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Guanghao You; Moritz M. Daum; Sabine Stoll – Cognitive Science, 2024
Causation is a core feature of human cognition and language. How children learn about intricate causal meanings is yet unresolved. Here, we focus on how children learn verbs that express causation. Such verbs, known as lexical causatives (e.g., break and raise), lack explicit morphosyntactic markers indicating causation, thus requiring that the…
Descriptors: Language Acquisition, Verbs, Child Language, Adults
Fourtassi, Abdellah; Bian, Yuan; Frank, Michael C. – Cognitive Science, 2020
Children tend to produce words earlier when they are connected to a variety of other words along the phonological and semantic dimensions. Though these semantic and phonological connectivity effects have been extensively documented, little is known about their underlying developmental mechanism. One possibility is that learning is driven by…
Descriptors: Child Language, Vocabulary Development, Semantics, Phonology
Jiang, Hang; Frank, Michael C.; Kulkarni, Vivek; Fourtassi, Abdellah – Cognitive Science, 2022
The linguistic input children receive across early childhood plays a crucial role in shaping their knowledge about the world. To study this input, researchers have begun applying distributional semantic models to large corpora of child-directed speech, extracting various patterns of word use/co-occurrence. Previous work using these models has not…
Descriptors: Caregivers, Caregiver Child Relationship, Linguistic Input, Semantics
Unger, Layla; Vales, Catarina; Fisher, Anna V. – Cognitive Science, 2020
The organization of our knowledge about the world into an interconnected network of concepts linked by relations profoundly impacts many facets of cognition, including attention, memory retrieval, reasoning, and learning. It is therefore crucial to understand how organized semantic representations are acquired. The present experiment investigated…
Descriptors: Semantics, Role, Schemata (Cognition), Language Processing
Rohde, Hannah; Frank, Michael C. – Cognitive Science, 2014
Although the language we encounter is typically embedded in rich discourse contexts, many existing models of processing focus largely on phenomena that occur sentence-internally. Similarly, most work on children's language learning does not consider how information can accumulate as a discourse progresses. Research in pragmatics, however,…
Descriptors: Caregiver Child Relationship, Discourse Analysis, Lexicology, Semantics
Theakston, Anna L.; Ibbotson, Paul; Freudenthal, Daniel; Lieven, Elena V. M.; Tomasello, Michael – Cognitive Science, 2015
Productivity is a central concept in the study of language and language acquisition. As a test case for exploring the notion of productivity, we focus on the noun slots of verb frames, such as __"want"__, __"see"__, and __"get"__. We develop a novel combination of measures designed to assess both the flexibility and…
Descriptors: Nouns, Verbs, Creativity, Semantics
Regier, Terry – Cognitive Science, 2005
Children improve at word learning during the 2nd year of life--sometimes dramatically. This fact has suggested a change in mechanism, from associative learning to a more referential form of learning. This article presents an associative exemplar-based model that accounts for the improvement without a change in mechanism. It provides a unified…
Descriptors: Associative Learning, Models, Semantics, Phonology