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Norris, Dennis; Kinoshita, Sachiko; van Casteren, Maarten – Journal of Memory and Language, 2010
Early on during word recognition, letter positions are not accurately coded. Evidence for this comes from transposed-letter (TL) priming effects, in which letter strings generated by transposing two adjacent letters (e.g., "jugde") produce large priming effects, more than primes with the letters replaced in the corresponding position (e.g.,…
Descriptors: Word Recognition, Language Processing, Sampling, Coding
Hino, Yasushi; Pexman, Penny M.; Lupker, Stephen J. – Journal of Memory and Language, 2006
According to parallel distributed processing (PDP) models of visual word recognition, the speed of semantic coding is modulated by the nature of the orthographic-to-semantic mappings. Consistent with this idea, an ambiguity disadvantage and a relatedness-of-meaning (ROM) advantage have been reported in some word recognition tasks in which semantic…
Descriptors: Semantics, Language Processing, Word Recognition, Classification
Perea, Manuel; Lupker, Stephen J. – Journal of Memory and Language, 2004
Nonwords created by transposing two "adjacent" letters (i.e., transposed-letter (TL) nonwords like "jugde") are very effective at activating the lexical representation of their base words. This fact poses problems for most computational models of word recognition (e.g., the interactive-activation model and its extensions), which assume that exact…
Descriptors: Alphabets, Word Recognition, Models, Lexicology