Stein Simon David, Plag Ingo
English Language and Linguistics, Department of English and American Studies, Heinrich Heine University Düsseldorf, Düsseldorf, Germany.
Front Psychol. 2021 Aug 2;12:678712. doi: 10.3389/fpsyg.2021.678712. eCollection 2021.
Recent evidence for the influence of morphological structure on the phonetic output goes unexplained by established models of speech production and by theories of the morphology-phonology interaction. Linear discriminative learning (LDL) is a recent computational approach in which such effects can be expected. We predict the acoustic duration of 4,530 English derivative tokens with the morphological functions DIS, NESS, LESS, ATION, and IZE in natural speech data by using predictors derived from a linear discriminative learning network. We find that the network is accurate in learning speech production and comprehension, and that the measures derived from it are successful in predicting duration. For example, words are lengthened when the semantic support of the word's predicted articulatory path is stronger. Importantly, differences between morphological categories emerge naturally from the network, even when no morphological information is provided. The results imply that morphological effects on duration can be explained without postulating theoretical units like the morpheme, and they provide further evidence that LDL is a promising alternative for modeling speech production.
形态结构对语音输出的影响,现有言语产生模型及形态学与音系学相互作用理论均无法对近期相关证据作出解释。线性判别学习(LDL)是一种近期的计算方法,有望解释此类效应。我们利用从线性判别学习网络得出的预测因子,预测自然语音数据中4530个具有DIS、NESS、LESS、ATION和IZE形态功能的英语派生词的声学时长。我们发现该网络在学习言语产生和理解方面较为准确,且从中得出的测量方法成功地预测了时长。例如,当单词预测发音路径的语义支持更强时,单词会被拉长。重要的是,即使未提供形态信息,形态类别之间的差异也会自然地从网络中显现出来。结果表明,无需假定像语素这样的理论单位,就能解释形态对时长的影响,并且它们进一步证明LDL是一种很有前景的言语产生建模替代方法。