Results for 'Statistical language learning'

971 found
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  1.  27
    Does bilingual experience influence statistical language learning?Jose A. Aguasvivas, Jesús Cespón & Manuel Carreiras - 2024 - Cognition 242 (C):105639.
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  2. Input Complexity Affects Long-Term Retention of Statistically Learned Regularities in an Artificial Language Learning Task.Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short & Morten H. Christiansen - 2019 - Frontiers in Human Neuroscience 13:478698.
    Statistical learning (SL) involving sensitivity to distributional regularities in the environment has been suggested to be an important factor in many aspects of cognition, including language. However, the degree to which statistically-learned information is retained over time is not well understood. To establish whether or not learners are able to preserve such regularities over time, we examined performance on an artificial second language learning task both immediately after training and also at a follow-up session 2 (...)
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  3.  41
    What Mechanisms Underlie Implicit Statistical Learning? Transitional Probabilities Versus Chunks in Language Learning.Pierre Perruchet - 2019 - Topics in Cognitive Science 11 (3):520-535.
    In 2006, Perruchet and Pacton (2006) asked whether implicit learning and statistical learning represent two approaches to the same phenomenon. This article represents an important follow‐up to their seminal review article. As in the previous paper, the focus is on the formation of elementary cognitive units. Both approaches favor different explanations on what these units consist of and how they are formed. Perruchet weighs up the evidence for different explanations and concludes with a helpful agenda for future (...)
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  4.  3
    Language Learning in Infancy: Does the Empirical Evidence Support a Domain Specific Language Acquisition Device?Christina Behme & S. Hélène Deacon - 2008 - Philosophical Psychology 21 (5):641-671.
    Poverty of the Stimulus Arguments have convinced many linguists and philosophers of language that a domain specific language acquisition device (LAD) is necessary to account for language learning. Here we review empirical evidence that casts doubt on the necessity of this domain specific device. We suggest that more attention needs to be paid to the early stages of language acquisition. Many seemingly innate language-related abilities have to be learned over the course of several months. (...)
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  5.  48
    Idiomatic Syntactic Constructions and Language Learning.Michael P. Kaschak & Jenny R. Saffran - 2006 - Cognitive Science 30 (1):43-63.
    This article explores the influence of idiomatic syntactic constructions (i.e., constructions whose phrase structure rules violate the rules that underlie the construction of other kinds of sentences in the language) on the acquisition of phrase structure. In Experiment 1, participants were trained on an artificial language generated from hierarchical phrase structure rules. Some participants were given exposure to an idiomatic construction (IC) during training, whereas others were not. Under some circumstances, the presence of an idiomatic construction in the (...)
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  6. Exclusion Constraints Facilitate Statistical Word Learning.Katherine Yoshida, Mijke Rhemtulla & Athena Vouloumanos - 2012 - Cognitive Science 36 (5):933-947.
    The roles of linguistic, cognitive, and social-pragmatic processes in word learning are well established. If statistical mechanisms also contribute to word learning, they must interact with these processes; however, there exists little evidence for such mechanistic synergy. Adults use co-occurrence statistics to encode speech–object pairings with detailed sensitivity in stochastic learning environments (Vouloumanos, 2008). Here, we replicate this statistical work with nonspeech sounds and compare the results with the previous speech studies to examine whether exclusion (...)
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  7.  57
    Tracking Multiple Statistics: Simultaneous Learning of Object Names and Categories in English and Mandarin Speakers.Chi-Hsin Chen, Lisa Gershkoff-Stowe, Chih-Yi Wu, Hintat Cheung & Chen Yu - 2017 - Cognitive Science 41 (6):1485-1509.
    Two experiments were conducted to examine adult learners' ability to extract multiple statistics in simultaneously presented visual and auditory input. Experiment 1 used a cross‐situational learning paradigm to test whether English speakers were able to use co‐occurrences to learn word‐to‐object mappings and concurrently form object categories based on the commonalities across training stimuli. Experiment 2 replicated the first experiment and further examined whether speakers of Mandarin, a language in which final syllables of object names are more predictive of (...)
