There are an infinite number of possible word-to-world pairings in naturalistic learning environments. Previous studies to solve this mapping problem focus on linguistic, social, and representational constraints at a single moment. The proposed research asks if the indeterminacy problem may also be solved in another way, not in a single trial, but across trials, not in a single encounter with a word and potential referent but cross-situationally. We argue that a cross-situational learning strategy based on computing distributional statistics across words, across referents, and most importantly across the co-occurrences of these two can ultimately map individual words to the right referents despite the logical ambiguity in individual learning moments. Thus, the proposed research focuses on: (1) documenting cross-situational learning in infants from 10- to 16-months of age, (2) investigating the kinds of mechanisms that underlie this learning through both theoretical simulations and experimental studies, and (3) studying how statistical learning builds on itself accumulatively. Understanding those mechanisms and how they might go wrong or be bolstered are surely fundamental to understanding the origins of developmental language disorders that delay or alter early lexical learning. Implementing procedures to benefit children with developmental disorders typically involves altering or highlighting aspects of the learning environment. This requires a principled understanding of the structure and regularities of that environment and processes of statistical learning.

Agency
National Institute of Health (NIH)
Institute
Eunice Kennedy Shriver National Institute of Child Health & Human Development (NICHD)
Type
Research Project (R01)
Project #
5R01HD056029-04
Application #
7870420
Study Section
Language and Communication Study Section (LCOM)
Program Officer
Mccardle, Peggy D
Project Start
2007-09-01
Project End
2012-06-30
Budget Start
2010-07-01
Budget End
2011-06-30
Support Year
4
Fiscal Year
2010
Total Cost
$184,005
Indirect Cost
Name
Indiana University Bloomington
Department
Psychology
Type
Schools of Arts and Sciences
DUNS #
006046700
City
Bloomington
State
IN
Country
United States
Zip Code
47401
Kachergis, George; Yu, Chen; Shiffrin, Richard M (2017) A Bootstrapping Model of Frequency and Context Effects in Word Learning. Cogn Sci 41:590-622
Chen, Chi-Hsin; Gershkoff-Stowe, Lisa; Wu, Chih-Yi et al. (2017) Tracking Multiple Statistics: Simultaneous Learning of Object Names and Categories in English and Mandarin Speakers. Cogn Sci 41:1485-1509
Benitez, Viridiana L; Yurovsky, Daniel; Smith, Linda B (2016) Competition between multiple words for a referent in cross-situational word learning. J Mem Lang 90:31-48
Smith, Linda B; Suanda, Sumarga H; Yu, Chen (2014) The unrealized promise of infant statistical word-referent learning. Trends Cogn Sci 18:251-8
Yurovsky, Daniel; Fricker, Damian C; Yu, Chen et al. (2014) The role of partial knowledge in statistical word learning. Psychon Bull Rev 21:1-22
Yurovsky, Daniel; Smith, Linda B; Yu, Chen (2013) Statistical word learning at scale: the baby's view is better. Dev Sci 16:959-66
Yurovsky, Daniel; Boyer, Ty W; Smith, Linda B et al. (2013) Probabilistic cue combination: less is more. Dev Sci 16:149-158
Yurovsky, Daniel; Yu, Chen; Smith, Linda B (2013) Competitive processes in cross-situational word learning. Cogn Sci 37:891-921
Smith, Linda B; Yu, Chen (2013) Visual attention is not enough: Individual differences in statistical word-referent learning in infants. Lang Learn Dev 9:
Kachergis, George; Yu, Chen; Shiffrin, Richard M (2012) An associative model of adaptive inference for learning word-referent mappings. Psychon Bull Rev 19:317-24

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