Cross-lingual transfer of knowledge in distributional language models: Experiments in Hungarian

IF 0.5 3区 文学 0 LANGUAGE & LINGUISTICS
Attila Novák, Borbála Novák
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引用次数: 0

Abstract

In this paper, we argue that the very convincing performance of recent deep-neural-model-based NLP applications has demonstrated that the distributionalist approach to language description has proven to be more successful than the earlier subtle rule-based models created by the generative school. The now ubiquitous neural models can naturally handle ambiguity and achieve human-like linguistic performance with most of their training consisting only of noisy raw linguistic data without any multimodal grounding or external supervision refuting Chomsky's argument that some generic neural architecture cannot arrive at the linguistic performance exhibited by humans given the limited input available to children. In addition, we demonstrate in experiments with Hungarian as the target language that the shared internal representations in multilingually trained versions of these models make them able to transfer specific linguistic skills, including structured annotation skills, from one language to another remarkably efficiently.
分布语言模型中知识的跨语言迁移:匈牙利语实验
在本文中,我们认为,最近基于深度神经模型的NLP应用程序的令人信服的性能表明,语言描述的分布主义方法已被证明比生成学派创建的早期微妙的基于规则的模型更成功。现在普遍存在的神经模型可以自然地处理歧义,并实现类似人类的语言表现,因为它们的大部分训练仅由有噪声的原始语言数据组成,而没有任何多模态基础或外部监督,驳斥了乔姆斯基的论点,即在有限的输入下,一些通用神经架构无法达到人类表现出的语言表现儿童可用。此外,我们在以匈牙利语为目标语言的实验中证明,这些模型的多语言训练版本中的共享内部表示使他们能够非常有效地将特定的语言技能,包括结构化注释技能,从一种语言转移到另一种语言。
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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来源期刊
Acta Linguistica Academica
Acta Linguistica Academica Arts and Humanities-Literature and Literary Theory
CiteScore
1.00
自引率
20.00%
发文量
20
期刊介绍: Acta Linguistica Academica publishes papers on general linguistics. Papers presenting empirical material must have strong theoretical implications. The scope of the journal is not restricted to the core areas of linguistics; it also covers areas such as socio- and psycholinguistics, neurolinguistics, discourse analysis, the philosophy of language, language typology, and formal semantics. The journal also publishes book and dissertation reviews and advertisements.
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