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  8.  48
    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 (...)
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  9.  98
    Large Language Models Demonstrate the Potential of Statistical Learning in Language.Pablo Contreras Kallens, Ross Deans Kristensen-McLachlan & Morten H. Christiansen - 2023 - Cognitive Science 47 (3):e13256.
    To what degree can language be acquired from linguistic input alone? This question has vexed scholars for millennia and is still a major focus of debate in the cognitive science of language. The complexity of human language has hampered progress because studies of language–especially those involving computational modeling–have only been able to deal with small fragments of our linguistic skills. We suggest that the most recent generation of Large Language Models (LLMs) might finally provide the (...)
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  10.  28
    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 (...)
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  11.  54
    The metamorphosis of the statistical segmentation output: Lexicalization during artificial language learning.Tânia Fernandes, Régine Kolinsky & Paulo Ventura - 2009 - Cognition 112 (3):349-366.
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  12.  25
    Cognitive Development as a Piece of the Language Learning Puzzle.Eleonore H. M. Smalle & Riikka Möttönen - 2023 - Cognitive Science 47 (5):e13296.
    Why do children learn language more easily than adults do? This puzzle has fascinated cognitive and language scientists for decades. In the present letter, we approach the language learning puzzle from a cognitive perspective that is inspired by evidence from the perceptual and motor learning literature. Neuroscientific studies show that two memory systems in the brain are involved in human learning: an early implicit procedural memory system and a late-developing cognitive or declarative memory system. (...)
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  13.  45
    Learn the source and target languages: (a) Learn a grammar GA for the source language (A). (b) Estimate a structural statistical language model SSLMA for (A). Given a grammar (consisting of..). [REVIEW]Shimon Edelman - unknown
    (a) Learn a grammar GA for the source language (A). (b) Estimate a structural statistical language model SSLMA for (A). Given a grammar (consisting of terminals and nonterminals) and a partial sentence (sequence of terminals (t1 . . . ti)), an SSLM assigns probabilities to the possible choices of the next terminal ti+1.
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  14.  43
    Statistical Learning Is Not Age‐Invariant During Childhood: Performance Improves With Age Across Modality.Amir Shufaniya & Inbal Arnon - 2018 - Cognitive Science 42 (8):3100-3115.
    Humans are capable of extracting recurring patterns from their environment via statistical learning (SL), an ability thought to play an important role in language learning and learning more generally. While much work has examined statistical learning in infants and adults, less work has looked at the developmental trajectory of SL during childhood to see whether it is fully developed in infancy or improves with age, like many other cognitive abilities. A recent study showed (...)
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  15.  38
    Statistical models of syntax learning and use.Mark Johnson & Stefan Riezler - 2002 - Cognitive Science 26 (3):239-253.
    This paper shows how to define probability distributions over linguistically realistic syntactic structures in a way that permits us to define language learning and language comprehension as statistical problems. We demonstrate our approach using lexical‐functional grammar (LFG), but our approach generalizes to virtually any linguistic theory. Our probabilistic models are maximum entropy models. In this paper we concentrate on statistical inference procedures for learning the parameters that define these probability distributions. We point out some (...)
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  16.  34
    Statistical Learning, Implicit Learning, and First Language Acquisition: A Critical Evaluation of Two Developmental Predictions.Inbal Arnon - 2019 - Topics in Cognitive Science 11 (3):504-519.
    In this article, Arnon explores the link between implicit learning, statistical learning and language development. She focuses on two central themes, namely the issue of age invariance and the question of variation in learning outcomes. Arnon suggests that the two literatures are studying a fundamentally similar phenomenon and argues in favor of a closer alignment. However, she also raises important methodological concerns.
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  17.  35
    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 (...)
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  18.  29
    Statistical Learning of Language: A Meta‐Analysis Into 25 Years of Research.Erin S. Isbilen & Morten H. Christiansen - 2022 - Cognitive Science 46 (9):e13198.
