Experientially-grounded and distributional semantic vectors uncover dissociable representations of conceptual categories.

IF 1.8 3区 医学 Q2 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY
Language Cognition and Neuroscience Pub Date : 2023-07-12 eCollection Date: 2024-01-01 DOI:10.1080/23273798.2023.2232481
Francesca Carota, Hamed Nili, Nikolaus Kriegeskorte, Friedemann Pulvermüller
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Abstract

Neuronal populations code similar concepts by similar activity patterns across the human brain's semantic networks. However, it is unclear to what extent such meaning-to-symbol mapping reflects distributional statistics, or experiential information grounded in sensorimotor and emotional knowledge. We asked whether integrating distributional and experiential data better distinguished conceptual categories than each method taken separately. We examined the similarity structure of fMRI patterns elicited by visually presented action- and object-related words using representational similarity analysis (RSA). We found that the distributional and experiential/integrative models respectively mapped the high-dimensional semantic space in left inferior frontal, anterior temporal, and in left precentral, posterior inferior/middle temporal cortex. Furthermore, results from model comparisons uncovered category-specific similarity patterns, as both distributional and experiential models matched the similarity patterns for action concepts in left fronto-temporal cortex, whilst the experiential/integrative (but not distributional) models matched the similarity patterns for object concepts in left fusiform and angular gyrus.

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基于经验和分布的语义向量揭示了概念类别的可分离表示
神经元群体通过人类大脑语义网络中相似的活动模式来编码相似的概念。然而,目前尚不清楚这种符号映射的意义在多大程度上影响了分布统计数据,或基于感觉运动和情感知识的经验信息。我们询问,整合分布数据和经验数据是否比单独采用的每种方法更好地区分概念类别。我们使用表征相似性分析(RSA)检查了视觉呈现的动作和物体相关单词引发的fMRI模式的相似性结构。我们发现,分布模型和经验/整合模型分别映射了左额下叶、前颞叶和左中央前叶、后颞叶/中颞叶皮层的高维语义空间。此外,模型比较的结果揭示了特定类别的相似模式,因为分布模型和经验模型都与左额颞皮质中动作概念的相似模式相匹配,而经验/综合(但不是分布)模型与左梭状回和角回中物体概念的相似模式相匹配。
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来源期刊
Language Cognition and Neuroscience
Language Cognition and Neuroscience AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY-BEHAVIORAL SCIENCES
CiteScore
4.50
自引率
13.00%
发文量
70
期刊介绍: Language, Cognition and Neuroscience (formerly titled Language and Cognitive Processes) publishes high-quality papers taking an interdisciplinary approach to the study of brain and language, and promotes studies that integrate cognitive theoretical accounts of language and its neural bases. We publish both high quality, theoretically-motivated cognitive behavioural studies of language function, and papers which integrate cognitive theoretical accounts of language with its neurobiological foundations. The study of language function from a cognitive neuroscience perspective has attracted intensive research interest over the last 20 years, and the development of neuroscience methodologies has significantly broadened the empirical scope of all language research. Both hemodynamic imaging and electrophysiological approaches provide new perspectives on the representation and processing of language, and place important constraints on the development of theoretical accounts of language function and its neurobiological context.
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