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One of the most intriguing questions about the new computer
technology that has appeared over the past few decades is whether
we humans will ever be able to make computers learn. As is
painfully obvious to even the most casual computer user, most
current computers do not. Yet if we could devise learning
techniques that enable computers to routinely improve their
performance through experience, the impact would be enormous. The
result would be an explosion of new computer applications that
would suddenly become economically feasible (e. g. , personalized
computer assistants that automatically tune themselves to the needs
of individual users), and a dramatic improvement in the quality of
current computer applications (e. g. , imagine an airline
scheduling program that improves its scheduling method based on
analyzing past delays). And while the potential economic impact of
successful learning methods is sufficient reason to invest in
research into machine learning, there is a second significant
reason: studying machine learning helps us understand our own human
learning abilities and disabilities, leading to the possibility of
improved methods in education. While many open questions remain
about the methods by which machines and humans might learn,
significant progress has been made.
One of the most intriguing questions about the new computer
technology that has appeared over the past few decades is whether
we humans will ever be able to make computers learn. As is
painfully obvious to even the most casual computer user, most
current computers do not. Yet if we could devise learning
techniques that enable computers to routinely improve their
performance through experience, the impact would be enormous. The
result would be an explosion of new computer applications that
would suddenly become economically feasible (e. g. , personalized
computer assistants that automatically tune themselves to the needs
of individual users), and a dramatic improvement in the quality of
current computer applications (e. g. , imagine an airline
scheduling program that improves its scheduling method based on
analyzing past delays). And while the potential economic impact
ofsuccessful learning methods is sufficient reason to invest in
research into machine learning, there is a second significant
reason: studying machine learning helps us understand our own human
learning abilities and disabilities, leading to the possibility of
improved methods in education. While many open questions remain
aboutthe methods by which machines and humans might learn,
significant progress has been made.
The two volumes of Foundations of Knowledge Acquisition document
the recent progress of basic research in knowledge acquisition
sponsored by the Office of Naval Research. This volume is subtitled
Machine Learning, and there is a companion volume subtitled
Cognitive Models of Complex Learning. Funding was provided by a
five-year Accelerated Research Initiative (ARI), and made possible
significant advances in the scientific understanding of how
machines and humans can acquire new knowledge so as to exhibit
improved problem-solving behavior. Significant progress in machine
learning is reported along a variety of fronts. Chapters in Machine
Learning include work in analogical reasoning; induction and
discovery; learning and planning; learning by competition, using
genetic algorithms; and theoretical limitations. Knowledge
acquisition as pursued under the ARI was a coordinated research
thrust into both machine learning and human learning. Chapters in
Cognitive Modles of Complex Learning, also published by Kluwer
Academic Publishers, include summaries of work by cognitive
scientists who do computational modeling of human learning.In fact,
an accomplishment of research previously sponsored by ONR's
Cognitive Science Program was insight into the knowledge and skills
that distinguish human novices from human experts in various
domains; the Cognitive interest in the ARI was then to characterize
how the transition from novice to expert actually takes place.
These volumes of Foundations of Knowledge Acquisition serve as
excellent reference sources by bringing together descriptions of
recent and on-going research at the forefront of progress in one of
the most challenging arenas of artificial intelligence and
cognitive science. In addition, contributing authors comment on
exciting future directions for research.
The two volumes of Foundations of Knowledge Acquisition document
the recent progress of basic research in knowledge acquisition
sponsored by the Office of Naval Research. This volume is subtitled
Cognitive Models of Complex Learning, and there is a companion
volume, subtitles Machine Learning. Funding was provided by a
five-year Accelerated Research Initiative (ARI), and made possible
significant advances in the scientific understanding of how
machines and humans can acquire new knowledge so as to exhibit
improved problem-solving behavior. Knowledge acquisition, as
persued under the ARI, was a coordinated research thrust into both
machine learning and the human learning. Chapters in Cognitive
Models of Complex Learning thus include summaries of work by
cognitive scientists who do computational modeling of human
learning. In fact, an accomplishment of research previously
sponsored by ONR's Cognitive Science Program gave insight into the
knowledge and skills that distinguish human novices from human
experts in various domains; the cognitive interest in the ARI was
then to characterize how the transition form novice to expert
actually takes place.Chapters particularly relevant to that concern
are those written by Anderson, Kieras, Marshall, Ohlsson, and
VanLehn. Significant progress in machine learning is reported along
in a variety of fronts in the companion volume, Machine Learning,
also published by Kluwer Academic Publishers. Included is work in
analogical reasoning; induction and discovery; explanation-based
learning; learning by competition, using genetic algorithms;
learning within natural language systems; theoretical limitations,
learning in Soar, a proposed general architecture for intelligent
systems; and case-based reasoning. These volumes of Foundations of
Knowledge Acquisition are excellent reference sources by bringing
together descriptions of recent and ongoing research at the
forefront of progress in one the most challenging arenas of
artificial intelligence and cognitive science. In addition,
contributing authors comment on ecxiting future directions for
research.
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