Number feature distortion modulates cue-based retrieval in reading

IF 2.9 1区 心理学 Q1 LINGUISTICS
Himanshu Yadav , Garrett Smith , Sebastian Reich , Shravan Vasishth
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引用次数: 7

Abstract

In sentence comprehension, what are the cognitive constraints that determine number agreement computation? Two broad classes of theoretical proposals are: (i) Representation distortion accounts, which assume that the number feature on the subject noun gets overwritten probabilistically by the number feature on a non-subject noun, leading to a non-veridical memory trace of the subject noun; and (ii) The cue-based retrieval account, a general account of dependency completion processes which assumes that the features on the subject noun remain intact, and that processing difficulty is only a function of the memory constraints on dependency completion. However, both these classes of model fail to account for the full spectrum of number agreement patterns observed in published studies. Using 17 benchmark datasets on number agreement from four languages, we implement seven computational models: three variants of representation distortion, two cue-based retrieval models, and two hybrid models that assume both representation-distortion and retrieval. Quantitative model comparison shows that the best fit is achieved by a hybrid model that assumes both feature distortion (specifically, feature percolation) and cue-based retrieval; numerically, the second-best quantitative fit was achieved by a distortion-based model of number attraction that assumes grammaticality bias during reading. More broadly, the work furnishes comprehensive evidence to support the idea that cue-based retrieval theory, which aims to be a general account of dependency completion, needs to incorporate a feature distortion process.

数字特征失真调制了基于线索的阅读检索
在句子理解中,决定数字一致性计算的认知约束是什么?两大类理论建议是:(i)表征失真说,它假设主名词上的数字特征被非主名词上的数字特征概率地覆盖,导致主名词的非真实性记忆痕迹;(ii)基于线索的检索解释,这是一种依赖完成过程的一般解释,它假设主语的特征保持不变,并且处理难度仅是依赖完成的记忆约束的函数。然而,这两类模型都不能解释在已发表的研究中观察到的数字一致模式的全部范围。使用来自4种语言的17个关于数字一致性的基准数据集,我们实现了7个计算模型:3个表征失真的变体,2个基于线索的检索模型,以及2个同时假设表征失真和检索的混合模型。定量模型比较表明,混合模型同时假设特征失真(具体而言,特征渗透)和基于线索的检索,可以获得最佳拟合;在数字上,第二好的定量拟合是通过基于扭曲的数字吸引模型实现的,该模型假设阅读过程中存在语法偏差。更广泛地说,这项工作提供了全面的证据来支持基于线索的检索理论,该理论旨在成为依赖完成的一般解释,需要纳入特征失真过程。
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来源期刊
CiteScore
8.70
自引率
14.00%
发文量
49
审稿时长
12.7 weeks
期刊介绍: Articles in the Journal of Memory and Language contribute to the formulation of scientific issues and theories in the areas of memory, language comprehension and production, and cognitive processes. Special emphasis is given to research articles that provide new theoretical insights based on a carefully laid empirical foundation. The journal generally favors articles that provide multiple experiments. In addition, significant theoretical papers without new experimental findings may be published. The Journal of Memory and Language is a valuable tool for cognitive scientists, including psychologists, linguists, and others interested in memory and learning, language, reading, and speech. Research Areas include: • Topics that illuminate aspects of memory or language processing • Linguistics • Neuropsychology.
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