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  1. Procedural-Memory, Working-Memory, and Declarative-Memory Skills Are Each Associated With Dimensional Integration in Sound-Category Learning.Carolyn Quam, Alisa Wang, W. Todd Maddox, Kimberly Golisch & Andrew Lotto - 2018 - Frontiers in Psychology 9.
    This paper investigates relationships between procedural-memory, declarative-memory, and working-memory skills and adult native English speakers’ novel sound-category learning. Participants completed a sound-categorization task that required integrating two dimensions: one native (vowel quality), one non-native (pitch). Similar information-integration category structures in the visual and auditory domains have been shown to be best learned implicitly (e.g., Maddox, Ing, & Lauritzen, 2006). Thus, we predicted that individuals with greater procedural-memory capacity would better learn sound categories, because procedural memory appears to support implicit learning (...)
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  • Relationship between perceptual learning in speech and statistical learning in younger and older adults.Thordis M. Neger, Toni Rietveld & Esther Janse - 2014 - Frontiers in Human Neuroscience 8.
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  • Forward models and their implications for production, comprehension, and dialogue.Martin J. Pickering & Simon Garrod - 2013 - Behavioral and Brain Sciences 36 (4):377-392.
    Our target article proposed that language production and comprehension are interwoven, with speakers making predictions of their own utterances and comprehenders making predictions of other people's utterances at different linguistic levels. Here, we respond to comments about such issues as cognitive architecture and its neural basis, learning and development, monitoring, the nature of forward models, communicative intentions, and dialogue.
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  • iMinerva: A Mathematical Model of Distributional Statistical Learning.Erik D. Thiessen & Philip I. Pavlik - 2013 - Cognitive Science 37 (2):310-343.
    Statistical learning refers to the ability to identify structure in the input based on its statistical properties. For many linguistic structures, the relevant statistical features are distributional: They are related to the frequency and variability of exemplars in the input. These distributional regularities have been suggested to play a role in many different aspects of language learning, including phonetic categories, using phonemic distinctions in word learning, and discovering non-adjacent relations. On the surface, these different aspects share few commonalities. Despite this, (...)
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  • Non‐adjacent Dependencies Processing in Human and Non‐human Primates.Raphaëlle Malassis, Arnaud Rey & Joël Fagot - 2018 - Cognitive Science 42 (5):1677-1699.
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  • An integrated theory of language production and comprehension.Martin J. Pickering & Simon Garrod - 2013 - Behavioral and Brain Sciences 36 (4):329-347.
    Currently, production and comprehension are regarded as quite distinct in accounts of language processing. In rejecting this dichotomy, we instead assert that producing and understanding are interwoven, and that this interweaving is what enables people to predict themselves and each other. We start by noting that production and comprehension are forms of action and action perception. We then consider the evidence for interweaving in action, action perception, and joint action, and explain such evidence in terms of prediction. Specifically, we assume (...)
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  • Do Children Use Multi‐Word Information in Real‐Time Sentence Comprehension?Rana Abu-Zhaya, Inbal Arnon & Arielle Borovsky - 2022 - Cognitive Science 46 (3):e13111.
    Cognitive Science, Volume 46, Issue 3, March 2022.
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  • Exploring and Exploiting Uncertainty: Statistical Learning Ability Affects How We Learn to Process Language Along Multiple Dimensions of Experience.Dagmar Divjak & Petar Milin - 2020 - Cognitive Science 44 (5):e12835.
    While the effects of pattern learning on language processing are well known, the way in which pattern learning shapes exploratory behavior has long gone unnoticed. We report on the way in which individual differences in statistical pattern learning affect performance in the domain of language along multiple dimensions. Analyzing data from healthy monolingual adults' performance on a serial reaction time task and a self‐paced reading task, we show how individual differences in statistical pattern learning are reflected in readers' knowledge of (...)
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  • Impaired statistical learning of non-adjacent dependencies in adolescents with specific language impairment.Hsinjen J. Hsu, J. Bruce Tomblin & Morten H. Christiansen - 2014 - Frontiers in Psychology 5.
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  • Musicians’ Online Performance during Auditory and Visual Statistical Learning Tasks.Pragati R. Mandikal Vasuki, Mridula Sharma, Ronny K. Ibrahim & Joanne Arciuli - 2017 - Frontiers in Human Neuroscience 11.
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  • The Relationship Between Artificial and Second Language Learning.Marc Ettlinger, Kara Morgan-Short, Mandy Faretta-Stutenberg & Patrick C. M. Wong - 2016 - Cognitive Science 40 (4):822-847.
    Artificial language learning experiments have become an important tool in exploring principles of language and language learning. A persistent question in all of this work, however, is whether ALL engages the linguistic system and whether ALL studies are ecologically valid assessments of natural language ability. In the present study, we considered these questions by examining the relationship between performance in an ALL task and second language learning ability. Participants enrolled in a Spanish language class were evaluated using a number of (...)
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  • Redefining “Learning” in Statistical Learning: What Does an Online Measure Reveal About the Assimilation of Visual Regularities?Noam Siegelman, Louisa Bogaerts, Ofer Kronenfeld & Ram Frost - 2018 - Cognitive Science 42 (S3):692-727.
    From a theoretical perspective, most discussions of statistical learning have focused on the possible “statistical” properties that are the object of learning. Much less attention has been given to defining what “learning” is in the context of “statistical learning.” One major difficulty is that SL research has been monitoring participants’ performance in laboratory settings with a strikingly narrow set of tasks, where learning is typically assessed offline, through a set of two-alternative-forced-choice questions, which follow a brief visual or auditory familiarization (...)
