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Computational Context: The Value, Theory and Application of Context with AI [Kõva köide]

(Professor, Math & Psychology, Paine College, Augusta, GA), (Naval Research Laboratory, Washington DC), (Naval Research Laboratory, Washington DC)
  • Formaat: Hardback, 328 pages, kõrgus x laius: 234x156 mm, kaal: 680 g, 30 Tables, black and white; 35 Illustrations, color; 31 Illustrations, black and white
  • Ilmumisaeg: 21-Dec-2018
  • Kirjastus: CRC Press
  • ISBN-10: 1138320641
  • ISBN-13: 9781138320642
Teised raamatud teemal:
  • Formaat: Hardback, 328 pages, kõrgus x laius: 234x156 mm, kaal: 680 g, 30 Tables, black and white; 35 Illustrations, color; 31 Illustrations, black and white
  • Ilmumisaeg: 21-Dec-2018
  • Kirjastus: CRC Press
  • ISBN-10: 1138320641
  • ISBN-13: 9781138320642
Teised raamatud teemal:

This volume addresses context from three comprehensive perspectives: first, its importance, the issues surrounding context, and its value in the laboratory and the field; second, the theory guiding the AI used to model its context; and third, its applications in the field (e.g., decision-making). This breadth poses a challenge. The book analyzes how the environment (context) influences human perception, cognition and action. While current books approach context narrowly, the major contribution of this book is to provide an in-depth review over a broad range of topics for a computational context no matter its breadth. The volume outlines numerous strategies and techniques from world-class scientists who have adapted their research to solve different problems with AI, in difficult environments and complex domains to address the many computational challenges posed by context.

Context can be clear, uncertain or an illusion. Clear contexts: A father praising his child; a trip to the post office to buy stamps; a policewoman asking for identification. Uncertain contexts: A sneak attack; a surprise witness in a courtroom; a shout of "Fire! Fire!" Contexts as illusion: Humans fall prey to illusions that machines do not (Adelson’s checkerboard illusion versus a photometer). Determining context is not easy when disagreement exists, interpretations vary, or uncertainty reigns. Physicists like Einstein (relativity), Bekenstein (holographs) and Rovelli (universe) have written that reality is not what we commonly believe. Even outside of awareness, individuals act differently whether alone or in teams.

Can computational context with AI adapt to clear and uncertain contexts, to change over time, and to individuals, machines or robots as well as to teams? If a program automatically "knows" the context that improves performance or decisions, does it matter whether context is clear, uncertain or illusory? Written and edited by world class leaders from across the field of autonomous systems research, this volume carefully considers the computational systems being constructed to determine context for individual agents or teams, the challenges they face, and the advances they expect for the science of context.

Preface iii
1 Introduction
1(17)
W.F. Lawless
Ranjeev Mittu
Donald Sofge
2 Learning Context through Cognitive Priming
18(35)
Laura M. Hiatt
Wallace E. Lawson
Mark Roberts
3 The Use of Contextual Knowledge in a Digital Society
53(21)
Shu-Heng Chen
Ragupathy Venkatachalam
4 Challenges with addressing the Issue of Context within AI and Human-Robot Teaming
74(17)
Kristin E. Schaefer
Derya Aksaray
Julia Wright
Nicholas Roy
5 Machine Learning Approach for Task Generation in Uncertain Contexts
91(10)
Luke Marsh
Iryna Dzieciuch
Douglas S. Lange
6 Creating and Maintaining a World Model for Automated Decision Making
101(30)
Hope Allen
Donald Steiner
7 Probabilistic Scene Parsing
131(20)
Michael Walton
Doug Lange
Song-Chun Zhu
8 Using Computational Context Models to Generate Robot Adaptive Interactions with Humans
151(34)
Wayne Zachary
Taylor J. Carpenter
Thomas Santarelli
9 Context-Driven Proactive Decision Support: Challenges and Applications
185(18)
Manisha Mishra
David Sidoti
Gopi V. Avvari
Pujitha Mannaru
Diego P.M. Ayala
Krishna R. Pattipati
10 The Shared Story--Narrative Principles for Innovative Collaboration
203(26)
Beth Cardier
11 Algebraic Modeling of the Causal Break and Representation of the Decision Process in Contextual Structures
229(24)
Olivier Bartheye
Laurent Chaudron
12 A Contextual Decision-Making Framework
253(34)
Eugene Santos Jr.
Hien Nguyen
Keum Joo Kim
Jacob A. Russell
Gregory M. Hyde
Luke J. Veenhuis
Ramnjit S. Boparai
Luke T. De Guelle
Hung Vu Mac
13 Cyber-(in)Security, Context and Theory: Proactive Cyber-Defenses
287(34)
W.F. Lawless
R. Mittu
Is Moskowitz
D.A. Sofge
S. Russell
Index 321
William Lawless, as an engineer, in 1983, Lawless blew the whistle on Department of Energys mismanagement of radioactive wastes. For his PhD, he studied the causes of mistakes by organizations with world-class scientists and engineers. Afterwards, DOE invited him onto its citizen advisory board at its Savannah River Site where he co-authored numerous recommendations on the sites clean-up. In his research on mathematical metrics for teams, he has published two co-edited books on AI, and over 200 articles, book chapters and peer-reviewed proceedings. He has co-organized eight AAAI symposia at Stanford (e.g., in 2018: Artificial Intelligence for the Internet of Everything).









Ranjeev Mittu, is a Branch Head for the Information Management and Decision Architectures Branch within the Information Technology Division at the U.S. Naval Research Laboratory. He is the Section Head of Intelligent Decision Support Section which develops novel decision support systems through applying technologies from the AI, multi-agent systems and web services. He brings a strong background in transitioning R&D solutions to the operational community, demonstrated through his current sponsors including DARPA, OSD/NII, NSA, USTRANSCOM and ONR. He has authored 2 books, 5 book chapters, and numerous conference publications. He has an MS in Electrical Engineering from Johns Hopkins University.









Donald (Don) Sofgeis a Computer Scientist andRoboticist at the U.S. Naval Research Laboratory (NRL) with 30 years ofexperience in Artificial Intelligence andControl Systems R&D. He hasserved as PI/Co-PI on dozens of federally funded R&D programs and hasauthored/co-authored approximately 110 peer-reviewed publications,includingseveral edited books, many journal articles, and several conferenceproceedings. Don leads the Distributed Autonomous Systems Group at NRL where hedevelopsnature-inspired computing solutions to challenging problems insensing, artificial intelligence, and control of autonomous robotic systems.His current research focuseson control of autonomous teams or swarms of roboticsystems.