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Seidenberg, Mark S.; Plaut, David C. – Cognitive Science, 2014
Rumelhart and McClelland's chapter about learning the past tense created a degree of controversy extraordinary even in the adversarial culture of modern science. It also stimulated a vast amount of research that advanced the understanding of the past tense, inflectional morphology in English and other languages, the nature of linguistic…
Descriptors: Morphemes, Morphology (Languages), Language Acquisition, Reading
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Laszlo, Sarah; Plaut, David C. – Brain and Language, 2012
The Parallel Distributed Processing (PDP) framework has significant potential for producing models of cognitive tasks that approximate how the brain performs the same tasks. To date, however, there has been relatively little contact between PDP modeling and data from cognitive neuroscience. In an attempt to advance the relationship between…
Descriptors: Word Recognition, Brain Hemisphere Functions, Language Processing, Guidelines
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Sibley, Daragh E.; Kello, Christopher T.; Plaut, David C.; Elman, Jeffrey L. – Cognitive Science, 2008
The forms of words as they appear in text and speech are central to theories and models of lexical processing. Nonetheless, current methods for simulating their learning and representation fail to approach the scale and heterogeneity of real wordform lexicons. A connectionist architecture termed the "sequence encoder" is used to learn…
Descriptors: Phonemes, Measures (Individuals), Language Processing, Word Recognition
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Plaut, David C.; Booth, James R. – Psychological Review, 2006
Plaut and Booth developed a distributed connectionist model of written word comprehension and evaluated it against empirical findings on individual and developmental differences in semantic priming in visual lexical decision. Borowsky and Besner raised a number of challenges for this model. First, the model was not shown to be capable of…
Descriptors: Models, Reading Comprehension, Individual Differences, Semantics