2019
DOI: 10.3389/fnhum.2019.00358
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Input Complexity Affects Long-Term Retention of Statistically Learned Regularities in an Artificial Language Learning Task

Abstract: 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… Show more

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