By beginning with simple reactive behaviors and gradually building up to more memory-dependent behaviors, it may be possible for connectionist systems to eventually achieve the level of planning, This paper focuses on an intermediate step in this incremental process, where the appropriate means of providing guidance to adapting controllers is explored, A local and a global method of reinforcement learning are contrasted-a special form of back-propagation and an evolutionary algorithm. These methods are applied to a neural network controller for a simple robot. A number of experiments are described where the presence of explicit goals and the immediacy of reinforcement are varied. These experiments reveal how various types of guidance can af...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
From perception to action and from action to perception, all elements of an autonomous agent are int...
Abstract- In this paper an evolution strategy (ES) is introduced, to learn weights of a neural netwo...
Proceeding of: International Work-Conference on Artificial and Natural Neural Networks, IWANN'99 Ali...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
In this paper, a new coevolutive method, called Uniform Coevolution, is introduced to learn weights ...
This paper describes an incremental evolutionary approach used in the development of a suitable neur...
Existing approaches for learning to control a robot arm rely on supervised methods where correct beh...
In 1994, Yamauchi and Beer (1994) attempted to evolve a dynamic neural network as a control system f...
We are interested in the construction of ecological models of the evolution of learning behaviour us...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Complex task solving can be carried out by decomposing the original problem into more specific and s...
We discuss the methodological foundations for our work on the development of cognitive architectures...
Abstract—In this paper, we demonstrate how an artificial neural network (ANN) based controller can b...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
From perception to action and from action to perception, all elements of an autonomous agent are int...
Abstract- In this paper an evolution strategy (ES) is introduced, to learn weights of a neural netwo...
Proceeding of: International Work-Conference on Artificial and Natural Neural Networks, IWANN'99 Ali...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
In this paper, a new coevolutive method, called Uniform Coevolution, is introduced to learn weights ...
This paper describes an incremental evolutionary approach used in the development of a suitable neur...
Existing approaches for learning to control a robot arm rely on supervised methods where correct beh...
In 1994, Yamauchi and Beer (1994) attempted to evolve a dynamic neural network as a control system f...
We are interested in the construction of ecological models of the evolution of learning behaviour us...
This paper deals with the study of scaling up behaviors in evolutive robotics (ER). Complex behavior...
Complex task solving can be carried out by decomposing the original problem into more specific and s...
We discuss the methodological foundations for our work on the development of cognitive architectures...
Abstract—In this paper, we demonstrate how an artificial neural network (ANN) based controller can b...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
From perception to action and from action to perception, all elements of an autonomous agent are int...