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  1. Empiricism, syntax, and ontogeny.Gabe Dupre - 2021 - Philosophical Psychology 34 (7):1011-1046.
    Generative grammarians typically advocate for a rationalist understanding of language acquisition, according to which the structure of a developed language faculty reflects innate guidance rather than environmental influence. This proposal is developed in developmental linguistics by triggering models of language acquisition. Opposing this tradition, various theorists have advocated for empiricist views of language acquisition, according to which the structure of a developed linguistic competence reflects the linguistic environment in which this competence developed. On this picture, linguistic development is accounted for (...)
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  • The bottleneck may be the solution, not the problem.Arnon Lotem, Oren Kolodny, Joseph Y. Halpern, Luca Onnis & Shimon Edelman - 2016 - Behavioral and Brain Sciences 39:e83.
    As a highly consequential biological trait, a memory “bottleneck” cannot escape selection pressures. It must therefore co-evolve with other cognitive mechanisms rather than act as an independent constraint. Recent theory and an implemented model of language acquisition suggest that a limit on working memory may evolve to help learning. Furthermore, it need not hamper the use of language for communication.
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  • Statistical learning is constrained to less abstract patterns in complex sensory input.Lauren L. Emberson & Dani Y. Rubinstein - 2016 - Cognition 153 (C):63-78.
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  • It takes two to talk: A second-person neuroscience approach to language learning.Supriya Syal & Adam K. Anderson - 2013 - Behavioral and Brain Sciences 36 (4):439-440.
    Language is a social act. We have previously argued that language remains embedded in sociality because the motivation to communicate exists only within a social context. Schilbach et al. underscore the importance of studying linguistic behavior from within the motivated, socially interactive frame in which it is learnt and used, as well as provide testable hypotheses for a participatory, second-person neuroscience approach to language learning.
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  • Competitive Processes in Cross‐Situational Word Learning.Daniel Yurovsky, Chen Yu & Linda B. Smith - 2013 - Cognitive Science 37 (5):891-921.
    Cross-situational word learning, like any statistical learning problem, involves tracking the regularities in the environment. However, the information that learners pick up from these regularities is dependent on their learning mechanism. This article investigates the role of one type of mechanism in statistical word learning: competition. Competitive mechanisms would allow learners to find the signal in noisy input and would help to explain the speed with which learners succeed in statistical learning tasks. Because cross-situational word learning provides information at multiple (...)
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  • Is statistical learning constrained by lower level perceptual organization?Lauren L. Emberson, Ran Liu & Jason D. Zevin - 2013 - Cognition 128 (1):82-102.
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  • Children’s Production of Unfamiliar Word Sequences Is Predicted by Positional Variability and Latent Classes in a Large Sample of Child-Directed Speech.Danielle Matthews & Colin Bannard - 2010 - Cognitive Science 34 (3):465-488.
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  • Detecting structured repetition in child-surrounding speech: Evidence from maximally diverse languages.Nicholas A. Lester, Steven Moran, Aylin C. Küntay, Shanley E. M. Allen, Barbara Pfeiler & Sabine Stoll - 2022 - Cognition 221 (C):104986.
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  • Grammatical Constructions as Relational Categories.Micah B. Goldwater - 2017 - Topics in Cognitive Science 9 (3):776-799.
    This paper argues that grammatical constructions, specifically argument structure constructions that determine the “who did what to whom” part of sentence meaning and how this meaning is expressed syntactically, can be considered a kind of relational category. That is, grammatical constructions are represented as the abstraction of the syntactic and semantic relations of the exemplar utterances that are expressed in that construction, and it enables the generation of novel exemplars. To support this argument, I review evidence that there are parallel (...)
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  • Juvenile zebra finches learn the underlying structural regularities of their fathers’ song.Otília Menyhart, Oren Kolodny, Michael H. Goldstein, Timothy J. DeVoogd & Shimon Edelman - 2015 - Frontiers in Psychology 6.
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  • The neglected universals: Learnability constraints and discourse cues.Heidi Waterfall & Shimon Edelman - 2009 - Behavioral and Brain Sciences 32 (5):471-472.
