Changping Laboratory, Beijing, China.
Centre for Speech, Language and the Brain, Department of Psychology, University of Cambridge, Cambridge, United Kingdom.
Elife. 2024 Apr 5;12:RP89311. doi: 10.7554/eLife.89311.
A core aspect of human speech comprehension is the ability to incrementally integrate consecutive words into a structured and coherent interpretation, aligning with the speaker's intended meaning. This rapid process is subject to multidimensional probabilistic constraints, including both linguistic knowledge and non-linguistic information within specific contexts, and it is their interpretative coherence that drives successful comprehension. To study the neural substrates of this process, we extract word-by-word measures of sentential structure from BERT, a deep language model, which effectively approximates the coherent outcomes of the dynamic interplay among various types of constraints. Using representational similarity analysis, we tested BERT parse depths and relevant corpus-based measures against the spatiotemporally resolved brain activity recorded by electro-/magnetoencephalography when participants were listening to the same sentences. Our results provide a detailed picture of the neurobiological processes involved in the incremental construction of structured interpretations. These findings show when and where coherent interpretations emerge through the evaluation and integration of multifaceted constraints in the brain, which engages bilateral brain regions extending beyond the classical fronto-temporal language system. Furthermore, this study provides empirical evidence supporting the use of artificial neural networks as computational models for revealing the neural dynamics underpinning complex cognitive processes in the brain.
人类言语理解的一个核心方面是将连续的单词逐步整合到一个结构化和连贯的解释中的能力,与说话者的意图相符。这个快速的过程受到多维概率约束的影响,包括语言知识和特定上下文中的非语言信息,正是它们的解释一致性推动了成功的理解。为了研究这个过程的神经基础,我们从 BERT 中提取了句子结构的逐字测量值,BERT 是一种深度语言模型,它有效地模拟了各种类型的约束之间动态相互作用的连贯结果。使用表示相似性分析,我们针对 BERT 解析深度和相关基于语料库的度量与通过电/脑磁图记录的参与者在听相同句子时的时空分辨大脑活动进行了测试。我们的研究结果提供了涉及结构化解释的逐步构建的神经生物学过程的详细图片。这些发现表明,连贯的解释是如何通过在大脑中评估和整合多方面的约束而出现的,涉及到延伸到经典的额颞语言系统之外的双侧大脑区域。此外,这项研究提供了实证证据,支持使用人工神经网络作为计算模型,揭示大脑中复杂认知过程的神经动力学。