Infinite Mixture Chaining: An Efficiency-Based Framework for the Dynamic Construction of Word Meaning.

Q1 Social Sciences Open Mind Pub Date : 2025-01-04 eCollection Date: 2025-01-01 DOI:10.1162/opmi_a_00176
Lei Yu, Yang Xu
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Abstract

The lexicon is an evolving symbolic system that expresses an unbounded set of emerging meanings with a limited vocabulary. As a result, words often extend to new meanings. Decades of research have suggested that word meaning extension is non-arbitrary, and recent work formalizes this process as cognitive models of semantic chaining whereby emerging meanings link to existing ones that are semantically close. Existing approaches have typically focused on a dichotomous formulation of chaining, couched in the exemplar or prototype theories of categorization. However, these accounts yield either memory-intensive or simplistic representations of meaning, while evidence for them is mixed. We propose a unified probabilistic framework, infinite mixture chaining, that derives different forms of chaining through the lens of cognitive efficiency. This framework subsumes the existing chaining models as a trade-off between representational accuracy and memory complexity, and it contributes a flexible class of models that supports the dynamic construction of word meaning by automatically forming semantic clusters informed by existing and novel usages. We demonstrate the effectiveness of this framework in reconstructing the historical development of the lexicon across multiple word classes and in different languages, and we also show that it correlates with human judgment of semantic change. Our study offers an efficiency-based view on the cognitive mechanisms of word meaning extension in the evolution of the lexicon.

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无限混合链接:一种基于效率的词义动态构建框架。
词汇是一个不断发展的符号系统,它用有限的词汇表达无限的新出现的意义。因此,单词常常延伸到新的含义。几十年的研究表明,词义扩展是非任意的,最近的工作将这一过程形式化为语义链的认知模型,即新出现的意义与语义相近的现有意义联系起来。现有的方法通常侧重于链式的二分法,在分类的范例或原型理论中表达。然而,这些描述产生的要么是记忆密集型的,要么是简单的意义表征,而它们的证据是混合的。我们提出了一个统一的概率框架,无限混合链,从认知效率的角度推导出不同形式的链。该框架包含了现有的链模型,作为表征准确性和记忆复杂性之间的权衡,它提供了一类灵活的模型,通过自动形成根据现有和新用法通知的语义聚类来支持单词含义的动态构建。我们证明了该框架在跨多个词类和不同语言重建词典历史发展方面的有效性,并且我们还表明它与人类对语义变化的判断相关。本研究从效率的角度探讨了词汇演化过程中词义外延的认知机制。
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来源期刊
Open Mind
Open Mind Social Sciences-Linguistics and Language
CiteScore
3.20
自引率
0.00%
发文量
15
审稿时长
53 weeks
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