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Oliveira, Cátia M.; Henderson, Lisa M.; Hayiou-Thomas, Marianna E. – Cognitive Science, 2023
The ability to extract patterns from sensory input across time and space is thought to underlie the development and acquisition of language and literacy skills, particularly the subdomains marked by the learning of probabilistic knowledge. Thus, impairments in procedural learning are hypothesized to underlie neurodevelopmental disorders, such as…
Descriptors: Linguistic Input, Task Analysis, Reaction Time, Language Impairments
Malassis, Raphaëlle; Rey, Arnaud; Fagot, Joël – Cognitive Science, 2018
Human and non-human primates share the ability to extract adjacent dependencies and, under certain conditions, non-adjacent dependencies (i.e., predictive relationships between elements that are separated by one or several intervening elements in a sequence). In this study, we explore the online extraction dynamics of non-adjacent dependencies in…
Descriptors: Primatology, Reaction Time, Correlation, Experiments
Herdagdelen, Amaç; Marelli, Marco – Cognitive Science, 2017
Corpus-based word frequencies are one of the most important predictors in language processing tasks. Frequencies based on conversational corpora (such as movie subtitles) are shown to better capture the variance in lexical decision tasks compared to traditional corpora. In this study, we show that frequencies computed from social media are…
Descriptors: Social Media, Language Processing, Word Recognition, Word Frequency