Department of Neurology, Medical College of Wisconsin, USA; Department of Biomedical Engineering, Medical College of Wisconsin, USA.
Department of Neurology, Medical College of Wisconsin, USA.
Neuropsychologia. 2024 Aug 13;201:108939. doi: 10.1016/j.neuropsychologia.2024.108939. Epub 2024 Jun 18.
The organization of semantic memory, including memory for word meanings, has long been a central question in cognitive science. Although there is general agreement that word meaning representations must make contact with sensory-motor and affective experiences in a non-arbitrary fashion, the nature of this relationship remains controversial. One prominent view proposes that word meanings are represented directly in terms of their experiential content (i.e., sensory-motor and affective representations). Opponents of this view argue that the representation of word meanings reflects primarily taxonomic structure, that is, their relationships to natural categories. In addition, the recent success of language models based on word co-occurrence (i.e., distributional) information in emulating human linguistic behavior has led to proposals that this kind of information may play an important role in the representation of lexical concepts. We used a semantic priming paradigm designed for representational similarity analysis (RSA) to quantitatively assess how well each of these theories explains the representational similarity pattern for a large set of words. Crucially, we used partial correlation RSA to account for intercorrelations between model predictions, which allowed us to assess, for the first time, the unique effect of each model. Semantic priming was driven primarily by experiential similarity between prime and target, with no evidence of an independent effect of distributional or taxonomic similarity. Furthermore, only the experiential models accounted for unique variance in priming after partialling out explicit similarity ratings. These results support experiential accounts of semantic representation and indicate that, despite their good performance at some linguistic tasks, the distributional models evaluated here do not encode the same kind of information used by the human semantic system.
语义记忆的组织,包括词汇意义的记忆,一直是认知科学的核心问题。尽管人们普遍认为词汇意义的表示必须以非任意的方式与感觉运动和情感体验联系起来,但这种关系的性质仍然存在争议。一种突出的观点认为,词汇意义是直接根据其体验内容(即感觉运动和情感表示)来表示的。这种观点的反对者认为,词汇意义的表示主要反映了分类结构,即它们与自然类别之间的关系。此外,基于词共现(即分布)信息的语言模型在模拟人类语言行为方面的最新成功,导致了这样一种观点,即这种信息可能在词汇概念的表示中发挥重要作用。我们使用了一种专为表示相似性分析(RSA)设计的语义启动范式,定量评估了这些理论中的每一种理论在解释大量词汇的表示相似性模式方面的表现。至关重要的是,我们使用偏相关 RSA 来解释模型预测之间的相互关联,这使我们能够首次评估每个模型的独特效果。语义启动主要由启动和目标之间的体验相似性驱动,没有证据表明分布或分类相似性有独立的影响。此外,只有经验模型在排除显式相似性评分后,才能解释启动中的独特方差。这些结果支持语义表示的经验性解释,并表明,尽管这些分布模型在某些语言任务中表现良好,但这里评估的分布模型并没有编码人类语义系统使用的相同类型的信息。