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Connecting Distant Entities with Induction through Conditional Random Fields for Named Entity Recognition: Precursor-Induced CRF

机译:通过条件随机字段将远程实体与归纳连接,以进行命名实体识别:前体诱导的CRF

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This paper presents a method of designing specific high-order dependency factor on the linear chain conditional random fields (CRFs) for named entity recognition (NER). Named entities tend to be separated from each other by multiple outside tokens in a text, and thus the first-order CRF, as well as the second-order CRF, may innately lose transition information between distant named entities. The proposed design uses outside label in NER as a transmission medium of precedent entity information on the CRF. Then, empirical results apparently demonstrate that it is possible to exploit long-distance label dependency in the original first-order linear chain CRF structure upon NER while reducing computational loss rather than in the second-order CRF.
机译:本文提出了一种在命名实体识别(NER)的线性链条件随机场(CRF)上设计特定的高阶依赖性因子的方法。命名实体倾向于被文本中的多个外部标记彼此分隔,因此一阶CRF和二阶CRF可能会固有地丢失远处命名实体之间的转换信息。拟议的设计使用NER中的外部标签作为CRF上先验实体信息的传输介质。然后,经验结果显然表明,可以在原始的一阶线性链CRF结构上基于NER利用长距离标签依赖性,同时减少计算损失,而不是在二阶CRF中。

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