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Propositional Probabilistic And Evidential Reasoning Integrating Numerical And Symbolic Approaches 1st Edition Dr Weiru Liu Auth

  • SKU: BELL-4199070
Propositional Probabilistic And Evidential Reasoning Integrating Numerical And Symbolic Approaches 1st Edition Dr Weiru Liu Auth
$ 31.00 $ 45.00 (-31%)

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Propositional Probabilistic And Evidential Reasoning Integrating Numerical And Symbolic Approaches 1st Edition Dr Weiru Liu Auth instant download after payment.

Publisher: Physica-Verlag Heidelberg
File Extension: PDF
File size: 8.74 MB
Pages: 274
Author: Dr. Weiru Liu (auth.)
ISBN: 9783790818116, 9783790824933, 3790818119, 3790824933
Language: English
Year: 2001
Edition: 1

Product desciption

Propositional Probabilistic And Evidential Reasoning Integrating Numerical And Symbolic Approaches 1st Edition Dr Weiru Liu Auth by Dr. Weiru Liu (auth.) 9783790818116, 9783790824933, 3790818119, 3790824933 instant download after payment.

The book systematically provides the reader with a broad range of systems/research work to date that address the importance of combining numerical and symbolic approaches to reasoning under uncertainty in complex applications. It covers techniques on how to extend propositional logic to a probabilistic one and compares such derived probabilistic logic with closely related mechanisms, namely evidence theory, assumption based truth maintenance systems and rough sets, in terms of representing and reasoning with knowledge and evidence.
The book is addressed primarily to researchers, practitioners, students and lecturers in the field of Artificial Intelligence, particularly in the areas of reasoning under uncertainty, logic, knowledge representation and reasoning, and non-monotonic reasoning.

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