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  1. Speech segmentation by statistical learning depends on attention.Juan M. Toro, Scott Sinnett & Salvador Soto-Faraco - 2005 - Cognition 97 (2):B25-B34.
  • Speech segmentation by statistical learning depends on attention.Juan M. Toro, Scott Sinnett & Salvador Soto-Faraco - 2005 - Cognition 97 (2):B25-B34.
  • First steps toward a usage-based theory of language acquisition.Michael Tomasello - 2001 - Cognitive Linguistics 11 (1-2).
  • 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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  • Nonword repetition depends on the frequency of sublexical representations at different grain sizes: Evidence from a multi-factorial analysis.Jakub M. Szewczyk, Marta Marecka, Shula Chiat & Zofia Wodniecka - 2018 - Cognition 179 (C):23-36.
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  • When learning goes beyond statistics: Infants represent visual sequences in terms of chunks.Lauren K. Slone & Scott P. Johnson - 2018 - Cognition 178 (C):92-102.
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  • What exactly is learned in visual statistical learning? Insights from Bayesian modeling.Noam Siegelman, Louisa Bogaerts, Blair C. Armstrong & Ram Frost - 2019 - Cognition 192 (C):104002.
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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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  • A theory of memory retrieval.Roger Ratcliff - 1978 - Psychological Review 85 (2):59-108.
  • 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 research.
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  • Implicit learning and statistical learning: One phenomenon, two approaches.Pierre Perruchet & Sebastien Pacton - 2006 - Trends in Cognitive Sciences 10 (5):233-238.
  • Fading out of the rule vs. no-rule.Pierre Perruchet & Sebastien Pacton - 2006 - Trends in Cognitive Sciences 10 (5):233-238.
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  • The magical number seven, plus or minus two: Some limits on our capacity for processing information.George A. Miller - 1956 - Psychological Review 63 (2):81-97.
  • Language learning as language use: A cross-linguistic model of child language development.Stewart M. McCauley & Morten H. Christiansen - 2019 - Psychological Review 126 (1):1-51.
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  • The influence of children’s exposure to language from two to six years: The case of nonword repetition.Gary Jones - 2016 - Cognition 153 (C):79-88.
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  • Questioning short-term memory and its measurement: Why digit span measures long-term associative learning.Gary Jones & Bill Macken - 2015 - Cognition 144 (C):1-13.
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  • Simultaneous segmentation and generalisation of non-adjacent dependencies from continuous speech.Rebecca L. A. Frost & Padraic Monaghan - 2016 - Cognition 147 (C):70-74.
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  • TRACX: A recognition-based connectionist framework for sequence segmentation and chunk extraction.Robert M. French, Caspar Addyman & Denis Mareschal - 2011 - Psychological Review 118 (4):614-636.
  • Modeling the Development of Children's Use of Optional Infinitives in Dutch and English Using MOSAIC.Daniel Freudenthal, Julian M. Pine & Fernand Gobet - 2006 - Cognitive Science 30 (2):277-310.
    In this study we use a computational model of language learning called model of syntax acquisition in children (MOSAIC) to investigate the extent to which the optional infinitive (OI) phenomenon in Dutch and English can be explained in terms of a resource-limited distributional analysis of Dutch and English child-directed speech. The results show that the same version of MOSAIC is able to simulate changes in the pattern of finiteness marking in 2 children learning Dutch and 2 children learning English as (...)
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  • Finding Structure in Time.Jeffrey L. Elman - 1990 - Cognitive Science 14 (2):179-211.
    Time underlies many interesting human behaviors. Thus, the question of how to represent time in connectionist models is very important. One approach is to represent time implicitly by its effects on processing rather than explicitly (as in a spatial representation). The current report develops a proposal along these lines first described by Jordan (1986) which involves the use of recurrent links in order to provide networks with a dynamic memory. In this approach, hidden unit patterns are fed back to themselves: (...)
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  • The magical number 4 in short-term memory: A reconsideration of mental storage capacity.Nelson Cowan - 2001 - Behavioral and Brain Sciences 24 (1):87-114.
    Miller (1956) summarized evidence that people can remember about seven chunks in short-term memory (STM) tasks. However, that number was meant more as a rough estimate and a rhetorical device than as a real capacity limit. Others have since suggested that there is a more precise capacity limit, but that it is only three to five chunks. The present target article brings together a wide variety of data on capacity limits suggesting that the smaller capacity limit is real. Capacity limits (...)
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  • 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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  • The Now-or-Never bottleneck: A fundamental constraint on language.Morten H. Christiansen & Nick Chater - 2016 - Behavioral and Brain Sciences 39:e62.
    Memory is fleeting. New material rapidly obliterates previous material. How, then, can the brain deal successfully with the continual deluge of linguistic input? We argue that, to deal with this “Now-or-Never” bottleneck, the brain must compress and recode linguistic input as rapidly as possible. This observation has strong implications for the nature of language processing: (1) the language system must “eagerly” recode and compress linguistic input; (2) as the bottleneck recurs at each new representational level, the language system must build (...)
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  • 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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  • 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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  • Effects of domain-specific knowledge on memory for serial order.Matthew M. Botvinick - 2005 - Cognition 97 (2):135-151.
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  • Visual statistical learning in children and young adults: how implicit?Julie Bertels, Emeline Boursain, Arnaud Destrebecqz & Vinciane Gaillard - 2014 - Frontiers in Psychology 5.
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  • The phonological loop as a language learning device.Alan Baddeley, Susan Gathercole & Costanza Papagno - 1998 - Psychological Review 105 (1):158-173.
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  • 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 the Wide Range Achievement Test (...)
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