    Cognitive Science, Volume 46, Issue 9, September 2022.
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  19.  73
    Retrieval Dynamics and Retention in Cross‐Situational Statistical Word Learning.Haley A. Vlach & Catherine M. Sandhofer - 2014 - Cognitive Science 38 (4):757-774.
    Previous research on cross-situational word learning has demonstrated that learners are able to reduce ambiguity in mapping words to referents by tracking co-occurrence probabilities across learning events. In the current experiments, we examined whether learners are able to retain mappings over time. The results revealed that learners are able to retain mappings for up to 1 week later. However, there were interactions between the amount of retention and the different learning conditions. Interestingly, the strongest retention was associated (...)
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  20.  50
    From Exemplar to Grammar: A Probabilistic Analogy‐Based Model of Language Learning.Rens Bod - 2009 - Cognitive Science 33 (5):752-793.
    While rules and exemplars are usually viewed as opposites, this paper argues that they form end points of the same distribution. By representing both rules and exemplars as (partial) trees, we can take into account the fluid middle ground between the two extremes. This insight is the starting point for a new theory of language learning that is based on the following idea: If a language learner does not know which phrase‐structure trees should be assigned to initial (...)
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  21.  34
    Implicit Statistical Learning in Language Processing: Word Predictability is the Key.David B. Pisoni Christopher M. Conway, Althea Baurnschmidt, Sean Huang - 2010 - Cognition 114 (3):356.
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  22.  44
    Learning Harmony: The Role of Serial Statistics.Erin McMullen Jonaitis & Jenny R. Saffran - 2009 - Cognitive Science 33 (5):951-968.
    How do listeners learn about the statistical regularities underlying musical harmony? In traditional Western music, certain chords predict the occurrence of other chords: Given a particular chord, not all chords are equally likely to follow. In Experiments 1 and 2, we investigated whether adults make use of statistical information when learning new musical structures. Listeners were exposed to a novel musical system containing phrases generated using an artificial grammar. This new system contained statistical structure quite different (...)
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  23.  51
    Acquiring Complex Communicative Systems: Statistical Learning of Language and Emotion.Ashley L. Ruba, Seth D. Pollak & Jenny R. Saffran - 2022 - Topics in Cognitive Science 14 (3):432-450.
    In this article, we consider infants’ acquisition of foundational aspects of language and emotion through the lens of statistical learning. By taking a comparative developmental approach, we highlight ways in which the learning problems presented by input from these two rich communicative domains are both similar and different. Our goal is to encourage other scholars to consider multiple domains of human experience when developing theories in developmental cognitive science.
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  24.  81
    Implicit statistical learning in language processing: Word predictability is the key☆.Christopher M. Conway, Althea Bauernschmidt, Sean S. Huang & David B. Pisoni - 2010 - Cognition 114 (3):356-371.
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  25. (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. (...)
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  26.  19
    Statistically Induced Chunking Recall: A Memory‐Based Approach to Statistical Learning.Erin S. Isbilen, Stewart M. McCauley, Evan Kidd & Morten H. Christiansen - 2020 - Cognitive Science 44 (7):e12848.
    The computations involved in statistical learning have long been debated. Here, we build on work suggesting that a basic memory process, chunking, may account for the processing of statistical regularities into larger units. Drawing on methods from the memory literature, we developed a novel paradigm to test statistical learning by leveraging a robust phenomenon observed in serial recall tasks: that short‐term memory is fundamentally shaped by long‐term distributional learning. In the statistically induced chunking recall (...)
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  27.  54
    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.
  28.  15
    An Emotional Analysis Method for the Analysis of Cognitive and Psychological Factors in the Change of Second Language Learning Model of Chinese Mainland Students in the Post-epidemic Era.Gang Xie & Xiaona Wang - 2022 - Frontiers in Psychology 13.