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  • Fractal Analysis Illuminates the Form of Connectionist Structural Gradualness.Whitney Tabor, Pyeong Whan Cho & Emily Szkudlarek - 2013 - Topics in Cognitive Science 5 (3):634-667.
    We examine two connectionist networks—a fractal learning neural network (FLNN) and a Simple Recurrent Network (SRN)—that are trained to process center-embedded symbol sequences. Previous work provides evidence that connectionist networks trained on infinite-state languages tend to form fractal encodings. Most such work focuses on simple counting recursion cases (e.g., anbn), which are not comparable to the complex recursive patterns seen in natural language syntax. Here, we consider exponential state growth cases (including mirror recursion), describe a new training scheme that seems (...)
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  • The Role of Feedback in the Statistical Learning of Language‐Like Regularities.Felicity F. Frinsel, Fabio Trecca & Morten H. Christiansen - 2024 - Cognitive Science 48 (3):e13419.
    In language learning, learners engage with their environment, incorporating cues from different sources. However, in lab‐based experiments, using artificial languages, many of the cues and features that are part of real‐world language learning are stripped away. In three experiments, we investigated the role of positive, negative, and mixed feedback on the gradual learning of language‐like statistical regularities within an active guessing game paradigm. In Experiment 1, participants received deterministic feedback (100%), whereas probabilistic feedback (i.e., 75% or 50%) was introduced in (...)
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  • Prediction plays a key role in language development as well as processing.Matt A. Johnson, Nicholas B. Turk-Browne & Adele E. Goldberg - 2013 - Behavioral and Brain Sciences 36 (4):360-361.
    Although the target article emphasizes the important role of prediction in language use, prediction may well also play a key role in the initial formation of linguistic representations, that is, in language development. We outline the role of prediction in three relevant language-learning domains: transitional probabilities, statistical preemption, and construction learning.
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  • Second Language Experience Facilitates Statistical Learning of Novel Linguistic Materials.Christine E. Potter, Tianlin Wang & Jenny R. Saffran - 2017 - Cognitive Science 41 (S4):913-927.
    Recent research has begun to explore individual differences in statistical learning, and how those differences may be related to other cognitive abilities, particularly their effects on language learning. In this research, we explored a different type of relationship between language learning and statistical learning: the possibility that learning a new language may also influence statistical learning by changing the regularities to which learners are sensitive. We tested two groups of participants, Mandarin Learners and Naïve Controls, at two time points, 6 (...)
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  • When 'more'in statistical learning means 'less' in language: individual differences in predictive processing of adjacent dependencies.Jennifer B. Misyak & Morten H. Christiansen - 2010 - In S. Ohlsson & R. Catrambone (eds.), Proceedings of the 32nd Annual Conference of the Cognitive Science Society. Cognitive Science Society. pp. 2686--2691.
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  • Attentional effects on rule extraction and consolidation from speech.Diana López-Barroso, David Cucurell, Antoni Rodríguez-Fornells & Ruth de Diego-Balaguer - 2016 - Cognition 152:61-69.
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  • The Value of Statistical Learning to Cognitive Network Science.Elisabeth A. Karuza - 2022 - Topics in Cognitive Science 14 (1):78-92.
    Topics in Cognitive Science, Volume 14, Issue 1, Page 78-92, January 2022.
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  • Implicit Statistical Learning: A Tale of Two Literatures.Morten H. Christiansen - 2019 - Topics in Cognitive Science 11 (3):468-481.
    In this review article, Christiansen provides a historical perspective on the two research traditions, implicit learning and statistical learning, thus nicely setting the scene for this special issue of Topics in Cognitive Science. In this “tale of two literatures”, he first traces the history of both literatures before sketching a framework that provides a basis for understanding implicit learning and statistical learning as a unified phenomenon.
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  • All Together Now: Concurrent Learning of Multiple Structures in an Artificial Language.Alexa R. Romberg & Jenny R. Saffran - 2013 - Cognitive Science 37 (7):1290-1320.
    Natural languages contain many layers of sequential structure, from the distribution of phonemes within words to the distribution of phrases within utterances. However, most research modeling language acquisition using artificial languages has focused on only one type of distributional structure at a time. In two experiments, we investigated adult learning of an artificial language that contains dependencies between both adjacent and non-adjacent words. We found that learners rapidly acquired both types of regularities and that the strength of the adjacent statistics (...)
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  • Where are the cookies? Two- and three-year-olds use number-marked verbs to anticipate upcoming nouns.Cynthia Lukyanenko & Cynthia Fisher - 2016 - Cognition 146 (C):349-370.
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  • On Empirical Methodology, Constraints, and Hierarchy in Artificial Grammar Learning.Willem J. M. Levelt - 2020 - Topics in Cognitive Science 12 (3):942-956.
    Levelt, reviewing the AGL field from a psycholinguistic perspective, identifies various gaps and makes a number of concrete suggestions for improving several currently used experimental designs. He raises the question whether artificial (and natural) grammar learning is about detecting ‘rules’, as is commonly assumed, or rather the detection of a set of ‘constraints’. He cautions the community to not ignore ‘semantics’, and recommends to consider less artificial tasks, that may be needed for learning more complex rules by human or nonhuman (...)
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  • Cross-Domain Statistical–Sequential Dependencies Are Difficult to Learn.Anne M. Walk & Christopher M. Conway - 2016 - Frontiers in Psychology 7.
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