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Probabilistic Logic Networks A Comprehensive Framework For Uncertain Inference 1st Edition Ben Goertzel

  • SKU: BELL-4389772
Probabilistic Logic Networks A Comprehensive Framework For Uncertain Inference 1st Edition Ben Goertzel
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Probabilistic Logic Networks A Comprehensive Framework For Uncertain Inference 1st Edition Ben Goertzel instant download after payment.

Publisher: Springer US
File Extension: PDF
File size: 24.56 MB
Pages: 336
Author: Ben Goertzel, Matthew Iklé, Izabela Freire Goertzel, Ari Heljakka (auth.)
ISBN: 9780387768717, 9780387768724, 0387768718, 0387768726
Language: English
Year: 2009
Edition: 1

Product desciption

Probabilistic Logic Networks A Comprehensive Framework For Uncertain Inference 1st Edition Ben Goertzel by Ben Goertzel, Matthew Iklé, Izabela Freire Goertzel, Ari Heljakka (auth.) 9780387768717, 9780387768724, 0387768718, 0387768726 instant download after payment.

This book describes Probabilistic Logic Networks (PLN), a novel conceptual, mathematical and computational approach to uncertain inference. Going beyond prior probabilistic approaches to uncertain inference, PLN encompasses such ideas as induction, abduction, analogy, fuzziness and speculation, and reasoning about time and causality. The book provides an overview of PLN in the context of other approaches to uncertain inference. Topics addressed in the text include:

  • the basic formalism of PLN knowledge representation
  • the conceptual interpretation of the terms used in PLN
  • an indefinite probability approach to quantifying uncertainty, providing a general method for calculating the "weight-of-evidence" underlying the conclusions of uncertain inference
  • specific PLN inference rules and the corresponding truth-value formulas used to determine the strength of the conclusion of an inference rule from the strengths of the premises
  • large-scale inference strategies
  • inference using variables
  • indefinite probabilities involving quantifiers
  • inheritance based on properties or patterns
  • the Novamente Cognition Engine, an application of PLN
  • temporal and causal logic in PLN

Researchers and graduate students in artificial intelligence, computer science, mathematics and cognitive sciences will find this novel perspective on uncertain inference a thought-provoking integration of ideas from a variety of other lines of inquiry.

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