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• Explores the factors that determine the antonymic strength of
the pair of opposites; • Questions whether there is a clear
distinction between ‘good’ and ‘bad’ opposites, and
examines whether the internal structure of the category of antonymy
should instead be described in terms of prototype theory; •
Interprets the relation between antonymy and cognitive concepts, as
well as the words which encode these concepts. Taking a
multi-method and cross-linguistic approach, this research is ideal
for students and researchers of lexical and cognitive semantics and
those with an interest in theoretical linguistics.
* Explores the factors that determine the antonymic strength of the
pair of opposites; * Questions whether there is a clear distinction
between 'good' and 'bad' opposites, and examines whether the
internal structure of the category of antonymy should instead be
described in terms of prototype theory; * Interprets the relation
between antonymy and cognitive concepts, as well as the words which
encode these concepts. Taking a multi-method and cross-linguistic
approach, this research is ideal for students and researchers of
lexical and cognitive semantics and those with an interest in
theoretical linguistics.
In this book, some of today's leading neurolinguists and
psycholinguists provide insight into the nature of phonological
processing using behavioural measures, computational modeling, EEG
and fMRI. The essays cover a range of topics including
categorization, acoustic variability and invariance,
underspecification, talker-specificity and machine learning,
focusing on the acoustics, perception, acquisition and neural
representation of speech.
In this book, some of today's leading neurolinguists and
psycholinguists provide insight into the nature of phonological
processing using behavioural measures, computational modeling, EEG
and fMRI. The essays cover a range of topics including
categorization, acoustic variability and invariance,
underspecification, talker-specificity and machine learning,
focusing on the acoustics, perception, acquisition and neural
representation of speech.
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