A Robust Named-Entity Recognition System Using Syllable Bigram Embedding with Eojeol Prefix Information

Sunjae Kwon, Youngjoong Ko, Jungyun Seo
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引用次数: 4

Abstract

Korean named-entity recognition (NER) systems have been developed mainly on the morphological-level, and they are commonly based on a pipeline framework that identifies named-entities (NEs) following the morphological analysis. However, this framework can mean that the performance of NER systems is degraded, because errors from the morphological analysis propagate into NER systems. This paper proposes a novel syllable-level NER system, which does not require a morphological analysis and can achieve a similar or better performance compared with the morphological-level NER systems. In addition, because the proposed system does not require a morphological analysis step, its processing speed is about 1.9 times faster than those of the previous morphological-level NER systems.
一种基于音节重图嵌入词形前缀信息的鲁棒命名实体识别系统
韩国的命名实体识别(NER)系统主要是在形态学层面上开发的,它们通常基于一个管道框架,该框架根据形态学分析识别命名实体(NEs)。然而,这种框架可能意味着NER系统的性能下降,因为形态学分析的错误会传播到NER系统中。本文提出了一种新的音节级NER系统,该系统不需要进行形态学分析,并且可以达到与形态学级NER系统相似或更好的性能。此外,由于该系统不需要形态学分析步骤,因此其处理速度比以前的形态学级NER系统快1.9倍左右。
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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