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成人词汇学习中对统计信息的细粒度敏感性。

Fine-grained sensitivity to statistical information in adult word learning.

作者信息

Vouloumanos Athena

机构信息

Department of Psychology, McGill University, Montréal, Qc, H3A 1B1, Canada.

出版信息

Cognition. 2008 May;107(2):729-42. doi: 10.1016/j.cognition.2007.08.007. Epub 2007 Oct 24.

Abstract

A language learner trying to acquire a new word must often sift through many potential relations between particular words and their possible meanings. In principle, statistical information about the distribution of those mappings could serve as one important source of data, but little is known about whether learners can in fact track multiple word-referent mappings, and, if they do, the precision with which they can represent those statistics. To test this, two experiments contrasted a pair of possibilities: that learners encode the fine-grained statistics of mappings in the input - both high- and low-frequency mappings - or, alternatively, that only high frequency mappings are represented. Participants were briefly trained on novel word-novel object pairs combined with varying frequencies: some objects were paired with one word, other objects with multiple words with differing frequencies (ranging from 10% to 80%). Results showed that participants were exquisitely sensitive to very small statistical differences in mappings. The second experiment showed that word learners' representation of low frequency mappings is modulated as a function of the variability in the environment. Implications for Mutual Exclusivity and Bayesian accounts of word learning are discussed.

摘要

一个试图习得新单词的语言学习者常常必须在特定单词与其可能含义之间的诸多潜在关系中进行筛选。原则上,关于这些映射分布的统计信息可以作为一个重要的数据来源,但对于学习者是否实际上能够追踪多个单词-所指映射,以及如果他们能够做到,他们能够以何种精度来表征这些统计数据,我们却知之甚少。为了测试这一点,两项实验对比了两种可能性:学习者对输入中映射的细粒度统计信息进行编码——包括高频和低频映射——或者,另一种情况是,只表征高频映射。参与者针对新颖的单词-新颖的物体对进行了简短训练,这些对组合了不同的频率:一些物体与一个单词配对,其他物体与多个频率不同的单词配对(范围从10%到80%)。结果表明,参与者对映射中非常小的统计差异极为敏感。第二项实验表明,单词学习者对低频映射的表征会根据环境中的变异性而受到调节。文中还讨论了对单词学习的互斥性和贝叶斯理论的启示。

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