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Uncertain Inference

Uncertain Inference

Uncertain Inference

Henry E. Kyburg, Jr, University of Rochester, New York
Choh Man Teng, Institute for Human and Machine Intelligence
August 2001
Paperback
9780521001014

    Coping with uncertainty is a necessary part of ordinary life and is crucial to an understanding of how the mind works. For example, it is a vital element in developing artificial intelligence that will not be undermined by its own rigidities. There have been many approaches to the problem of uncertain inference, ranging from probability to inductive logic to nonmonotonic logic. Thisbook seeks to provide a clear exposition of these approaches within a unified framework. The principal market for the book will be students and professionals in philosophy, computer science, and AI. Among the special features of the book are a chapter on evidential probability, which has not received a basic exposition before; chapters on nonmonotonic reasoning and theory replacement, matters rarely addressed in standard philosophical texts; and chapters on Mill's methods and statistical inference that cover material sorely lacking in the usual treatments of AI and computer science.

    • Detailed coverage of different approaches to uncertainty with extensive examples
    • Will appeal to students in AI and computer science, as well as philosophy
    • Kyburg is well-known in this area and author of many books (including KYBURG/Theory and Measurement/1984/0521 248787)

    Product details

    January 2005
    Adobe eBook Reader
    9780511032219
    0 pages
    0kg
    This ISBN is for an eBook version which is distributed on our behalf by a third party.

    Table of Contents

    • Preface
    • 1. Historical background
    • 2. First order logic
    • 3. The probability calculus
    • 4. Interpretations of probability
    • 5. Nonstandard measures of support
    • 6. Nonmonotonic reasoning
    • 7. Theory replacement
    • 8. Statistical inference
    • 9. Evidential probability
    • 10. Semantics
    • 11. Applications
    • 12. Scientific inference.
      Authors
    • Henry E. Kyburg, Jr , University of Rochester, New York
    • Choh Man Teng , Institute for Human and Machine Intelligence