学习识别英语和匈牙利语轻动词结构

V. Vincze, T. IstvánNagy, János Zsibrita
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引用次数: 23

摘要

轻动词结构由动词性成分和名词性成分组成,其中名词保留了其原意,而动词(在某种程度上)失去了原意。它们在句法上是灵活的,其意义只能在其部分意义的基础上部分地计算出来,因此在自然语言处理中需要对它们进行特殊处理。为此,第一步是识别轻动词结构。在这项研究中,我们提出了一种基于条件随机场的工具,称为fxtagger,用于识别轻动词结构。该工具的灵活性在两种不同类型的语言上得到了展示,即英语和匈牙利语。由于早期的研究将不同的语言现象标记为轻动词结构,我们首先提出了基于语言学的轻动词结构分类,然后证明FXTagger能够识别两种语言中不同类别的轻动词结构。不同类型的语篇可能包含不同类型的轻动词结构;此外,轻动词结构的频率可能因领域而异。因此,我们关注在不同语料库上训练的模型的可移植性,并研究了简单的领域自适应技术来减少领域之间的差距的效果。我们的研究结果表明,尽管存在领域特异性,但域外数据也有助于在所有领域成功检测LVC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to detect english and hungarian light verb constructions
Light verb constructions consist of a verbal and a nominal component, where the noun preserves its original meaning while the verb has lost it (to some degree). They are syntactically flexible and their meaning can only be partially computed on the basis of the meaning of their parts, thus they require special treatment in natural language processing. For this purpose, the first step is to identify light verb constructions. In this study, we present our conditional random fields-based tool—called FXTagger—for identifying light verb constructions. The flexibility of the tool is demonstrated on two, typologically different, languages, namely, English and Hungarian. As earlier studies labeled different linguistic phenomena as light verb constructions, we first present a linguistics-based classification of light verb constructions and then show that FXTagger is able to identify different classes of light verb constructions in both languages. Different types of texts may contain different types of light verb constructions; moreover, the frequency of light verb constructions may differ from domain to domain. Hence we focus on the portability of models trained on different corpora, and we also investigate the effect of simple domain adaptation techniques to reduce the gap between the domains. Our results show that in spite of domain specificities, out-domain data can also contribute to the successful LVC detection in all domains.
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