"Regier's work makes a distinct and tangible contribution to the study
of cognition and should be read by anyone interested in language
acquisition in particular, and learning in general. This work brings
about an impressive integration of ideas from cognitive linguistics,
connectionism, and computer science in order to attack the problem of
learning perceptually grounded semantics of spatial terms. The
research reported in this book is an excellent example of
interdisciplinary work."
-- Lokendra Shastri, Member AI Group,
International Computer Science Institute, Berkeley
"Regier develops a structured connectionist model for acquiring
spatial concepts that represents the epitome of cognitive science,
integrating perspectives from linguistics, artificial intelligence,
and psychology. This work further represents an excellent example of
how a complex model should be analyzed to establish its core
properties, implications, and limitations. Besides having
considerable scientific merit, the book is highly engaging, frequently
provocative, and beautifully written."
-- Lawrence W. Barsalou, Professor of Psychology,
University of Chicago
Drawing on ideas from cognitive linguistics, connectionism, and
perception, The Human Semantic Potential describes a
connectionist model that learns perceptually grounded semantics for
natural language in spatial terms. Languages differ in the ways in
which they structure space, and Regier's aim is to have the model
perform its learning task for terms from any natural language. The
system has so far succeeded in learning spatial terms from English,
German, Russian, Japanese, and Mixtec.
The model views simple movies of two-dimensional objects moving
relative to one another and learns to classify them linguistically in
accordance with the spatial system of some natural language. The
overall goal is to determine which sorts of spatial configurations and
events are learnable as the semantics for spatial terms and which are
not. Ultimately, the model and its theoretical underpinnings are a
step in the direction of articulating biologically based constraints
on the nature of human semantic systems.
Along the way Regier takes up such substantial issues as the
attraction and the liabilities of PDP and structured connectionist
modeling, the problem of learning without direct negative evidence,
and the area of linguistic universals, which is addressed in the model
itself. Trained on spatial terms from different languages, the model
permits observations about the possible bases of linguistic universals
and interlanguage variation.
Neural Network Modeling and Connectionism series
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