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This book aims to understand human cognition and psychology through
a comprehensive computational theory of the human mind, namely, a
computational "cognitive architecture" (or more specifically, the
CLARION cognitive architecture). The goal of this work is to
develop a unified framework for understanding the human mind, and
within the unified framework, to develop process-based, mechanistic
explanations of a large variety of psychological phenomena.
Specifically, the book first describes the essential CLARION
framework and its cognitive-psychological justifications, then its
computational instantiations, and finally its applications to
capturing, simulating, and explaining various psychological
phenomena and empirical data. The book shows how the models and
simulations shed light on psychological mechanisms and processes
through the lens of a unified framework. In fields ranging from
cognitive science, to psychology, to artificial intelligence, and
even to philosophy, researchers, graduate and undergraduate
students, and practitioners of various kinds may have interest in
topics covered by this book. The book may also be suitable for
seminars or courses, at graduate or undergraduate levels, on
cognitive architectures or cognitive modeling (i.e. computational
psychology).
A variety of ideas, approaches, and techniques exist -- in terms of
both architecture and learning -- and this abundance seems to lead
to many exciting possibilities in terms of theoretical advances and
application potentials. Despite the apparent diversity, there is
clearly an underlying unifying theme: architectures that bring
together symbolic and connectionist models to achieve a synthesis
and synergy of the two different paradigms, and the learning and
knowledge acquisition methods for developing such architectures.
More effort needs to be extended to exploit the possibilities and
opportunities in this area.
This book is the outgrowth of The IJCAI Workshop on
Connectionist-Symbolic Integration: From Unified to Hybrid
Approaches, held in conjunction with the fourteenth International
Joint Conference on Artificial Intelligence (IJCAI '95). Featuring
various presentations and discussions, this two-day workshop
brought to light many new ideas, controversies, and syntheses which
lead to the present volume.
This book is concerned with the development, analysis, and
application of hybrid connectionist-symbolic models in artificial
intelligence and cognitive science. Drawing contributions from a
large international group of experts, it describes and compares a
variety of models in this area. The types of models discussed cover
a wide range of the evolving spectrum of hybrid models, thus
serving as a well-balanced progress report on the state of the art.
As such, this volume provides an information clearinghouse for
various proposed approaches and models that share the common belief
that connectionist and symbolic models can be usefully combined and
integrated, and such integration may lead to significant advances
in understanding intelligence.
Computational Architectures Integrating Neural and Symbolic
Processes: A Perspective on the State of the Art focuses on a
currently emerging body of research. With the reemergence of neural
networks in the 1980s with their emphasis on overcoming some of the
limitations of symbolic AI, there is clearly a need to support some
form of high-level symbolic processing in connectionist networks.
As argued by many researchers, on both the symbolic AI and
connectionist sides, many cognitive tasks, e.g. language
understanding and common sense reasoning, seem to require
high-level symbolic capabilities. How these capabilities are
realized in connectionist networks is a difficult question and it
constitutes the focus of this book. Computational Architectures
Integrating Neural and Symbolic Processes addresses the underlying
architectural aspects of the integration of neural and symbolic
processes. In order to provide a basis for a deeper understanding
of existing divergent approaches and provide insight for further
developments in this field, this book presents: (1) an examination
of specific architectures (grouped together according to their
approaches), their strengths and weaknesses, why they work, and
what they predict, and (2) a critique/comparison of these
approaches. Computational Architectures Integrating Neural and
Symbolic Processes is of interest to researchers, graduate
students, and interested laymen, in areas such as cognitive
science, artificial intelligence, computer science, cognitive
psychology, and neurocomputing, in keeping up-to-date with the
newest research trends. It is a comprehensive, in-depth
introduction to this new emerging field.
This book is a condensation of a large body of work concerning
human learning carried out over a period of more than five years by
Dr. Sun and his collaborators. In a nutshell, this work is
concerned with a broad framework for studying human cognition based
on a new approach that is characterized by its focus on the
dichotomy of, and the interaction between, explicit and implicit
cognition and a computational model that implements this framework.
In this work, a broad, generic computational model was developed
that instantiates Dr. Sun's framework and enables the testing of
his theoretical approach in a variety of ways. With this model,
simulation results were matched with data of human cognition in a
variety of different domains. Formal (mathematical and
computational) analyses were also carried out to further explore
the model and its numerous implementational details. Furthermore,
this book addresses some of the most significant theoretical
issues, such as symbol grounding, intentionality, social cognition,
consciousness, and other theoretical issues in relation to the
framework. The general framework and the model developed generate
interesting insights into these theoretical issues.
This book is a condensation of a large body of work concerning
human learning carried out over a period of more than five years by
Dr. Sun and his collaborators. In a nutshell, this work is
concerned with a broad framework for studying human cognition based
on a new approach that is characterized by its focus on the
dichotomy of, and the interaction between, explicit and implicit
cognition and a computational model that implements this framework.
In this work, a broad, generic computational model was developed
that instantiates Dr. Sun's framework and enables the testing of
his theoretical approach in a variety of ways. With this model,
simulation results were matched with data of human cognition in a
variety of different domains. Formal (mathematical and
computational) analyses were also carried out to further explore
the model and its numerous implementational details. Furthermore,
this book addresses some of the most significant theoretical
issues, such as symbol grounding, intentionality, social cognition,
consciousness, and other theoretical issues in relation to the
framework. The general framework and the model developed generate
interesting insights into these theoretical issues.
