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无需空间计算的空间表示。

Spatial Representations Without Spatial Computations.

机构信息

Department of Brain and Behavioral Sciences, University of Pavia.

Department of Psychology, University of Milano-Bicocca.

出版信息

Psychol Sci. 2022 Nov;33(11):1947-1958. doi: 10.1177/09567976221094863. Epub 2022 Oct 6.

Abstract

Cognitive maps are assumed to be fundamentally spatial and grounded only in perceptual processes, as supported by the discovery of functionally dedicated cell types in the human brain, which tile the environment in a maplike fashion. Challenging this view, we demonstrate that spatial representations-such as large-scale geographical maps-can be as well retrieved with high confidence from natural language through cognitively plausible artificial-intelligence models on the basis of nonspatial associative-learning mechanisms. More critically, we show that linguistic information accounts for the specific distortions observed in tasks when college-age adults have to judge the geographical positions of cities, even when these positions are estimated on real maps. These findings indicate that language experience can encode and reproduce cognitive maps without the need for a dedicated spatial-representation system, thus suggesting that the formation of these maps is the result of a strict interplay between spatial- and nonspatial-learning principles.

摘要

认知地图被认为是基于空间的,并且仅基于感知过程,这一观点得到了人类大脑中功能特定细胞类型的发现的支持,这些细胞类型以地图般的方式覆盖环境。然而,令人惊讶的是,我们证明了通过基于非空间联想学习机制的认知上合理的人工智能模型,从自然语言中可以高度置信地提取出空间表示形式,例如大规模的地理地图。更重要的是,我们表明,即使在使用真实地图估计位置时,语言信息也可以解释大学生在判断城市地理位置时观察到的特定扭曲。这些发现表明,语言经验可以编码和再现认知地图,而不需要专门的空间表示系统,因此表明这些地图的形成是空间和非空间学习原则之间严格相互作用的结果。

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