语言的可预测性和变异性受学习和制作的不同影响。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Aislinn Keogh, Simon Kirby, Jennifer Culbertson
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引用次数: 0

摘要

人类认知的一般原则有助于解释为什么语言比其他语言更有可能具有某些特征:难以处理或生成的结构往往会随着时间的推移而丢失。与语言使用有关的认知的一个方面是工作记忆--短时记忆中用于临时存储和处理信息的部分。在本研究中,我们将考虑工作记忆与语言变异规则化之间的关系。正则化是一个有据可查的过程,随着时间的推移,语言(在某些维度上)的变异会越来越小。这一过程被认为是由语言使用者的个人行为所驱动的,但具体机制尚未达成一致。在此,我们利用人工语言学习实验来研究在语言学习或语言生产过程中工作记忆的限制是否会驱动正则化行为。我们发现,在语言生产过程中对工作记忆的限制会导致所有类型变异的丧失,但学习偏差能更好地解释随机变异变得更可预测的过程。一个计算模型利用一个简单的自激励机制为生产效应提供了一个潜在的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predictability and Variation in Language Are Differentially Affected by Learning and Production

Predictability and Variation in Language Are Differentially Affected by Learning and Production

General principles of human cognition can help to explain why languages are more likely to have certain characteristics than others: structures that are difficult to process or produce will tend to be lost over time. One aspect of cognition that is implicated in language use is working memory—the component of short-term memory used for temporary storage and manipulation of information. In this study, we consider the relationship between working memory and regularization of linguistic variation. Regularization is a well-documented process whereby languages become less variable (on some dimension) over time. This process has been argued to be driven by the behavior of individual language users, but the specific mechanism is not agreed upon. Here, we use an artificial language learning experiment to investigate whether limitations in working memory during either language learning or language production drive regularization behavior. We find that taxing working memory during production results in the loss of all types of variation, but the process by which random variation becomes more predictable is better explained by learning biases. A computational model offers a potential explanation for the production effect using a simple self-priming mechanism.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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