Department of Neuroscience and Biomedical Engineering, Aalto University, Aalto.
Aalto NeuroImaging, Aalto University, Aalto.
Hum Brain Mapp. 2021 Oct 15;42(15):4973-4984. doi: 10.1002/hbm.25593. Epub 2021 Jul 15.
In order to describe how humans represent meaning in the brain, one must be able to account for not just concrete words but, critically, also abstract words, which lack a physical referent. Hebbian formalism and optimization are basic principles of brain function, and they provide an appealing approach for modeling word meanings based on word co-occurrences. We provide proof of concept that a statistical model of the semantic space can account for neural representations of both concrete and abstract words, using MEG. Here, we built a statistical model using word embeddings extracted from a text corpus. This statistical model was used to train a machine learning algorithm to successfully decode the MEG signals evoked by written words. In the model, word abstractness emerged from the statistical regularities of the language environment. Representational similarity analysis further showed that this salient property of the model co-varies, at 280-420 ms after visual word presentation, with activity in regions that have been previously linked with processing of abstract words, namely the left-hemisphere frontal, anterior temporal and superior parietal cortex. In light of these results, we propose that the neural encoding of word meanings can arise through statistical regularities, that is, through grounding in language itself.
为了描述人类如何在大脑中表示意义,人们必须能够解释不仅是具体的词,而且还必须解释抽象词,因为抽象词缺乏物理参照。海布形式主义和优化是大脑功能的基本原则,它们为基于词共现来对词的意义进行建模提供了一种有吸引力的方法。我们使用 MEG 提供了证据,证明语义空间的统计模型可以解释具体词和抽象词的神经表示。在这里,我们使用从文本语料库中提取的词嵌入构建了一个统计模型。该统计模型用于训练机器学习算法,以成功解码书面词诱发的 MEG 信号。在该模型中,词的抽象性源自语言环境的统计规律。代表性相似性分析进一步表明,该模型的这一显著特性与在视觉词呈现后 280-420 毫秒出现的、与处理抽象词相关的区域的活动共变,即左半球额、前颞和顶叶皮层。鉴于这些结果,我们提出,词的意义的神经编码可以通过统计规律产生,也就是说,通过语言本身的基础产生。