Batterink Laura J
Department of Psychology, Northwestern University.
Psychol Sci. 2017 Jul;28(7):921-928. doi: 10.1177/0956797617698226. Epub 2017 May 11.
The identification of words in continuous speech, known as speech segmentation, is a critical early step in language acquisition. This process is partially supported by statistical learning, the ability to extract patterns from the environment. Given that speech segmentation represents a potential bottleneck for language acquisition, patterns in speech may be extracted very rapidly, without extensive exposure. This hypothesis was examined by exposing participants to continuous speech streams composed of novel repeating nonsense words. Learning was measured on-line using a reaction time task. After merely one exposure to an embedded novel word, learners demonstrated significant learning effects, as revealed by faster responses to predictable than to unpredictable syllables. These results demonstrate that learners gained sensitivity to the statistical structure of unfamiliar speech on a very rapid timescale. This ability may play an essential role in early stages of language acquisition, allowing learners to rapidly identify word candidates and "break in" to an unfamiliar language.
在连续语音中识别单词,即语音分割,是语言习得过程中至关重要的早期步骤。这一过程部分得益于统计学习,即从环境中提取模式的能力。鉴于语音分割是语言习得的一个潜在瓶颈,语音中的模式可能会在没有大量接触的情况下被非常快速地提取出来。通过让参与者接触由新颖重复的无意义单词组成的连续语音流来检验这一假设。使用反应时间任务在线测量学习情况。仅仅接触一次嵌入的新单词后,学习者就表现出显著的学习效果,对可预测音节的反应比对不可预测音节的反应更快就表明了这一点。这些结果表明,学习者在非常短的时间内就对不熟悉语音的统计结构变得敏感。这种能力可能在语言习得的早期阶段发挥重要作用,使学习者能够快速识别候选单词并“切入”一门不熟悉的语言。