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Journal ArticleDOI

Neuronlike adaptive elements that can solve difficult learning control problems

TLDR
In this article, a system consisting of two neuron-like adaptive elements can solve a difficult learning control problem, where the task is to balance a pole that is hinged to a movable cart by applying forces to the cart base.
Abstract
It is shown how a system consisting of two neuronlike adaptive elements can solve a difficult learning control problem. The task is to balance a pole that is hinged to a movable cart by applying forces to the cart's base. It is argued that the learning problems faced by adaptive elements that are components of adaptive networks are at least as difficult as this version of the pole-balancing problem. The learning system consists of a single associative search element (ASE) and a single adaptive critic element (ACE). In the course of learning to balance the pole, the ASE constructs associations between input and output by searching under the influence of reinforcement feedback, and the ACE constructs a more informative evaluation function than reinforcement feedback alone can provide. The differences between this approach and other attempts to solve problems using neurolike elements are discussed, as is the relation of this work to classical and instrumental conditioning in animal learning studies and its possible implications for research in the neurosciences.

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Citations
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Journal ArticleDOI

Two-factor theory, the actor-critic model, and conditioned avoidance.

TL;DR: The well-known actor-critic model seamlessly addresses the problems with two-factor theory, while simultaneously being consistent with the core ideas that underlie that theory.
Book

Learning and Problem Solving with Multilayer Connectionist Systems

TL;DR: A novel algorithm is examined that combines ASPECTS of REINFORCEMENT LEARNING and a DATA-DIRECTED SEARCH for USEFUL WEIGHTS, and is shown to out perform reinFORMCEMENT-LEARNING ALGORITHMS.
Book ChapterDOI

Principles for Implicit Learning

TL;DR: This chapter was adapted from Cleeremans (1994) and from Cleermans (1995).
Proceedings Article

Learning to Control an Unstable System with Forward Modeling

TL;DR: This work extends previous work by considering how this methodology can be applied to the optimization of quantities that are distal not only in space but also in time.
Journal ArticleDOI

Neural controller based on back-propagation algorithm

TL;DR: The results show that control based on some approximation of theJacobian is possible for a neural network, and shows that the rate of convergence of the neural net does not seem to depend crucially on the values of the Jacobian.
References
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Journal ArticleDOI

Receptive fields, binocular interaction and functional architecture in the cat's visual cortex

TL;DR: This method is used to examine receptive fields of a more complex type and to make additional observations on binocular interaction and this approach is necessary in order to understand the behaviour of individual cells, but it fails to deal with the problem of the relationship of one cell to its neighbours.
Journal ArticleDOI

A Theory of Cerebellar Cortex

TL;DR: A detailed theory of cerebellar cortex is proposed whose consequence is that the cerebellum learns to perform motor skills and two forms of input—output relation are described, both consistent with the cortical theory.
Journal ArticleDOI

Receptive fields and functional architecture in two nonstriate visual areas (18 and 19) of the cat.

TL;DR: To UNDERSTAND VISION in physiological terms represents a formidable problem for the biologist, and one approach is to stimulate the retina with patterns of light while recording from single cells or fibers at various points along the visual pathway.
Journal ArticleDOI

Toward a modern theory of adaptive networks: Expectation and prediction.

TL;DR: The adaptive element presented learns to increase its response rate in anticipation of increased stimulation, producing a conditioned response before the occurrence of the unconditioned stimulus, and is in strong agreement with the behavioral data regarding the effects of stimulus context.
Journal ArticleDOI

Steps toward Artificial Intelligence

TL;DR: The problems of heuristic programming can be divided into five main areas: Search, Pattern-Recognition, Learning, Planning, and Induction as discussed by the authors, and the most successful heuristic (problem-solving) programs constructed to date.