic plasticity from discrete ta...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
A novel variant of a familiar recurrent network learning algorithm is described. This algorithm is c...
We evolve small continuous-time recurrent neural networks with fixed weights that perform Hebbian le...
We would like the behavior of the artificial agents that we construct to be as well-adapted to their...
The interaction between learning and evolution has elicited much interest particularly among researc...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
In this report we present the results of a series of simulations in which neural networks undergo ch...
A drawback of using genetic algorithms (GAs) to train recurrent neural networks is that it takes a l...
We present a model for the time evolution of network architectures based on dynamical systems. We sh...
Ph.D.Thesis, Computer Science Dept., U Rochester; Dana H. Ballard, thesis advisor; simultaneously pu...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...
Learning Classifier Systems (LCS) traditionally use a ternary encoding to generalise over the enviro...
This article extends previous work on evolving learning without synaptic plasticity from discrete ta...
This article extends previous work on evolving learning without synaptic plasticity from discrete ta...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
A novel variant of a familiar recurrent network learning algorithm is described. This algorithm is c...
We evolve small continuous-time recurrent neural networks with fixed weights that perform Hebbian le...
We would like the behavior of the artificial agents that we construct to be as well-adapted to their...
The interaction between learning and evolution has elicited much interest particularly among researc...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
In this report we present the results of a series of simulations in which neural networks undergo ch...
A drawback of using genetic algorithms (GAs) to train recurrent neural networks is that it takes a l...
We present a model for the time evolution of network architectures based on dynamical systems. We sh...
Ph.D.Thesis, Computer Science Dept., U Rochester; Dana H. Ballard, thesis advisor; simultaneously pu...
Abstract. This paper proposes a new paradigm, referred to as Recur-rent Genetic Algorithms (RGA), to...