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In cognitive science, artificial intelligence,
psychology, and education,
a growing body of research supports the view that the learning process is
strongly influenced by the learner's goals.
The fundamental tenet of goal-driven learning is that learning is largely an
active and strategic process in which the learner, human or machine,
attempts to identify and satisfy its information needs in the context of its
tasks and goals, its prior knowledge, its capabilities,
and environmental opportunities for learning.
This book brings together a diversity of research on goal-driven learning to
establish a broad,
interdisciplinary framework that describes the goal-driven learning process.
It collects and solidifies existing results on this important issue in machine
and human learning and presents a theoretical framework for future
investigations.
The book opens with an an overview of goal-driven learning research and
computational and cognitive models of the goal-driven learning process.
This introduction is followed by a collection of fourteen recent research
articles addressing fundamental issues of the field,
including psychological and functional arguments for modeling learning as a
deliberative, planful process;
experimental evaluation of the benefits of utility-based analysis to guide
decisions about what to learn;
case studies of computational models in which learning is driven by reasoning
about learning goals; psychological evidence for human goal-driven learning;
and the ramifications of goal-driven learning in educational contexts.
The second part of the book presents six position papers reflecting ongoing
research and current issues in goal-driven learning.
Issues discussed include methods for pursuing psychological studies of
goal-driven learning,
frameworks for the design of active and multistrategy learning systems,
and methods for selecting and balancing the goals that drive learning.
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