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Infants Generalize Representations of Statistically Segmented Words

机译:婴儿对统计上分段的单词的表示进行概括

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摘要

The acoustic variation in language presents learners with a substantial challenge. To learn by tracking statistical regularities in speech, infants must recognize words across tokens that differ based on characteristics such as the speaker’s voice, affect, or the sentence context. Previous statistical learning studies have not investigated how these types of non-phonemic surface form variation affect learning. The present experiments used tasks tailored to two distinct developmental levels to investigate the robustness of statistical learning to variation. Experiment 1 examined statistical word segmentation in 11-month-olds and found that infants can recognize statistically segmented words across a change in the speaker’s voice from segmentation to testing. The direction of infants’ preferences suggests that recognizing words across a voice change is more difficult than recognizing them in a consistent voice. Experiment 2 tested whether 17-month-olds can generalize the output of statistical learning across variation to support word learning. The infants were successful in their generalization; they associated referents with statistically defined words despite a change in voice from segmentation to label learning. Infants’ learning patterns also indicate that they formed representations of across word syllable sequences during segmentation. Thus, low probability sequences can act as object labels in some conditions. The findings of these experiments suggest that the units that emerge during statistical learning are not perceptually constrained, but rather are robust to naturalistic acoustic variation.
机译:语言的声音变化给学习者带来了巨大的挑战。为了通过跟踪语音中的统计规律来学习,婴儿必须识别出不同标记上的单词,这些标记根据说话者的声音,情感或句子上下文等特征而有所不同。先前的统计学习研究尚未调查这些类型的非音素表面形式变化如何影响学习。本实验使用了针对两个不同的发展水平量身定制的任务,以研究统计学习对变异的鲁棒性。实验1对11个月大的婴儿进行了统计分词,发现婴儿可以从说话人的语音变化中识别出统计分词,从说话者到测试者的声音变化。婴儿偏好的方向表明,通过语音变化识别单词比以一致的语音识别单词更困难。实验2测试了17个月大的人是否可以概括统计学习的结果,以支持单词学习。婴儿的归纳成功。尽管语音从分段学习到标签学习发生了变化,但他们仍将参考对象与统计定义的单词相关联。婴儿的学习模式还表明,他们在分割过程中形成了跨单词音节序列的表示。因此,在某些情况下,低概率序列可以充当对象标记。这些实验的发现表明,在统计学习过程中出现的单元并没有受到感知上的约束,而是对自然声学变化具有鲁棒性。

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