Bruera Andrea, Poesio Massimo
Cognitive Science Research Group, School of Electronic Engineering and Computer Science, Queen Mary University of London, London, United Kingdom.
Front Artif Intell. 2022 Feb 23;5:796793. doi: 10.3389/frai.2022.796793. eCollection 2022.
Semantic knowledge about individual entities (i.e., the referents of proper names such as ) is fine-grained, episodic, and strongly social in nature, when compared with knowledge about generic entities (the referents of common nouns such as ). We investigate the semantic representations of individual entities in the brain; and for the first time we approach this question using both neural data, in the form of newly-acquired EEG data, and distributional models of word meaning, employing them to isolate semantic information regarding individual entities in the brain. We ran two sets of analyses. The first set of analyses is only concerned with the evoked responses to individual entities and their categories. We find that it is possible to classify them according to both their coarse and their fine-grained category at appropriate timepoints, but that it is hard to map representational information learned from individuals to their categories. In the second set of analyses, we learn to decode from evoked responses to distributional word vectors. These results indicate that such a mapping can be learnt successfully: this counts not only as a demonstration that representations of individuals can be discriminated in EEG responses, but also as a first brain-based validation of distributional semantic models as representations of individual entities. Finally, in-depth analyses of the decoder performance provide additional evidence that the referents of proper names and categories have little in common when it comes to their representation in the brain.
与关于类属实体(如普通名词的所指对象)的知识相比,关于单个实体(即专有名词的所指对象,如 )的语义知识在本质上是细粒度的、情景性的且具有很强的社会性。我们研究大脑中单个实体的语义表征;并且我们首次同时使用新获取的脑电图(EEG)数据形式的神经数据和词义分布模型来探讨这个问题,利用它们来分离大脑中关于单个实体的语义信息。我们进行了两组分析。第一组分析仅关注对单个实体及其类别的诱发反应。我们发现,在适当的时间点,可以根据它们的粗略和细粒度类别对它们进行分类,但很难将从个体学到的表征信息映射到它们的类别。在第二组分析中,我们学习从对分布词向量的诱发反应中进行解码。这些结果表明,可以成功地学习这样的映射:这不仅证明了在脑电图反应中可以区分个体的表征,而且还首次基于大脑对分布语义模型作为单个实体的表征进行了验证。最后,对解码器性能的深入分析提供了额外的证据,表明专有名词的所指对象和类别在大脑中的表征几乎没有共同之处。