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Anticipatory Learning Classifier Systems

✍ Scribed by Martin V. Butz (auth.)


Publisher
Springer US
Year
2002
Tongue
English
Leaves
196
Series
Genetic Algorithms and Evolutionary Computation 4
Edition
1
Category
Library

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✦ Synopsis


Anticipatory Learning Classifier Systems describes the state of the art of anticipatory learning classifier systems-adaptive rule learning systems that autonomously build anticipatory environmental models. An anticipatory model specifies all possible action-effects in an environment with respect to given situations. It can be used to simulate anticipatory adaptive behavior.

Anticipatory Learning Classifier Systems highlights how anticipations influence cognitive systems and illustrates the use of anticipations for (1) faster reactivity, (2) adaptive behavior beyond reinforcement learning, (3) attentional mechanisms, (4) simulation of other agents and (5) the implementation of a motivational module. The book focuses on a particular evolutionary model learning mechanism, a combination of a directed specializing mechanism and a genetic generalizing mechanism. Experiments show that anticipatory adaptive behavior can be simulated by exploiting the evolving anticipatory model for even faster model learning, planning applications, and adaptive behavior beyond reinforcement learning.

Anticipatory Learning Classifier Systems gives a detailed algorithmic description as well as a program documentation of a C++ implementation of the system.

✦ Table of Contents


Front Matter....Pages i-xxviii
Background....Pages 1-22
ACS2....Pages 23-49
Experiments with ACS2....Pages 51-80
Limits....Pages 81-97
Model Exploitation....Pages 99-114
Related Systems....Pages 115-120
Summary, Conclusions, and Future Work....Pages 121-138
Back Matter....Pages 139-172

✦ Subjects


Artificial Intelligence (incl. Robotics); Theory of Computation


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