Mirman Daniel, Magnuson James S, Estes Katharine Graf, Dixon James A
Department of Psychology, University of Connecticut, 406 Babbidge Road, Unit 1020, Storrs, CT 06269-1020, USA; Haskins Laboratories, New Haven, CT 06511, USA.
Cognition. 2008 Jul;108(1):271-80. doi: 10.1016/j.cognition.2008.02.003. Epub 2008 Mar 19.
Many studies have shown that listeners can segment words from running speech based on conditional probabilities of syllable transitions, suggesting that this statistical learning could be a foundational component of language learning. However, few studies have shown a direct link between statistical segmentation and word learning. We examined this possible link in adults by following a statistical segmentation exposure phase with an artificial lexicon learning phase. Participants were able to learn all novel object-label pairings, but pairings were learned faster when labels contained high probability (word-like) or non-occurring syllable transitions from the statistical segmentation phase than when they contained low probability (boundary-straddling) syllable transitions. This suggests that, for adults, labels inconsistent with expectations based on statistical learning are harder to learn than consistent or neutral labels. In contrast, a previous study found that infants learn consistent labels, but not inconsistent or neutral labels.
许多研究表明,听众可以根据音节转换的条件概率从连续语音中分割出单词,这表明这种统计学习可能是语言学习的一个基础组成部分。然而,很少有研究表明统计分割与单词学习之间存在直接联系。我们通过在人工词汇学习阶段之前设置一个统计分割暴露阶段,来研究成年人中这种可能的联系。参与者能够学习所有新的物体-标签配对,但当标签包含来自统计分割阶段的高概率(类似单词)或未出现的音节转换时,配对的学习速度比包含低概率(跨越边界)音节转换时更快。这表明,对于成年人来说,与基于统计学习的预期不一致的标签比一致或中性的标签更难学习。相比之下,先前的一项研究发现,婴儿学习一致的标签,但不学习不一致或中性的标签。