    Since the sudden outbreak of the coronavirus disease 2019 epidemic in 2020, the second language learning patterns of students in mainland China have encountered new challenges that have had a psychological impact on mainland Chinese students. The epidemic has not only inconvenienced students’ normal second language learning but also greatly affected the second language learning patterns of mainland Chinese students. In the post-epidemic era, more and more students are becoming accustomed to studying and (...) a second language online. The level of informatization of second language learning patterns of students in mainland China has increased significantly. This study first analyses the mechanisms of change in second language learning patterns and further analyses the influence of knowledge background on the perception of second language learning patterns on this basis. To design the influencing factors of second language learning patterns, a questionnaire was used to investigate the influence of knowledge background on the perception of second language learning patterns. The survey was conducted on students who were learning a second language in mainland China. Then, the survey data were statistically analyzed. In analyzing the influence of effect on second language learning behaviors of students in mainland China, observed variables were designed, including observed variables of affective factors and learning behaviors. After that, the findings of the experiment were summarized based on the results of the questionnaire survey, and the positive influence of emotional factors on second language learning behaviors of mainland Chinese students in the post-development era was concluded. (shrink)
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  29.  9
    Model and Simulation of Maximum Entropy Phrase Reordering of English Text in Language Learning Machine.Weifang Wu - 2020 - Complexity 2020:1-9.
    This paper proposes a feature extraction algorithm based on the maximum entropy phrase reordering model in statistical machine translation in language learning machines. The algorithm can extract more accurate phrase reordering information, especially the feature information of reversed phrases, which solves the problem of imbalance of feature data during maximum entropy training in the original algorithm, and improves the accuracy of phrase reordering in translation. In the experiment, they were combined with linguistic features such as parts of (...)
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  30.  87
    Statistical Learning Is Related to Reading Ability in Children and Adults.Joanne Arciuli & Ian C. Simpson - 2012 - Cognitive Science 36 (2):286-304.
    There is little empirical evidence showing a direct link between a capacity for statistical learning (SL) and proficiency with natural language. Moreover, discussion of the role of SL in language acquisition has seldom focused on literacy development. Our study addressed these issues by investigating the relationship between SL and reading ability in typically developing children and healthy adults. We tested SL using visually presented stimuli within a triplet learning paradigm and examined reading ability by administering (...)
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  31.  48
    Statistical learning of a tonal language: the influence of bilingualism and previous linguistic experience.Tianlin Wang & Jenny R. Saffran - 2014 - Frontiers in Psychology 5.
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  32.  43
    Individual Differences in Learning Abilities Impact Structure Addition: Better Learners Create More Structured Languages.Tamar Johnson, Noam Siegelman & Inbal Arnon - 2020 - Cognitive Science 44 (8):e12877.
    Over the last decade, iterated learning studies have provided compelling evidence for the claim that linguistic structure can emerge from non‐structured input, through the process of transmission. However, it is unclear whether individuals differ in their tendency to add structure, an issue with implications for understanding who are the agents of change. Here, we identify and test two contrasting predictions: The first sees learning as a pre‐requisite for structure addition, and predicts a positive correlation between learning accuracy (...)
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  33.  21
    Virtual Reality-Integrated Immersion-Based Teaching to English Language Learning Outcome.Yu Xie, Yang Liu, Fengrui Zhang & Ping Zhou - 2022 - Frontiers in Psychology 12.
    Globalization and informatization are reshaping human life and social behaviors. The purpose is to explore the worldwide strategies to cultivate international talents with a global vision. As a global language with the largest population, English, and especially its learning effect, have always been the major concerns of scholars and educators. This work innovatively studies the combination of immersion-based English teaching with virtual reality technology. Then, based on the experimental design mode, 106 students from a Chinese school were selected (...)
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  34.  99
    Language Evolution by Iterated Learning With Bayesian Agents.Thomas L. Griffiths & Michael L. Kalish - 2007 - Cognitive Science 31 (3):441-480.
    Languages are transmitted from person to person and generation to generation via a process of iterated learning: people learn a language from other people who once learned that language themselves. We analyze the consequences of iterated learning for learning algorithms based on the principles of Bayesian inference, assuming that learners compute a posterior distribution over languages by combining a prior (representing their inductive biases) with the evidence provided by linguistic data. We show that when learners (...)
