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Neural Greedy Constituent Parsing with Dynamic Oracles

机译:使用动态Oracle进行神经贪婪成分分析

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Dynamic oracle training has shown substantial improvements for dependency parsing in various settings, but has not been explored for constituent parsing. The present article introduces a dynamic oracle for transition-based constituent parsing. Experiments on the 9 languages of the SPMRL dataset show that a neural greedy parser with morphological features, trained with a dynamic oracle, leads to accuracies comparable with the best non-reranking and non-ensemble parsers.
机译:动态oracle训练在各种设置中显示了对依赖项解析的显着改进,但尚未探索组成解析。本文介绍了一种用于基于过渡的成分分析的动态预言机。对SPMRL数据集的9种语言进行的实验表明,具有形态特征的神经贪婪解析器经过动态预言机的训练,可产生与最佳非排名和非整体解析器相当的准确性。

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