Computational Architectures Integrating Neural and Symbolic
Processes: A Perspective on the State of the Art focuses on a
currently emerging body of research. With the reemergence of neural
networks in the 1980s with their emphasis on overcoming some of the
limitations of symbolic AI, there is clearly a need to support some
form of high-level symbolic processing in connectionist networks.
As argued by many researchers, on both the symbolic AI and
connectionist sides, many cognitive tasks, e.g. language
understanding and common sense reasoning, seem to require
high-level symbolic capabilities. How these capabilities are
realized in connectionist networks is a difficult question and it
constitutes the focus of this book. Computational Architectures
Integrating Neural and Symbolic Processes addresses the underlying
architectural aspects of the integration of neural and symbolic
processes. In order to provide a basis for a deeper understanding
of existing divergent approaches and provide insight for further
developments in this field, this book presents: (1) an examination
of specific architectures (grouped together according to their
approaches), their strengths and weaknesses, why they work, and
what they predict, and (2) a critique/comparison of these
approaches. Computational Architectures Integrating Neural and
Symbolic Processes is of interest to researchers, graduate
students, and interested laymen, in areas such as cognitive
science, artificial intelligence, computer science, cognitive
psychology, and neurocomputing, in keeping up-to-date with the
newest research trends. It is a comprehensive, in-depth
introduction to this new emerging field.
The Cambridge Handbook of Computational Cognitive Sciences is a
comprehensive reference for this rapidly developing and highly
interdisciplinary field. Written with both newcomers and experts in
mind, it provides an accessible introduction of paradigms,
methodologies, approaches, and models, with ample detail and
illustrated by examples. It should appeal to researchers and
students working within the computational cognitive sciences, as
well as those working in adjacent fields including philosophy,
psychology, linguistics, anthropology, education, neuroscience,
artificial intelligence, computer science, and more.
Sequential behavior is essential to intelligence in general and a fundamental part of human activities, ranging from reasoning to language, and from everyday skills to complex problem solving. Sequence learning is an important component of learning in many tasks and application fields: planning, reasoning, robotics natural language processing, speech recognition, adaptive control, time series prediction, financial engineering, DNA sequencing, and so on. This book presents coherently integrated chapters by leading authorities and assesses the state of the art in sequence learning by introducing essential models and algorithms and by examining a variety of applications. The book offers topical sections on sequence clustering and learning with Markov models, sequence prediction and recognition with neural networks, sequence discovery with symbolic methods, sequential decision making, biologically inspired sequence learning models.
Hybrid neural systems are computational systems which are based mainly on artificial neural networks and allow for symbolic interpretation or interaction with symbolic components. This book is derived from a workshop held during the NIPS'98 in Denver, Colorado, USA, and competently reflects the state of the art of research and development in hybrid neural systems.The 26 revised full papers presented together with an introductory overview by the volume editors have been through a twofold process of careful reviewing and revision. The papers are organized in the following topical sections: structured connectionism and rule representation; distributed neural architectures and language processing; transformation and explanation; robotics, vision, and cognitive approaches.
This book explores the intersection between cognitive sciences and
social sciences. In particular, it explores the intersection
between individual cognitive modeling and modeling of multi-agent
interaction (social stimulation). The two contributing fields -
individual cognitive modeling (especially cognitive architectures)
and modeling of multi-agent interaction (including social
simulation and, to some extent, multi-agent systems) - have seen
phenomenal growth in recent years. However, the interaction of
these two fields has not been sufficiently developed. We believe
that the interaction of the two may be more significant than either
alone. They bring with them enormous intellectual capitals. These
intellectual capitals can be profitably leveraged in creating true
synergy between the two fields, leading to more in-depth studies
and better understanding of both individual cognition and
sociocultural processes. It is possible that an integrative field
of study in cognitive and social sciences is emerging and we are
laying the foundation for it.
This book explores the intersection between cognitive sciences and
social sciences. In particular, it explores the intersection
between individual cognitive modeling and modeling of multi-agent
interaction (social stimulation). The two contributing fields -
individual cognitive modeling (especially cognitive architectures)
and modeling of multi-agent interaction (including social
simulation and, to some extent, multi-agent systems) - have seen
phenomenal growth in recent years. However, the interaction of
these two fields has not been sufficiently developed. We believe
that the interaction of the two may be more significant than either
alone. They bring with them enormous intellectual capitals. These
intellectual capitals can be profitably leveraged in creating true
synergy between the two fields, leading to more in-depth studies
and better understanding of both individual cognition and
sociocultural processes. It is possible that an integrative field
of study in cognitive and social sciences is emerging and we are
laying the foundation for it.
This book is a definitive reference source for the growing,
increasingly more important, and interdisciplinary field of
computational cognitive modeling, that is, computational
psychology. It combines breadth of coverage with definitive
statements by leading scientists in this field. Research in
computational cognitive modeling explores the essence of cognition
and various cognitive functionalities through developing detailed,
process-based understanding by specifying computational mechanisms,
structures, and processes. Given the complexity of the human mind
and its manifestation in behavioral flexibility, process-based
computational models may be necessary to explicate and elucidate
the intricate details of the mind. The key to understanding
cognitive processes is often in fine details. Computational models
provide algorithmic specificity: detailed, exactly specified, and
carefully thought-out steps, arranged in precise yet flexible
sequences. These models provide both conceptual clarity and
precision at the same time. This book substantiates this approach
through overviews and many examples.
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