CLiPS, Department of Linguistics, Faculty of Arts, University of Antwerp.
Seminar für Sprachwissenschaft, Faculty of Humanities, University of Tübingen.
J Exp Psychol Learn Mem Cogn. 2020 Apr;46(4):621-637. doi: 10.1037/xlm0000747. Epub 2019 Jul 18.
Using computational simulations, this work demonstrates that it is possible to learn a systematic relation between words' sound and their meanings. The sound-meaning relation was learned from a corpus of phonologically transcribed child-directed speech by using the linear discriminative learning (LDL) framework (Baayen, Chuang, Shafaei-Bajestan, & Blevins, 2019), which implements linear mappings between words' form vectors and semantic vectors. Presented with the form vectors of 16 nonwords, taken from a study on word learning (Fitneva, Christiansen, & Monaghan, 2009), the network generated the estimated semantic vectors of the nonwords. As half of these nonwords were created to phonologically resemble English nouns and the other half were phonologically similar to English verbs, we assessed whether the estimated semantic vectors for these nonwords reflect this word category difference. In 7 different simulations, linear discriminant analysis (LDA) successfully discriminated between noun-like nonwords and verb-like nonwords, based on their semantic relation to the words in the lexicon. Furthermore, how well LDA categorized a nonword correlated well with a phonological typicality measure (i.e., the degree of its form being noun-like or verb-like) and with children's performance in an entity/action discrimination task. On the one hand, the results suggest that children can infer the implicit meaning of a word directly from its sound. On the other hand, this study shows that nonwords do land in semantic space, such that children can capitalize on their semantic relations with other elements in the lexicon to decide whether a nonword is more likely to denote an entity or an action. (PsycInfo Database Record (c) 2020 APA, all rights reserved).
本研究运用计算模拟证明,人们可以学习单词的发音与其含义之间的系统关系。该研究采用线性判别学习(LDL)框架,从语音转录的儿童语言语料库中学习音义关系,该框架实现了单词形式向量与语义向量之间的线性映射(Baayen、Chuang、Shafaei-Bajestan 和 Blevins,2019)。研究向网络呈现 16 个非词的形式向量,这些非词来自词汇学习研究(Fitneva、Christiansen 和 Monaghan,2009)。网络生成了这些非词的估计语义向量。这些非词中的一半是根据英语名词的发音规律创造的,另一半是根据英语动词的发音规律创造的,我们评估了这些非词的估计语义向量是否反映了单词类别的差异。在 7 个不同的模拟中,线性判别分析(LDA)成功地根据非词与词汇中单词的语义关系区分了名词类非词和动词类非词。此外,LDA 对非词的分类效果与语音典型性度量(即其形式更接近名词还是动词的程度)以及儿童在实体/动作辨别任务中的表现高度相关。一方面,研究结果表明,儿童可以直接从单词的发音中推断出单词的隐含意义。另一方面,本研究表明,非词确实存在于语义空间中,儿童可以利用非词与词汇中其他元素的语义关系来判断一个非词更有可能表示一个实体还是一个动作。(PsycInfo 数据库记录(c)2020 APA,保留所有权利)。