Kim Songhee, Binder Jeffrey R, Humphries Colin, Conant Lisa L
Department of Neurology, Medical College of Wisconsin, Milwaukee, USA.
Lang Cogn Neurosci. 2024;39(9):1189-1211. doi: 10.1080/23273798.2024.2368119. Epub 2024 Jun 25.
While the two types of intransitive verbs, i.e., unergative and unaccusative, are hypothesised to be syntactically represented, many have proposed a semantic account where abstract properties related to agentivity and telicity, often conceptualised as binary properties, determine the classification. Here we explore the extent to which graded, embodied features rooted in neurobiological systems contribute to the distinction, representing verb meanings as continuous human ratings over various experiential dimensions. Unlike prior studies that classified verbs based on categorical intuition, we assessed the degree of unaccusativity by acceptability of the prenominal past participle construction, one of the unaccusativity diagnostics. Five models were constructed to explain these data: categorical syntactic/semantic, feature-based event-semantic, experiential, and distributional models. The experiential model best explained the diagnostic test data, suggesting that the unaccusative/unergative distinction may be an emergent phenomenon related to differences in underlying experiential content. The experiential model's advantages, including interpretability and scalability, are also discussed.
虽然不及物动词的两种类型,即非作格动词和非宾格动词,被假设为在句法上有表征,但许多人提出了一种语义解释,其中与施事性和有界性相关的抽象属性(通常被概念化为二元属性)决定了分类。在这里,我们探讨了植根于神经生物学系统的分级、具身特征在多大程度上促成了这种区分,将动词意义表示为人类在各种体验维度上的连续评级。与之前基于分类直觉对动词进行分类的研究不同,我们通过前置过去分词结构(非宾格性诊断方法之一)的可接受性来评估非宾格程度。构建了五个模型来解释这些数据:分类句法/语义模型、基于特征的事件语义模型、体验模型和分布模型。体验模型最能解释诊断测试数据,这表明非宾格/非作格区分可能是一种与潜在体验内容差异相关的新兴现象。还讨论了体验模型的优势,包括可解释性和可扩展性。