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On Multilingual Training of Neural Dependency Parsers

机译:关于神经依赖性解析器的多语言培训

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We show that a recently proposed neural dependency parser can be improved by joint training on multiple languages from the same family. The parser is implemented as a deep neural network whose only input is orthographic representations of words. In order to successfully parse, the network has to discover how linguistically relevant concepts can be inferred from word spellings. We analyze the representations of characters and words that are learned by the network to establish which properties of languages were accounted for. In particular we show that the parser has approximately learned to associate Latin characters with their Cyrillic counterparts and that it can group Polish and Russian words that have a similar grammatical function. Finally, we evaluate the parser on selected languages from the Universal Dependencies dataset and show that it is competitive with other recently proposed state-of-the art methods, while having a simple structure.
机译:我们表明,最近提出的神经依赖性解析器可以通过对来自同一家族的多种语言进行联合训练而得到改进。解析器被实现为深度神经网络,其唯一的输入是单词的正字表示。为了成功解析,网络必须发现如何从单词拼写中推断出与语言相关的概念。我们分析了网络学习到的字符和单词的表示形式,从而确定了语言的哪些属性。特别是,我们显示出该解析器已大致掌握了将拉丁字符与西里尔字母对应的功能,并且可以对具有相似语法功能的波兰语和俄语单词进行分组。最后,我们从“通用依赖”数据集中对所选语言的解析器进行了评估,并表明该解析器与其他最近提出的最新方法具有竞争优势,并且结构简单。

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