The two volumes of Foundations of Knowledge Acquisition document the recent progress of basic research in knowledge acquisition sponsored by the Office of Naval Research. This volume is subtitled Machine Learning, and there is a companion volume subtitled Cognitive Models of Complex Learning. F
Foundations of Knowledge Acquisition: Machine Learning
β Scribed by Ryszard S. Michalski (auth.), Alan L. Meyrowitz, Susan Chipman (eds.)
- Publisher
- Springer US
- Year
- 1993
- Tongue
- English
- Leaves
- 340
- Series
- The Springer International Series in Engineering and Computer Science 195
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
One of the most intriguing questions about the new computer technology that has appeared over the past few decades is whether we humans will ever be able to make computers learn. As is painfully obvious to even the most casual computer user, most current computers do not. Yet if we could devise learning techniques that enable computers to routinely improve their performance through experience, the impact would be enormous. The result would be an explosion of new computer applications that would suddenly become economically feasible (e. g. , personalized computer assistants that automatically tune themselves to the needs of individual users), and a dramatic improvement in the quality of current computer applications (e. g. , imagine an airline scheduling program that improves its scheduling method based on analyzing past delays). And while the potential economic impact of successful learning methods is sufficient reason to invest in research into machine learning, there is a second significant reason: studying machine learning helps us understand our own human learning abilities and disabilities, leading to the possibility of improved methods in education. While many open questions remain about the methods by which machines and humans might learn, significant progress has been made.
β¦ Table of Contents
Front Matter....Pages i-xi
Learning = Inferencing + Memorizing....Pages 1-41
Adaptive Inference....Pages 43-81
On Integrating Machine Learning with Planning....Pages 83-116
The Role of Self-Models in Learning to Plan....Pages 117-143
Learning Flexible Concepts Using a Two-Tiered Representation....Pages 145-202
Competition-Based Learning....Pages 203-225
Problem Solving via Analogical Retrieval and Analogical Search Control....Pages 227-262
A View of Computational Learning Theory....Pages 263-289
The Probably Approximately Correct (PAC) and Other Learning Models....Pages 291-312
On the Automated Discovery of Scientific Theories....Pages 313-330
Back Matter....Pages 331-334
β¦ Subjects
Artificial Intelligence (incl. Robotics); Computer Science, general
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