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  35. Extending statistical learning farther and further: Long-distance dependencies, and individual differences in statistical learning and language.Jennifer B. Misyak & Morten H. Christiansen - 2007 - In McNamara D. S. & Trafton J. G., Proceedings of the 29th Annual Cognitive Science Society. Cognitive Science Society. pp. 1307--1312.
  36.  69
    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 (...)
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  37.  31
    Do Infants Learn Words From Statistics? Evidence From English‐Learning Infants Hearing Italian.Amber Shoaib, Tianlin Wang, Jessica F. Hay & Jill Lany - 2018 - Cognitive Science 42 (8):3083-3099.
    Infants are sensitive to statistical regularities (i.e., transitional probabilities, or TPs) relevant to segmenting words in fluent speech. However, there is debate about whether tracking TPs results in representations of possible words. Infants show preferential learning of sequences with high TPs (HTPs) as object labels relative to those with low TPs (LTPs). Such findings could mean that only the HTP sequences have a word‐like status, and they are more readily mapped to a referent for that reason. But these (...)
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  38.  23
    Visual Statistical Learning With Stimuli Presented Sequentially Across Space and Time in Deaf and Hearing Adults.Beatrice Giustolisi & Karen Emmorey - 2018 - Cognitive Science 42 (8):3177-3190.
    This study investigated visual statistical learning (VSL) in 24 deaf signers and 24 hearing non‐signers. Previous research with hearing individuals suggests that SL mechanisms support literacy. Our first goal was to assess whether VSL was associated with reading ability in deaf individuals, and whether this relation was sustained by a link between VSL and sign language skill. Our second goal was to test the Auditory Scaffolding Hypothesis, which makes the prediction that deaf people should be impaired in (...)
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  39.  36
    Technology-Assisted Self-Regulated English Language Learning: Associations With English Language Self-Efficacy, English Enjoyment, and Learning Outcomes.Zhujun An, Chuang Wang, Siying Li, Zhengdong Gan & Hong Li - 2021 - Frontiers in Psychology 11.
    This study investigated Chinese university students’ technology-assisted self-regulated learning strategies and whether the technology-based SRL strategies mediated the associations between English language self-efficacy, English enjoyment, and learning outcomes. Data were collected from 525 undergraduate students in mainland China through three self-report questionnaires and the performance on an English language proficiency test. While students reported an overall moderate level of SRL strategies, they reported a high level of technology-based vocabulary learning strategies. A statistically significant positive relationship (...)
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  40.  49
    What Children with Developmental Language Disorder Teach Us About Cross‐Situational Word Learning.Karla K. McGregor, Erin Smolak, Michelle Jones, Jacob Oleson, Nichole Eden, Timothy Arbisi-Kelm & Ronald Pomper - 2022 - Cognitive Science 46 (2):e13094.
    Children with developmental language disorder (DLD) served as a test case for determining the role of extant vocabulary knowledge, endogenous attention, and phonological working memory abilities in cross-situational word learning. First-graders (Mage = 7 years; 3 months), 44 with typical development (TD) and 28 with DLD, completed a cross-situational word-learning task comprised six cycles, followed by retention tests and independent assessments of attention, memory, and vocabulary. Children with DLD scored lower than those with TD on all measures (...)
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  41.  9
    Learning the Meanings of Function Words From Grounded Language Using a Visual Question Answering Model.Eva Portelance, Michael C. Frank & Dan Jurafsky - 2024 - Cognitive Science 48 (5):e13448.
    Interpreting a seemingly simple function word like “or,” “behind,” or “more” can require logical, numerical, and relational reasoning. How are such words learned by children? Prior acquisition theories have often relied on positing a foundation of innate knowledge. Yet recent neural‐network‐based visual question answering models apparently can learn to use function words as part of answering questions about complex visual scenes. In this paper, we study what these models learn about function words, in the hope of better understanding how the (...)
