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Universal Dependency Parsing from Scratch

机译:从零开始的通用依赖性解析

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摘要

This paper describes Stanford's system at the CoNLL 2018 UD Shared Task. We introduce a complete neural pipeline system that takes raw text as input, and performs all tasks required by the shared task, ranging from tokenization and sentence segmentation, to POS tagging and dependency parsing. Our single system submission achieved very competitive performance on big treebanks. Moreover, after fixing an unfortunate bug, our corrected system would have placed the 2nd, 1st, and 3rd on the official evaluation metrics LAS, MLAS, and BLEX, and would have outperformed all submission systems on low-resource treebank categories on all metrics by a large margin. We further show the effectiveness of different model components through extensive ablation studies.
机译:本文在CoNLL 2018 UD共享任务中介绍了斯坦福大学的系统。我们引入了一个完整的神经管道系统,该系统以原始文本为输入,并执行共享任务所需的所有任务,从标记化和语句分段到POS标记和依赖项解析。我们的单一系统提交在大型树库上取得了非常有竞争力的性能。此外,在修复了一个不幸的错误之后,我们更正后的系统会将LAS,MLAS和BLEX放在官方评估指标的第二,第一和第三位,并且在所有指标上都比所有资源低的树库类别的提交系统都要好很大的利润。我们通过广泛的消融研究进一步显示了不同模型组件的有效性。

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