分布语义模型中多词术语关系的探讨

IF 0.9 4区 文学 0 LANGUAGE & LINGUISTICS Terminology Pub Date : 2023-06-27 DOI:10.1075/term.21053.wan
Yizhe Wang, B. Daille, Nabil Hathout
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引用次数: 0

摘要

术语是在特定领域中具有特殊意义的词汇单元。术语可以是简单的(ST)或多词的(MWT)。术语的组织提供了领域知识结构的表示,这是基于领域概念之间的关系。然而,MWT之间的关系在术语资源方面往往代表性不足。本工作旨在探索通过词汇替代和类比来捕捉多词术语之间的术语关系的分布语义模型。实验表明,基于类比的方法的结果总体上优于基于词汇替代的方法,并且类比非常适合同义词、反义词和下义词的习得,而词汇替代对上义词的效果最好。
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Exploring terminological relations between multi-word terms in distributional semantic models
A term is a lexical unit with specialized meaning in a particular domain. Terms may be simple (STs) or multi-word (MWTs). The organization of terms gives a representation of the structure of domain knowledge, which is based on the relationships between the concepts of the domain. However, relations between MWTs are often underrepresented in terminology resources. This work aims to explore distributional semantic models for capturing terminological relations between multi-word terms through lexical substitution and analogy. The experiments show that the results of the analogy-based method are globally better than those of the one based on lexical substitution and that analogy is well suited to the acquisition of synonymy, antonymy, and hyponymy while lexical substitution performs best for hypernymy.
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来源期刊
Terminology
Terminology Multiple-
CiteScore
1.60
自引率
0.00%
发文量
15
期刊介绍: Terminology is an independent journal with a cross-cultural and cross-disciplinary scope. It focusses on the discussion of (systematic) solutions not only of language problems encountered in translation, but also, for example, of (monolingual) problems of ambiguity, reference and developments in multidisciplinary communication. Particular attention will be given to new and developing subject areas such as knowledge representation and transfer, information technology tools, expert systems and terminological databases. Terminology encompasses terminology both in general (theory and practice) and in specialized fields (LSP), such as physics.
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