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Explanation-Based Neural Network Learning: A Lifelong Learning Approach

✍ Scribed by Sebastian Thrun (auth.)


Publisher
Springer US
Year
1996
Tongue
English
Leaves
273
Series
The Kluwer International Series in Engineering and Computer Science 357
Edition
1
Category
Library

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✦ Synopsis


Lifelong learning addresses situations in which a learner faces a series of different learning tasks providing the opportunity for synergy among them. Explanation-based neural network learning (EBNN) is a machine learning algorithm that transfers knowledge across multiple learning tasks. When faced with a new learning task, EBNN exploits domain knowledge accumulated in previous learning tasks to guide generalization in the new one. As a result, EBNN generalizes more accurately from less data than comparable methods. Explanation-Based Neural Network Learning: A Lifelong LearningApproach describes the basic EBNN paradigm and investigates it in the context of supervised learning, reinforcement learning, robotics, and chess.
`The paradigm of lifelong learning - using earlier learned knowledge to improve subsequent learning - is a promising direction for a new generation of machine learning algorithms. Given the need for more accurate learning methods, it is difficult to imagine a future for machine learning that does not include this paradigm.'
From the Foreword by Tom M. Mitchell.

✦ Table of Contents


Front Matter....Pages i-xv
Introduction....Pages 1-17
Explanation-Based Neural Network Learning....Pages 19-48
The Invariance Approach....Pages 49-92
Reinforcement Learning....Pages 93-129
Empirical Results....Pages 131-176
Discussion....Pages 177-193
Back Matter....Pages 195-264

✦ Subjects


Artificial Intelligence (incl. Robotics);Statistical Physics, Dynamical Systems and Complexity


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