Mapping and modeling the semantic space of math concepts

IF 2.8 1区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Cognition Pub Date : 2024-10-05 DOI:10.1016/j.cognition.2024.105971
Samuel Debray , Stanislas Dehaene
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Abstract

Mathematics is an underexplored domain of human cognition. While many studies have focused on subsets of math concepts such as numbers, fractions, or geometric shapes, few have ventured beyond these elementary domains. Here, we attempted to map out the full space of math concepts and to answer two specific questions: can distributed semantic models, such a GloVe, provide a satisfactory fit to human semantic judgements in mathematics? And how does this fit vary with education? We first analyzed all of the French and English Wikipedia pages with math contents, and used a semi-automatic procedure to extract the 1000 most frequent math terms in both languages. In a second step, we collected extensive behavioral judgements of familiarity and semantic similarity between them. About half of the variance in human similarity judgements was explained by vector embeddings that attempt to capture latent semantic structures based on cooccurence statistics. Participants' self-reported level of education modulated familiarity and similarity, allowing us to create a partial hierarchy among high-level math concepts. Our results converge onto the proposal of a map of math space, organized as a database of math terms with information about their frequency, familiarity, grade of acquisition, and entanglement with other concepts.
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数学概念语义空间的映射和建模。
数学是人类认知中一个探索不足的领域。虽然许多研究都集中在数学概念的子集上,如数字、分数或几何图形,但很少有人涉足这些基本领域之外的领域。在这里,我们试图描绘出数学概念的完整空间,并回答两个具体问题:分布式语义模型(如 GloVe)能否令人满意地与人类数学语义判断相匹配?这种契合度又是如何随教育程度而变化的?我们首先分析了所有包含数学内容的法语和英语维基百科页面,并使用半自动程序提取了这两种语言中出现频率最高的 1000 个数学术语。第二步,我们收集了大量关于它们之间熟悉程度和语义相似性的行为判断。人类相似性判断中约有一半的变异是由向量嵌入解释的,向量嵌入试图捕捉基于共生统计的潜在语义结构。参与者自我报告的教育水平调节了熟悉度和相似度,使我们能够在高级数学概念之间建立部分层次结构。我们的研究结果汇聚成一个数学空间地图的提议,该地图是一个数学术语数据库,其中包含有关数学术语的频率、熟悉程度、获得等级以及与其他概念的纠缠等信息。
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来源期刊
Cognition
Cognition PSYCHOLOGY, EXPERIMENTAL-
CiteScore
6.40
自引率
5.90%
发文量
283
期刊介绍: Cognition is an international journal that publishes theoretical and experimental papers on the study of the mind. It covers a wide variety of subjects concerning all the different aspects of cognition, ranging from biological and experimental studies to formal analysis. Contributions from the fields of psychology, neuroscience, linguistics, computer science, mathematics, ethology and philosophy are welcome in this journal provided that they have some bearing on the functioning of the mind. In addition, the journal serves as a forum for discussion of social and political aspects of cognitive science.
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