基于语素分块标注器的中文命名实体识别

G. Fu
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引用次数: 6

摘要

以往的研究大多将汉语命名实体识别形式化为一种分词任务,以汉字或词典词作为分词的基本标记。然而,在这种模式下,对NER的词汇信息进行挖掘是困难的。此外,传统的NER分块系统通常采用穷举策略生成候选实体,这明显导致实体解码过程中的效率损失。本文提出了一个基于语素的中文NER分块框架,并利用管道策略实现了一个高效的三阶段标注器。为了解决词汇外词的问题并更有效地探索NER的词汇线索,我们将命名实体与普通词区分,并选择语素作为实体分块的基本标记。为了减少候选实体的空间,提高实体解码的效率,我们在候选实体生成过程中采用了内部实体形成模式规则。我们在不同数据集上的实验表明,我们的系统可以在不降低性能的情况下大大提高NER效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Named Entity Recognition Using a Morpheme-Based Chunking Tagger
Most previous studies formalize Chinese named entity recognition (NER) as a chunking task with either characters or lexicon words as the basic tokens for chunking. However, it is difficult under this formulation to explore lexical information for NER. Furthermore, traditional NER chunking systems usually employ an exhaustive strategy for entity candidate generation, obviously resulting in efficiency loss during entity decoding. In this paper we propose a morpheme-based chunking framework for Chinese NER and implement an efficient three-stage tagger using the pipeline strategy. To tackle the problem of out-of-vocabulary words and to more effectively explore lexical cues for NER as well, we distinguish named entities from common words and choose morphemes as the basic tokens for entity chunking. To reduce the space of entity candidates and improve the efficiency of entity decoding, we employ internal entity formation pattern rules during entity candidate generation. Our experiments on different datasets show that our system can greatly improve NER efficiency without much degradation of performance.
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