Recruitment of magnitude representations to understand graded words

IF 3 2区 心理学 Q1 PSYCHOLOGY
Sashank Varma , Emily M. Sanford , Vijay Marupudi , Olivia Shaffer , R. Brooke Lea
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引用次数: 0

Abstract

Language understanding and mathematics understanding are two fundamental forms of human thinking. Prior research has largely focused on the question of how language shapes mathematical thinking. The current study considers the converse question. Specifically, it investigates whether the magnitude representations that are thought to anchor understanding of number are also recruited to understand the meanings of graded words. These are words that come in scales (e.g., Anger) whose members can be ordered by the degree to which they possess the defining property (e.g., calm, annoyed, angry, furious). Experiment 1 uses the comparison paradigm to find evidence that the distance, ratio, and boundary effects that are taken as evidence of the recruitment of magnitude representations extend from numbers to words. Experiment 2 uses a similarity rating paradigm and multi-dimensional scaling to find converging evidence for these effects in graded word understanding. Experiment 3 evaluates an alternative hypothesis – that these effects for graded words simply reflect the statistical structure of the linguistic environment – by using machine learning models of distributional word semantics: LSA, word2vec, GloVe, counterfitted word vectors, BERT, RoBERTa, and GPT-2. These models fail to show the full pattern of effects observed of humans in Experiment 2, suggesting that more is needed than mere statistics. This research paves the way for further investigations of the role of magnitude representations in sentence and text comprehension, and of the question of whether language understanding and number understanding draw on shared or independent magnitude representations. It also informs the role of machine learning models in cognitive psychology research.

利用量级表征来理解分级词。
语言理解和数学理解是人类思维的两种基本形式。以往的研究主要集中在语言如何影响数学思维的问题上。本研究则考虑了相反的问题。具体来说,本研究调查了被认为能巩固对数字理解的大小表征是否也能用来理解分级词的含义。这些分级词(如 "愤怒")可以根据词的定义属性(如 "平静"、"恼怒"、"生气"、"愤怒")的程度来排序。实验 1 使用比较范式来寻找证据,以证明距离、比率和边界效应可作为量级表征招募的证据,这些效应可从数字扩展到词语。实验 2 采用相似性评级范式和多维标度,在分级词语理解中找到这些效应的趋同证据。实验 3 评估了另一种假设,即这些对分级词的影响仅仅反映了语言环境的统计结构,方法是使用分布式词语义的机器学习模型:这些模型包括:LSA、word2vec、GloVe、反拟合词向量、BERT、RoBERTa 和 GPT-2。这些模型未能显示出在实验 2 中观察到的人类效应的全部模式,这表明我们需要的不仅仅是统计数据。这项研究为进一步研究量级表征在句子和文本理解中的作用,以及语言理解和数字理解是利用共享还是独立的量级表征这一问题铺平了道路。它还为机器学习模型在认知心理学研究中的作用提供了参考。
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来源期刊
Cognitive Psychology
Cognitive Psychology 医学-心理学
CiteScore
5.40
自引率
3.80%
发文量
29
审稿时长
50 days
期刊介绍: Cognitive Psychology is concerned with advances in the study of attention, memory, language processing, perception, problem solving, and thinking. Cognitive Psychology specializes in extensive articles that have a major impact on cognitive theory and provide new theoretical advances. Research Areas include: • Artificial intelligence • Developmental psychology • Linguistics • Neurophysiology • Social psychology.
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