    Converging findings from English, Mandarin, and other languages suggest that observed “universals” may be algorithmic. First, computational principles behind recently developed algorithms that acquire productive constructions from raw texts or transcribed child-directed speech impose family resemblance on learnable languages. Second, child-directed speech is particularly rich in statistical (and social) cues that facilitate learning of certain types of structures.
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  • The myth of language universals: Language diversity and its importance for cognitive science.Nicholas Evans & Stephen C. Levinson - 2009 - Behavioral and Brain Sciences 32 (5):429-448.
    Talk of linguistic universals has given cognitive scientists the impression that languages are all built to a common pattern. In fact, there are vanishingly few universals of language in the direct sense that all languages exhibit them. Instead, diversity can be found at almost every level of linguistic organization. This fundamentally changes the object of enquiry from a cognitive science perspective. This target article summarizes decades of cross-linguistic work by typologists and descriptive linguists, showing just how few and unprofound the (...)
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  • (1 other version)Learning a Generative Probabilistic Grammar of Experience: A Process‐Level Model of Language Acquisition.Oren Kolodny, Arnon Lotem & Shimon Edelman - 2015 - Cognitive Science 39 (2):227-267.
    We introduce a set of biologically and computationally motivated design choices for modeling the learning of language, or of other types of sequential, hierarchically structured experience and behavior, and describe an implemented system that conforms to these choices and is capable of unsupervised learning from raw natural‐language corpora. Given a stream of linguistic input, our model incrementally learns a grammar that captures its statistical patterns, which can then be used to parse or generate new data. The grammar constructed in this (...)
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  • (1 other version)Learning a Generative Probabilistic Grammar of Experience: A Process‐Level Model of Language Acquisition.Oren Kolodny, Arnon Lotem & Shimon Edelman - 2014 - Cognitive Science 38 (4):227-267.
    We introduce a set of biologically and computationally motivated design choices for modeling the learning of language, or of other types of sequential, hierarchically structured experience and behavior, and describe an implemented system that conforms to these choices and is capable of unsupervised learning from raw natural-language corpora. Given a stream of linguistic input, our model incrementally learns a grammar that captures its statistical patterns, which can then be used to parse or generate new data. The grammar constructed in this (...)
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  • Predicted errors in children’s early sentence comprehension.Yael Gertner & Cynthia Fisher - 2012 - Cognition 124 (1):85-94.
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  • With diversity in mind: Freeing the language sciences from Universal Grammar.Nicholas Evans & Stephen C. Levinson - 2009 - Behavioral and Brain Sciences 32 (5):472-492.
    Our response takes advantage of the wide-ranging commentary to clarify some aspects of our original proposal and augment others. We argue against the generative critics of our coevolutionary program for the language sciences, defend the use of close-to-surface models as minimizing cross-linguistic data distortion, and stress the growing role of stochastic simulations in making generalized historical accounts testable. These methods lead the search for general principles away from idealized representations and towards selective processes. Putting cultural evolution central in understanding language (...)
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  • On look-ahead in language: navigating a multitude of familiar paths.Shimon Edelman - unknown
    Language is a rewarding field if you are in the prediction business. A reader who is fluent in English and who knows how academic papers are typically structured will readily come up with several possible guesses as to where the title of this section could have gone, had it not been cut short by the ellipsis. Indeed, in the more natural setting of spoken language, anticipatory processing is a must: performance of machine systems for speech interpretation depends critically on the (...)
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  • When the “Tabula” is Anything but “Rasa:” What Determines Performance in the Auditory Statistical Learning Task?Amit Elazar, Raquel G. Alhama, Louisa Bogaerts, Noam Siegelman, Cristina Baus & Ram Frost - 2022 - Cognitive Science 46 (2):e13102.
    Cognitive Science, Volume 46, Issue 2, February 2022.
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  • Statistical learning and memory.Ansgar D. Endress, Lauren K. Slone & Scott P. Johnson - 2020 - Cognition 204 (C):104346.
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  • Caregiver linguistic alignment to autistic and typically developing children: A natural language processing approach illuminates the interactive components of language development.Riccardo Fusaroli, Ethan Weed, Roberta Rocca, Deborah Fein & Letitia Naigles - 2023 - Cognition 236 (C):105422.
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