模拟没有语言分类的早期语音和单词学习

IF 3.1 1区 心理学 Q2 PSYCHOLOGY, DEVELOPMENTAL
Marvin Lavechin, Maureen de Seyssel, Hadrien Titeux, Guillaume Wisniewski, Hervé Bredin, Alejandrina Cristia, Emmanuel Dupoux
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引用次数: 0

摘要

甚至在他们说话之前,婴儿就对母语的语音变得敏感,并能识别出越来越多单词的听觉形式。传统上,这些早期的感知变化归因于对语言类别(如音素或单词)的新兴知识。然而,由于婴儿类别知识的证据有限,围绕这种解释存在越来越多的怀疑。先前的建模工作表明,分布式学习算法可以在不获得语音类别的情况下再现婴儿早期语音学习中的感知变化。在进一步的研究中,我们认为早期的单词学习可能不需要语言类别。我们介绍了STELA,一种预测编码算法,旨在从连续的原始语音数据中提取统计模式。我们的研究结果表明,STELA可以再现语音和词形学习的一些发展模式,而不依赖于音素或单词等语言类别,也不需要明确的分词。通过对习得表征的分析,我们展示了语言类别可能作为学习的最终产物而不是早期语言习得的先决条件而出现的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulating Early Phonetic and Word Learning Without Linguistic Categories

Before they even talk, infants become sensitive to the speech sounds of their native language and recognize the auditory form of an increasing number of words. Traditionally, these early perceptual changes are attributed to an emerging knowledge of linguistic categories such as phonemes or words. However, there is growing skepticism surrounding this interpretation due to limited evidence of category knowledge in infants. Previous modeling work has shown that a distributional learning algorithm could reproduce perceptual changes in infants' early phonetic learning without acquiring phonetic categories. Taking this inquiry further, we propose that linguistic categories may not be needed for early word learning. We introduce STELA, a predictive coding algorithm designed to extract statistical patterns from continuous raw speech data. Our findings demonstrate that STELA can reproduce some developmental patterns of phonetic and word form learning without relying on linguistic categories such as phonemes or words nor requiring explicit word segmentation. Through an analysis of the learned representations, we show evidence that linguistic categories may emerge as an end product of learning rather than being prerequisites during early language acquisition.

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来源期刊
CiteScore
8.10
自引率
8.10%
发文量
132
期刊介绍: Developmental Science publishes cutting-edge theory and up-to-the-minute research on scientific developmental psychology from leading thinkers in the field. It is currently the only journal that specifically focuses on human developmental cognitive neuroscience. Coverage includes: - Clinical, computational and comparative approaches to development - Key advances in cognitive and social development - Developmental cognitive neuroscience - Functional neuroimaging of the developing brain
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