2011
DOI: 10.3758/s13428-011-0125-5
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Toward a scalable holographic word-form representation

Abstract: Phenomena in a variety of verbal tasks-for example, masked priming, lexical decision, and word naming-are typically explained in terms of similarity between word-forms. Despite the apparent commonalities between these sets of phenomena, the representations and similarity measures used to account for them are not often related. To show how this gap might be bridged, we build on the work of Hannagan, Dupoux, and Christophe, Cognitive Science 35:79-118, (2011) to explore several methods of representing visual wor… Show more

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Cited by 37 publications
(44 citation statements)
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“…While all but one of these word-form encoding methods were found unable to account for the entirety of the empirical constraints, [3] introduced a word-form encoding that satisfied the desiderata. Our solution, called "terminal-relative" (TR) encoding, is related somewhat to the simplified word recognition model of [1] and to the SERIOL model [16].…”
Section: A Holographic Encoding For Word-formmentioning
confidence: 99%
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“…While all but one of these word-form encoding methods were found unable to account for the entirety of the empirical constraints, [3] introduced a word-form encoding that satisfied the desiderata. Our solution, called "terminal-relative" (TR) encoding, is related somewhat to the simplified word recognition model of [1] and to the SERIOL model [16].…”
Section: A Holographic Encoding For Word-formmentioning
confidence: 99%
“…Empirical studies of word recognition (see, for a review, [9,7]) show that humans are indeed sensitive to structure on both those levels, and that such sensitivity is required to account for human word recognition capabilities. In addition, TR encoding is capable not just of capturing the relative similarity between isolated pairs of words, but scales to account for orthographic similarity effects within the entire lexicon, as evidenced in lexical decision and speeded pronunciation tasks [3]. In general, TR encoding is a good balance between simplicity (it is parameter free), veracity (it accounts for many word recognition effects), and scalability (orthographic similarity effects across the entire lexicon).…”
Section: A Holographic Encoding For Word-formmentioning
confidence: 99%
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