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  42. Statistical learning in infant language development.Rebecca Gómez - 2009 - In Gareth Gaskell, Oxford Handbook of Psycholinguistics. Oxford University Press.
     
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  43.  17
    How Statistical Learning Can Play Well with Universal Grammar.Lisa S. Pearl - 2021 - In Nicholas Allott, Terje Lohndal & Georges Rey, A Companion to Chomsky. Wiley. pp. 267–286.
    A key motivation for Universal Grammar (UG) is developmental: UG can help children acquire the linguistic knowledge that they do as quickly as they do from the data that's available to them. Some of the most fruitful recent work in language acquisition has combined ideas about different hypothesis space building blocks with domain‐general statistical learning. Statistical learning can then provide a way to help navigate the hypothesis space in order to converge on the correct hypothesis. (...)
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  44.  34
    Editors’ Introduction: Aligning Implicit Learning and Statistical Learning: Two Approaches, One Phenomenon.Patrick Rebuschat & Padraic Monaghan - 2019 - Topics in Cognitive Science 11 (3):459-467.
    In their editors’ introduction, Rebuschat and Monaghan provide the background to the special issue. They outline the rationale for bringing together, in a single volume, leading researchers from two distinct, yet related research strands, implicit learning and statistical learning. The editors then introduce the new contributions solicited for this special issue and provide their perspective on the agenda setting that results from combining these two approaches.
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  45.  28
    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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  46.  21
    Modeling the Influence of Language Input Statistics on Children's Speech Production.Ingeborg Roete, Stefan L. Frank, Paula Fikkert & Marisa Casillas - 2020 - Cognitive Science 44 (12):e12924.
    We trained a computational model (the Chunk-Based Learner; CBL) on a longitudinal corpus of child–caregiver interactions in English to test whether one proposed statistical learning mechanism—backward transitional probability—is able to predict children's speech productions with stable accuracy throughout the first few years of development. We predicted that the model less accurately reconstructs children's speech productions as they grow older because children gradually begin to generate speech using abstracted forms rather than specific “chunks” from their speech environment. To test (...)
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  47.  47
    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 (...)
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  48.  37
    Classroom Concordancing and Second Language Motivational Self-System: A Data-Driven Learning Approach.Javad Zare & Sedigheh Karimpour - 2022 - Frontiers in Psychology 13.
    Research shows that exploring language corpora through data-driven learning plays a significant role in language learning. Nevertheless, it is not clear if using concordancing as an application of DDL affects the learners’ second language motivation. To address this gap, the current study adopted a triangulation design, validating quantitative data model, and a quasi-experimental design. Ninety English-major university students with an intermediate level of English language proficiency, divided into control and experimental groups, took part in (...)
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  49.  54
    Effects of Visual Information on Adults' and Infants' Auditory Statistical Learning.Erik D. Thiessen - 2010 - Cognitive Science 34 (6):1093-1106.
    Infant and adult learners are able to identify word boundaries in fluent speech using statistical information. Similarly, learners are able to use statistical information to identify word–object associations. Successful language learning requires both feats. In this series of experiments, we presented adults and infants with audio–visual input from which it was possible to identify both word boundaries and word–object relations. Adult learners were able to identify both kinds of statistical relations from the same input. Moreover, (...)
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    Learning Words While Listening to Syllables: Electrophysiological Correlates of Statistical Learning in Children and Adults.Ana Paula Soares, Francisco-Javier Gutiérrez-Domínguez, Alexandrina Lages, Helena M. Oliveira, Margarida Vasconcelos & Luis Jiménez - 2022 - Frontiers in Human Neuroscience 16.
    From an early age, exposure to a spoken language has allowed us to implicitly capture the structure underlying the succession of speech sounds in that language and to segment it into meaningful units. Statistical learning, the ability to pick up patterns in the sensory environment without intention or reinforcement, is thus assumed to play a central role in the acquisition of the rule-governed aspects of language, including the discovery of word boundaries in the continuous acoustic (...)
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