About Time: Do Transformers Learn Temporal Verbal Aspect?

Eleni (Lena) Metheniti, Tim Van de Cruys, Nabil Hathout
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引用次数: 4

Abstract

Aspect is a linguistic concept that describes how an action, event, or state of a verb phrase is situated in time. In this paper, we explore whether different transformer models are capable of identifying aspectual features. We focus on two specific aspectual features: telicity and duration. Telicity marks whether the verb’s action or state has an endpoint or not (telic/atelic), and duration denotes whether a verb expresses an action (dynamic) or a state (stative). These features are integral to the interpretation of natural language, but also hard to annotate and identify with NLP methods. We perform experiments in English and French, and our results show that transformer models adequately capture information on telicity and duration in their vectors, even in their non-finetuned forms, but are somewhat biased with regard to verb tense and word order.
关于时间:变形金刚学习时态语言方面吗?
Aspect是一个语言概念,描述动作、事件或动词短语的状态在时间上的位置。在本文中,我们探讨了不同的变压器模型是否能够识别方面的特征。我们关注两个具体的方面特征:远性和持续时间。目的性表示动词的动作或状态是否有终点(telic/atelic),持续时间表示动词表达的是动作(动态)还是状态(静态)。这些特征对于自然语言的解释是不可或缺的,但也很难用NLP方法进行注释和识别。我们在英语和法语中进行了实验,我们的结果表明,变压器模型充分捕获了其向量中的远程性和持续时间信息,即使在其非微调形式中也是如此,但在动词时态和词序方面有些偏差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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