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Knowledge Engineering
Building Cognitive Assistants for Evidence-based Reasoning

$94.99 (P)

  • Date Published: September 2016
  • availability: In stock
  • format: Hardback
  • isbn: 9781107122567

$ 94.99 (P)
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About the Authors
  • This book presents a significant advancement in the theory and practice of knowledge engineering, the discipline concerned with the development of intelligent agents that use knowledge and reasoning to perform problem solving and decision-making tasks. It covers the main stages in the development of a knowledge-based agent: understanding the application domain, modeling problem solving in that domain, developing the ontology, learning the reasoning rules, and testing the agent. The book focuses on a special class of agents: cognitive assistants for evidence-based reasoning that learn complex problem-solving expertise directly from human experts, support experts, and nonexperts in problem solving and decision making, and teach their problem-solving expertise to students. A powerful learning agent shell, Disciple-EBR, is included with the book, enabling students, practitioners, and researchers to develop cognitive assistants rapidly in a wide variety of domains that require evidence-based reasoning, including intelligence analysis, cybersecurity, law, forensics, medicine, and education.

    • Presents a significant advancement in the theory and practice of knowledge engineering
    • Follows a hands-on approach to learning knowledge engineering
    • Disciple-EBR is provided as a tool to develop personal learning assistants
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    Reviews & endorsements

    "At the pole opposite to statistical machine learning lies disciplined knowledge engineering. This book gives a new and comprehensive journey on the approach to AI as symbol manipulation, putting most of the relevant pieces of knowledge engineering together in a refreshingly interesting and novel way."
    Edward Feigenbaum, Stanford University

    "This well-written book is a much-needed update on the process of building expert systems. Gheorghe Tecuci and colleagues have developed the Disciple framework over many years and are using it here as a pedagogical tool for knowledge engineering. Hands-on exercises provide practical instruction to complement the explanations of principles, both of which make this a useful book for the classroom or self-study."
    Bruce G. Buchanan, Emeritus Professor of Computer Science, University of Pittsburgh

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    Product details

    • Date Published: September 2016
    • format: Hardback
    • isbn: 9781107122567
    • length: 480 pages
    • dimensions: 262 x 183 x 25 mm
    • weight: 1.16kg
    • contains: 350 colour illus. 59 tables
    • availability: In stock
  • Table of Contents

    1. Introduction
    2. Evidence-based reasoning: connecting the dots
    3. Methodologies and tools for agent design and development
    4. Modeling the problem-solving process
    5. Ontologies
    6. Ontology design and development
    7. Reasoning with ontologies and rules
    8. Learning for knowledge-based agents
    9. Rule learning
    10. Rule refinement
    11. Abstraction of reasoning
    12. Disciple agents
    13. Design principles for cognitive assistants.

  • Resources for

    Knowledge Engineering

    Gheorghe Tecuci, Dorin Marcu, Mihai Boicu, David A. Schum

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  • Authors

    Gheorghe Tecuci, George Mason University, Virginia
    Gheorghe Tecuci (PhD, University of Paris-South and Polytechnic Institute of Bucharest) is Professor of Computer Science and Director of the Learning Agents Center at George Mason University, Virginia, Member of the Romanian Academy, and former Chair of Artificial Intelligence at the US Army War College. He has published 11 books and more than 190 papers.

    Dorin Marcu, George Mason University, Virginia
    Dorin Marcu (PhD, George Mason University) is Research Assistant Professor in the Learning Agents Center at George Mason University, Virginia. He collaborated in the development of the Disciple Learning Agent Shell and a series of cognitive assistants based on it for different application domains, such as Disciple-COA (course of action critiquing), Disciple-COG (strategic center of gravity analysis), Disciple-LTA (learning, tutoring, and assistant), and Disciple-EBR (evidence-based reasoning).

    Mihai Boicu, George Mason University, Virginia
    Mihai Boicu (PhD, George Mason University) is Associate Professor of Information Sciences and Technology and Associate Director of the Learning Agents Center at George Mason University, Virginia. He is the main software architect of the Disciple agent development platform and coordinated the software development of Disciple-EBR. He has received the IAAI Innovative Application Award.

    David A. Schum, George Mason University, Virginia
    David A. Schum (PhD, Ohio State University) is Emeritus Professor of Systems Engineering, Operations Research, and Law, as well as Chief Scientist of the Learning Agents Center at George Mason University, Virginia. He has published more than 100 research papers and 6 books on evidence and probabilistic inference, and is recognized as one of the founding fathers of the emerging Science of Evidence.

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