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Multitask and Multilingual Modelling for Lexical Analysis

机译:词汇分析多任务和多语言建模

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In Natural Language Processing (NLP), one traditionally considers a single task (e.g.?part-of-speech tagging) for a single language (e.g.?English) at a time. However, recent work has shown that it can be beneficial to take advantage of relatedness between tasks, as well as between languages. In this work I examine the concept of relatedness and explore how it can be utilised to build NLP models that require less manually annotated data. A large selection of NLP tasks is investigated for a substantial language sample comprising 60 languages. The results show potential for joint multitask and multilingual modelling, and hints at linguistic insights which can be gained from such models.
机译:在自然语言处理(NLP)中,一个传统上考虑一次单个语言(例如)的单个任务(例如,例如语言)。 然而,最近的工作表明,利用任务之间的相关性以及语言之间的相关性有益。 在这项工作中,我研究了相关性的概念,并探索如何利用它来构建需要较少手动注释数据的NLP模型。 针对包括60种语言的大量语言样本来研究大量的NLP任务。 结果表明,联合多任务和多语言建模的潜力,以及在这些模型中可以获得语言见解的暗示。

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