Rapid Word Learning Under Uncertainty via Cross-Situational Statistics

Author:

Yu Chen1,Smith Linda B.1

Affiliation:

1. Department of Psychological and Brain Sciences and Program in Cognitive Science, Indiana University

Abstract

There are an infinite number of possible word-to-word pairings in naturalistic learning environments. Previous proposals to solve this mapping problem have focused on linguistic, social, representational, and attentional constraints at a single moment. This article discusses a cross-situational learning strategy based on computing distributional statistics across words, across referents, and, most important, across the co-occurrences of words and referents at multiple moments. We briefly exposed adults to a set of trials that each contained multiple spoken words and multiple pictures of individual objects; no information about word-picture correspondences was given within a trial. Nonetheless, over trials, subjects learned the word-picture mappings through cross-trial statistical relations. Different learning conditions varied the degree of within-trial reference uncertainty, the number of trials, and the length of trials. Overall, the remarkable performance of learners in various learning conditions suggests that they calculate cross-trial statistics with sufficient fidelity and by doing so rapidly learn word-referent pairs even in highly ambiguous learning contexts.

Publisher

SAGE Publications

Subject

General Psychology

Reference24 articles.

1. Relevance and early word learning

2. Early lexical acquisition: the role of cross-situational learning

3. Early referential understanding: Infants' ability to recognize referential acts for what they are.

4. Carey, S. and E. Bartlett (1978, August). Acquiring a single new word. Papers and Reports on Child Language Development, 15, 17–29. Retrieved March 2007 from http://www.wjh.harvard.edu/~lds/index.html?carey.html

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