Decomposing geographical judgments into spatial, temporal and linguistic components.

IF 2.2 3区 心理学 Q2 PSYCHOLOGY, EXPERIMENTAL Psychological Research-Psychologische Forschung Pub Date : 2024-07-01 Epub Date: 2024-06-05 DOI:10.1007/s00426-024-01980-7
Daniele Gatti, Giorgia Anceresi, Marco Marelli, Tomaso Vecchi, Luca Rinaldi
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Abstract

When mentally exploring maps representing large-scale environments (e.g., countries or continents), humans are assumed to mainly rely on spatial information derived from direct perceptual experience (e.g., prior visual experience with the geographical map itself). In the present study, we rather tested whether also temporal and linguistic information could account for the way humans explore and ultimately represent this type of maps. We quantified temporal distance as the minimum time needed to travel by train across Italian cities, while linguistic distance was retrieved from natural language through cognitively plausible AI models based on non-spatial associative learning mechanisms (i.e., distributional semantic models). In a first experiment, we show that temporal and linguistic distances capture with high-confidence real geographical distances. Next, in a second behavioral experiment, we show that linguistic information can account for human performance over and above real spatial information (which plays the major role in explaining participants' performance) in a task in which participants have to judge the distance between cities (while temporal information was found to be not relevant). These findings indicate that, when exploring maps representing large-scale environments, humans do take advantage of both perceptual and linguistic information, suggesting in turn that the formation of cognitive maps possibly relies on a strict interplay between spatial and non-spatial learning principles.

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将地理判断分解为空间、时间和语言要素。
在对代表大尺度环境(如国家或大陆)的地图进行心理探索时,人类被认为主要依赖于从直接感知经验(如之前对地理图本身的视觉经验)中获得的空间信息。在本研究中,我们测试了时间和语言信息是否也能解释人类探索并最终表现这类地图的方式。我们将时间距离量化为乘坐火车穿越意大利城市所需的最短时间,而语言距离则是通过基于非空间联想学习机制的认知上可信的人工智能模型(即分布语义模型)从自然语言中获取的。在第一个实验中,我们证明了时间距离和语言距离能够高可信度地捕捉到真实的地理距离。接下来,在第二个行为实验中,我们证明了在一项要求参与者判断城市间距离的任务中,语言信息可以在真实空间信息(在解释参与者的表现方面起主要作用)之上解释人类的表现(而时间信息被认为与此无关)。这些研究结果表明,在探索代表大尺度环境的地图时,人类确实同时利用了感知信息和语言信息,这反过来又表明认知地图的形成可能依赖于空间和非空间学习原则之间的严格相互作用。
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来源期刊
CiteScore
5.10
自引率
8.70%
发文量
137
期刊介绍: Psychological Research/Psychologische Forschung publishes articles that contribute to a basic understanding of human perception, attention, memory, and action. The Journal is devoted to the dissemination of knowledge based on firm experimental ground, but not to particular approaches or schools of thought. Theoretical and historical papers are welcome to the extent that they serve this general purpose; papers of an applied nature are acceptable if they contribute to basic understanding or serve to bridge the often felt gap between basic and applied research in the field covered by the Journal.
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